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1422 1423 1424 1425 1426 1427 1428 1429 1430 1431 1432 1433 1434 1435 1436 1437 1438 1439 1440 1441 1442 1443 1444 1445 1446 1447 1448 1449 1450 1451 1452 1453 1454 1455 1456 1457 1458 1459 1460 1461 1462 1463 1464 1465 1466 1467 1468 1469 1470 1471 1472 1473 1474 1475 1476 1477 1478 1479 1480 1481 1482 1483 1484 1485 1486 1487 1488 1489 1490 1491 1492 1493 1494 1495 1496 1497 1498 1499 | /** @file weight.h
* @brief Weighting scheme API.
*/
/* Copyright (C) 2004,2007,2008,2009,2010,2011,2012,2015,2016 Olly Betts
* Copyright (C) 2009 Lemur Consulting Ltd
* Copyright (C) 2013,2014 Aarsh Shah
* Copyright (C) 2016 Vivek Pal
*
* This program is free software; you can redistribute it and/or
* modify it under the terms of the GNU General Public License as
* published by the Free Software Foundation; either version 2 of the
* License, or (at your option) any later version.
*
* This program is distributed in the hope that it will be useful,
* but WITHOUT ANY WARRANTY; without even the implied warranty of
* MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
* GNU General Public License for more details.
*
* You should have received a copy of the GNU General Public License
* along with this program; if not, write to the Free Software
* Foundation, Inc., 51 Franklin St, Fifth Floor, Boston, MA 02110-1301 USA
*/
#ifndef XAPIAN_INCLUDED_WEIGHT_H
#define XAPIAN_INCLUDED_WEIGHT_H
#include <string>
#include <xapian/types.h>
#include <xapian/visibility.h>
namespace Xapian {
/** Abstract base class for weighting schemes. */
class XAPIAN_VISIBILITY_DEFAULT Weight {
protected:
/// Stats which the weighting scheme can use (see @a need_stat()).
typedef enum {
/// Number of documents in the collection.
COLLECTION_SIZE = 1,
/// Number of documents in the RSet.
RSET_SIZE = 2,
/// Average length of documents in the collection.
AVERAGE_LENGTH = 4,
/// How many documents the current term is in.
TERMFREQ = 8,
/// How many documents in the RSet the current term is in.
RELTERMFREQ = 16,
/// Sum of wqf for terms in the query.
QUERY_LENGTH = 32,
/// Within-query-frequency of the current term.
WQF = 64,
/// Within-document-frequency of the current term in the current document.
WDF = 128,
/// Length of the current document (sum wdf).
DOC_LENGTH = 256,
/// Lower bound on (non-zero) document lengths.
DOC_LENGTH_MIN = 512,
/// Upper bound on document lengths.
DOC_LENGTH_MAX = 1024,
/// Upper bound on wdf.
WDF_MAX = 2048,
/// Sum of wdf over the whole collection for the current term.
COLLECTION_FREQ = 4096,
/// Number of unique terms in the current document.
UNIQUE_TERMS = 8192
} stat_flags;
/** Tell Xapian that your subclass will want a particular statistic.
*
* Some of the statistics can be costly to fetch or calculate, so
* Xapian needs to know which are actually going to be used. You
* should call need_stat() from your constructor for each such
* statistic.
*
* @param flag The stat_flags value for a required statistic.
*/
void need_stat(stat_flags flag) {
stats_needed = stat_flags(stats_needed | flag);
}
/** Allow the subclass to perform any initialisation it needs to.
*
* @param factor Any scaling factor (e.g. from OP_SCALE_WEIGHT).
* If the Weight object is for the term-independent
* weight supplied by get_sumextra()/get_maxextra(),
* then init(0.0) is called (starting from Xapian
* 1.2.11 and 1.3.1 - earlier versions failed to
* call init() for such Weight objects).
*/
virtual void init(double factor) = 0;
private:
/// Don't allow assignment.
void operator=(const Weight &);
/// A bitmask of the statistics this weighting scheme needs.
stat_flags stats_needed;
/// The number of documents in the collection.
Xapian::doccount collection_size_;
/// The number of documents marked as relevant.
Xapian::doccount rset_size_;
/// The average length of a document in the collection.
Xapian::doclength average_length_;
/// The number of documents which this term indexes.
Xapian::doccount termfreq_;
// The collection frequency of the term.
Xapian::termcount collectionfreq_;
/// The number of relevant documents which this term indexes.
Xapian::doccount reltermfreq_;
/// The length of the query.
Xapian::termcount query_length_;
/// The within-query-frequency of this term.
Xapian::termcount wqf_;
/// A lower bound on the minimum length of any document in the database.
Xapian::termcount doclength_lower_bound_;
/// An upper bound on the maximum length of any document in the database.
Xapian::termcount doclength_upper_bound_;
/// An upper bound on the wdf of this term.
Xapian::termcount wdf_upper_bound_;
public:
/// Default constructor, needed by subclass constructors.
Weight() : stats_needed() { }
/** Type of smoothing to use with the Language Model Weighting scheme.
*
* Default is TWO_STAGE_SMOOTHING.
*/
typedef enum {
TWO_STAGE_SMOOTHING = 1,
DIRICHLET_SMOOTHING = 2,
ABSOLUTE_DISCOUNT_SMOOTHING = 3,
JELINEK_MERCER_SMOOTHING = 4,
DIRICHLET_PLUS_SMOOTHING = 5
} type_smoothing;
class Internal;
/** Virtual destructor, because we have virtual methods. */
virtual ~Weight();
/** Clone this object.
*
* This method allocates and returns a copy of the object it is called on.
*
* If your subclass is called FooWeight and has parameters a and b, then
* you would implement FooWeight::clone() like so:
*
* FooWeight * FooWeight::clone() const { return new FooWeight(a, b); }
*
* Note that the returned object will be deallocated by Xapian after use
* with "delete". If you want to handle the deletion in a special way
* (for example when wrapping the Xapian API for use from another
* language) then you can define a static <code>operator delete</code>
* method in your subclass as shown here:
* https://trac.xapian.org/ticket/554#comment:1
*/
virtual Weight * clone() const = 0;
/** Return the name of this weighting scheme.
*
* This name is used by the remote backend. It is passed along with the
* serialised parameters to the remote server so that it knows which class
* to create.
*
* Return the full namespace-qualified name of your class here - if
* your class is called FooWeight, return "FooWeight" from this method
* (Xapian::BM25Weight returns "Xapian::BM25Weight" here).
*
* If you don't want to support the remote backend, you can use the
* default implementation which simply returns an empty string.
*/
virtual std::string name() const;
/** Return this object's parameters serialised as a single string.
*
* If you don't want to support the remote backend, you can use the
* default implementation which simply throws Xapian::UnimplementedError.
*/
virtual std::string serialise() const;
/** Unserialise parameters.
*
* This method unserialises parameters serialised by the @a serialise()
* method and allocates and returns a new object initialised with them.
*
* If you don't want to support the remote backend, you can use the
* default implementation which simply throws Xapian::UnimplementedError.
*
* Note that the returned object will be deallocated by Xapian after use
* with "delete". If you want to handle the deletion in a special way
* (for example when wrapping the Xapian API for use from another
* language) then you can define a static <code>operator delete</code>
* method in your subclass as shown here:
* https://trac.xapian.org/ticket/554#comment:1
*
* @param serialised A string containing the serialised parameters.
*/
virtual Weight * unserialise(const std::string & serialised) const;
/** Calculate the weight contribution for this object's term to a document.
*
* The parameters give information about the document which may be used
* in the calculations:
*
* @param wdf The within document frequency of the term in the document.
* @param doclen The document's length (unnormalised).
* @param uniqterms Number of unique terms in the document (used
* for absolute smoothing).
*/
virtual double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterms) const = 0;
/** Return an upper bound on what get_sumpart() can return for any document.
*
* This information is used by the matcher to perform various
* optimisations, so strive to make the bound as tight as possible.
*/
virtual double get_maxpart() const = 0;
/** Calculate the term-independent weight component for a document.
*
* The parameter gives information about the document which may be used
* in the calculations:
*
* @param doclen The document's length (unnormalised).
* @param uniqterms The number of unique terms in the document.
*/
virtual double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const = 0;
/** Return an upper bound on what get_sumextra() can return for any
* document.
*
* This information is used by the matcher to perform various
* optimisations, so strive to make the bound as tight as possible.
*/
virtual double get_maxextra() const = 0;
/** @private @internal Initialise this object to calculate weights for term
* @a term.
*
* @param stats Source of statistics.
* @param query_len_ Query length.
* @param term The term for the new object.
* @param wqf_ The within-query-frequency of @a term.
* @param factor Any scaling factor (e.g. from OP_SCALE_WEIGHT).
*/
void init_(const Internal & stats, Xapian::termcount query_len_,
const std::string & term, Xapian::termcount wqf_,
double factor);
/** @private @internal Initialise this object to calculate weights for a
* synonym.
*
* @param stats Source of statistics.
* @param query_len_ Query length.
* @param factor Any scaling factor (e.g. from OP_SCALE_WEIGHT).
* @param termfreq The termfreq to use.
* @param reltermfreq The reltermfreq to use.
* @param collection_freq The collection frequency to use.
*/
void init_(const Internal & stats, Xapian::termcount query_len_,
double factor, Xapian::doccount termfreq,
Xapian::doccount reltermfreq, Xapian::termcount collection_freq);
/** @private @internal Initialise this object to calculate the extra weight
* component.
*
* @param stats Source of statistics.
* @param query_len_ Query length.
*/
void init_(const Internal & stats, Xapian::termcount query_len_);
/** @private @internal Return true if the document length is needed.
*
* If this method returns true, then the document length will be fetched
* and passed to @a get_sumpart(). Otherwise 0 may be passed for the
* document length.
*/
bool get_sumpart_needs_doclength_() const {
return stats_needed & DOC_LENGTH;
}
/** @private @internal Return true if the WDF is needed.
*
* If this method returns true, then the WDF will be fetched and passed to
* @a get_sumpart(). Otherwise 0 may be passed for the wdf.
*/
bool get_sumpart_needs_wdf_() const {
return stats_needed & WDF;
}
/** @private @internal Return true if the number of unique terms is needed.
*
* If this method returns true, then the number of unique terms will be
* fetched and passed to @a get_sumpart(). Otherwise 0 may be passed for
* the number of unique terms.
*/
bool get_sumpart_needs_uniqueterms_() const {
return stats_needed & UNIQUE_TERMS;
}
protected:
/** Don't allow copying.
*
* This would ideally be private, but that causes a compilation error
* with GCC 4.1 (which appears to be a bug).
*/
Weight(const Weight &);
/// The number of documents in the collection.
Xapian::doccount get_collection_size() const { return collection_size_; }
/// The number of documents marked as relevant.
Xapian::doccount get_rset_size() const { return rset_size_; }
/// The average length of a document in the collection.
Xapian::doclength get_average_length() const { return average_length_; }
/// The number of documents which this term indexes.
Xapian::doccount get_termfreq() const { return termfreq_; }
/// The number of relevant documents which this term indexes.
Xapian::doccount get_reltermfreq() const { return reltermfreq_; }
/// The collection frequency of the term.
Xapian::termcount get_collection_freq() const { return collectionfreq_; }
/// The length of the query.
Xapian::termcount get_query_length() const { return query_length_; }
/// The within-query-frequency of this term.
Xapian::termcount get_wqf() const { return wqf_; }
/** An upper bound on the maximum length of any document in the database.
*
* This should only be used by get_maxpart() and get_maxextra().
*/
Xapian::termcount get_doclength_upper_bound() const {
return doclength_upper_bound_;
}
/** A lower bound on the minimum length of any document in the database.
*
* This bound does not include any zero-length documents.
*
* This should only be used by get_maxpart() and get_maxextra().
*/
Xapian::termcount get_doclength_lower_bound() const {
return doclength_lower_bound_;
}
/** An upper bound on the wdf of this term.
*
* This should only be used by get_maxpart() and get_maxextra().
*/
Xapian::termcount get_wdf_upper_bound() const {
return wdf_upper_bound_;
}
};
/** Class implementing a "boolean" weighting scheme.
*
* This weighting scheme gives all documents zero weight.
*/
class XAPIAN_VISIBILITY_DEFAULT BoolWeight : public Weight {
BoolWeight * clone() const;
void init(double factor);
public:
/** Construct a BoolWeight. */
BoolWeight() { }
std::string name() const;
std::string serialise() const;
BoolWeight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/// Xapian::Weight subclass implementing the tf-idf weighting scheme.
class XAPIAN_VISIBILITY_DEFAULT TfIdfWeight : public Weight {
/* Three character string indicating the normalizations for tf(wdf), idf and
tfidf weight. */
std::string normalizations;
/// The factor to multiply with the weight.
double factor;
TfIdfWeight * clone() const;
void init(double factor);
/* When additional normalizations are implemented in the future, the additional statistics for them
should be accessed by these functions. */
double get_wdfn(Xapian::termcount wdf, char c) const;
double get_idfn(Xapian::doccount termfreq, char c) const;
double get_wtn(double wt, char c) const;
public:
/** Construct a TfIdfWeight
*
* @param normalizations A three character string indicating the
* normalizations to be used for the tf(wdf), idf
* and document weight. (default: "ntn")
*
* The @a normalizations string works like so:
*
* @li The first character specifies the normalization for the wdf. The
* following normalizations are currently supported:
*
* @li 'n': None. wdfn=wdf
* @li 'b': Boolean wdfn=1 if term in document else wdfn=0
* @li 's': Square wdfn=wdf*wdf
* @li 'l': Logarithmic wdfn=1+log<sub>e</sub>(wdf)
* @li 'L': Log average wdfn=(1+log(wdf))/(1+log(doclen/unique_terms))
*
* The Max-wdf and Augmented Max wdf normalizations haven't yet been
* implemented.
*
* @li The second character indicates the normalization for the idf. The
* following normalizations are currently supported:
*
* @li 'n': None idfn=1
* @li 't': TfIdf idfn=log(N/Termfreq) where N is the number of
* documents in collection and Termfreq is the number of documents
* which are indexed by the term t.
* @li 'p': Prob idfn=log((N-Termfreq)/Termfreq)
* @li 'f': Freq idfn=1/Termfreq
* @li 's': Squared idfn=log(N/Termfreq)^2
*
* @li The third and the final character indicates the normalization for
* the document weight. The following normalizations are currently
* supported:
*
* @li 'n': None wtn=tfn*idfn
*
* Implementing support for more normalizations of each type would require
* extending the backend to track more statistics.
*/
explicit TfIdfWeight(const std::string &normalizations);
/** Construct a TfIdfWeight using the default normalizations ("ntn"). */
TfIdfWeight()
: normalizations("ntn")
{
need_stat(TERMFREQ);
need_stat(WDF);
need_stat(WDF_MAX);
need_stat(COLLECTION_SIZE);
}
std::string name() const;
std::string serialise() const;
TfIdfWeight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterm) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/// Xapian::Weight subclass implementing the BM25 probabilistic formula.
class XAPIAN_VISIBILITY_DEFAULT BM25Weight : public Weight {
/// Factor to multiply the document length by.
mutable Xapian::doclength len_factor;
/// Factor combining all the document independent factors.
mutable double termweight;
/// The BM25 parameters.
double param_k1, param_k2, param_k3, param_b;
/// The minimum normalised document length value.
Xapian::doclength param_min_normlen;
BM25Weight * clone() const;
void init(double factor);
public:
/** Construct a BM25Weight.
*
* @param k1 A non-negative parameter controlling how influential
* within-document-frequency (wdf) is. k1=0 means that
* wdf doesn't affect the weights. The larger k1 is, the more
* wdf influences the weights. (default 1)
*
* @param k2 A non-negative parameter which controls the strength of a
* correction factor which depends upon query length and
* normalised document length. k2=0 disable this factor; larger
* k2 makes it stronger. (default 0)
*
* @param k3 A non-negative parameter controlling how influential
* within-query-frequency (wqf) is. k3=0 means that wqf
* doesn't affect the weights. The larger k3 is, the more
* wqf influences the weights. (default 1)
*
* @param b A parameter between 0 and 1, controlling how strong the
* document length normalisation of wdf is. 0 means no
* normalisation; 1 means full normalisation. (default 0.5)
*
* @param min_normlen A parameter specifying a minimum value for
* normalised document length. Normalised document length
* values less than this will be clamped to this value, helping
* to prevent very short documents getting large weights.
* (default 0.5)
*/
BM25Weight(double k1, double k2, double k3, double b, double min_normlen)
: param_k1(k1), param_k2(k2), param_k3(k3), param_b(b),
param_min_normlen(min_normlen)
{
if (param_k1 < 0) param_k1 = 0;
if (param_k2 < 0) param_k2 = 0;
if (param_k3 < 0) param_k3 = 0;
if (param_b < 0) {
param_b = 0;
} else if (param_b > 1) {
param_b = 1;
}
need_stat(COLLECTION_SIZE);
need_stat(RSET_SIZE);
need_stat(TERMFREQ);
need_stat(RELTERMFREQ);
need_stat(WDF);
need_stat(WDF_MAX);
if (param_k2 != 0 || (param_k1 != 0 && param_b != 0)) {
need_stat(DOC_LENGTH_MIN);
need_stat(AVERAGE_LENGTH);
}
if (param_k1 != 0 && param_b != 0) need_stat(DOC_LENGTH);
if (param_k2 != 0) need_stat(QUERY_LENGTH);
if (param_k3 != 0) need_stat(WQF);
}
BM25Weight()
: param_k1(1), param_k2(0), param_k3(1), param_b(0.5),
param_min_normlen(0.5)
{
need_stat(COLLECTION_SIZE);
need_stat(RSET_SIZE);
need_stat(TERMFREQ);
need_stat(RELTERMFREQ);
need_stat(WDF);
need_stat(WDF_MAX);
need_stat(DOC_LENGTH_MIN);
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(WQF);
}
std::string name() const;
std::string serialise() const;
BM25Weight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterm) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/// Xapian::Weight subclass implementing the BM25+ probabilistic formula.
class XAPIAN_VISIBILITY_DEFAULT BM25PlusWeight : public Weight {
/// Factor to multiply the document length by.
mutable Xapian::doclength len_factor;
/// Factor combining all the document independent factors.
mutable double termweight;
/// The BM25+ parameters.
double param_k1, param_k2, param_k3, param_b;
/// The minimum normalised document length value.
Xapian::doclength param_min_normlen;
/// Additional parameter delta in the BM25+ formula.
double param_delta;
BM25PlusWeight * clone() const;
void init(double factor);
public:
/** Construct a BM25PlusWeight.
*
* @param k1 A non-negative parameter controlling how influential
* within-document-frequency (wdf) is. k1=0 means that
* wdf doesn't affect the weights. The larger k1 is, the more
* wdf influences the weights. (default 1)
*
* @param k2 A non-negative parameter which controls the strength of a
* correction factor which depends upon query length and
* normalised document length. k2=0 disable this factor; larger
* k2 makes it stronger. The paper which describes BM25+
* ignores BM25's document-independent component (so implicitly
* k2=0), but we support non-zero k2 too. (default 0)
*
* @param k3 A non-negative parameter controlling how influential
* within-query-frequency (wqf) is. k3=0 means that wqf
* doesn't affect the weights. The larger k3 is, the more
* wqf influences the weights. (default 1)
*
* @param b A parameter between 0 and 1, controlling how strong the
* document length normalisation of wdf is. 0 means no
* normalisation; 1 means full normalisation. (default 0.5)
*
* @param min_normlen A parameter specifying a minimum value for
* normalised document length. Normalised document length
* values less than this will be clamped to this value, helping
* to prevent very short documents getting large weights.
* (default 0.5)
*
* @param delta A parameter for pseudo tf value to control the scale
* of the tf lower bound. Delta(δ) can be tuned for example
* from 0.0 to 1.5 but BM25+ can still work effectively
* across collections with a fixed δ = 1.0. (default 1.0)
*/
BM25PlusWeight(double k1, double k2, double k3, double b,
double min_normlen, double delta)
: param_k1(k1), param_k2(k2), param_k3(k3), param_b(b),
param_min_normlen(min_normlen), param_delta(delta)
{
if (param_k1 < 0) param_k1 = 0;
if (param_k2 < 0) param_k2 = 0;
if (param_k3 < 0) param_k3 = 0;
if (param_delta < 0) param_delta = 0;
if (param_b < 0) {
param_b = 0;
} else if (param_b > 1) {
param_b = 1;
}
need_stat(COLLECTION_SIZE);
need_stat(RSET_SIZE);
need_stat(TERMFREQ);
need_stat(RELTERMFREQ);
need_stat(WDF);
need_stat(WDF_MAX);
if (param_k2 != 0 || (param_k1 != 0 && param_b != 0)) {
need_stat(DOC_LENGTH_MIN);
need_stat(AVERAGE_LENGTH);
}
if (param_k1 != 0 && param_b != 0) need_stat(DOC_LENGTH);
if (param_k2 != 0) need_stat(QUERY_LENGTH);
if (param_k3 != 0) need_stat(WQF);
if (param_delta != 0) {
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(WQF);
}
}
BM25PlusWeight()
: param_k1(1), param_k2(0), param_k3(1), param_b(0.5),
param_min_normlen(0.5), param_delta(1)
{
need_stat(COLLECTION_SIZE);
need_stat(RSET_SIZE);
need_stat(TERMFREQ);
need_stat(RELTERMFREQ);
need_stat(WDF);
need_stat(WDF_MAX);
need_stat(DOC_LENGTH_MIN);
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(WQF);
}
std::string name() const;
std::string serialise() const;
BM25PlusWeight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterm) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/** Xapian::Weight subclass implementing the traditional probabilistic formula.
*
* This class implements the "traditional" Probabilistic Weighting scheme, as
* described by the early papers on Probabilistic Retrieval. BM25 generally
* gives better results.
*
* TradWeight(k) is equivalent to BM25Weight(k, 0, 0, 1, 0), except that
* the latter returns weights (k+1) times larger.
*/
class XAPIAN_VISIBILITY_DEFAULT TradWeight : public Weight {
/// Factor to multiply the document length by.
mutable Xapian::doclength len_factor;
/// Factor combining all the document independent factors.
mutable double termweight;
/// The parameter in the formula.
double param_k;
TradWeight * clone() const;
void init(double factor);
public:
/** Construct a TradWeight.
*
* @param k A non-negative parameter controlling how influential
* within-document-frequency (wdf) and document length are.
* k=0 means that wdf and document length don't affect the
* weights. The larger k is, the more they do. (default 1)
*/
explicit TradWeight(double k = 1.0) : param_k(k) {
if (param_k < 0) param_k = 0;
if (param_k != 0.0) {
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
}
need_stat(COLLECTION_SIZE);
need_stat(RSET_SIZE);
need_stat(TERMFREQ);
need_stat(RELTERMFREQ);
need_stat(DOC_LENGTH_MIN);
need_stat(WDF);
need_stat(WDF_MAX);
}
std::string name() const;
std::string serialise() const;
TradWeight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqueterms) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/** This class implements the InL2 weighting scheme.
*
* InL2 is a representative scheme of the Divergence from Randomness Framework
* by Gianni Amati.
*
* This weighting scheme is useful for tasks that require early precision.
*
* It uses the Inverse document frequency model (In), the Laplace method to
* find the aftereffect of sampling (L) and the second wdf normalization
* proposed by Amati to normalize the wdf in the document to the length of the
* document (H2).
*
* For more information about the DFR Framework and the InL2 scheme, please
* refer to: Gianni Amati and Cornelis Joost Van Rijsbergen Probabilistic
* models of information retrieval based on measuring the divergence from
* randomness ACM Transactions on Information Systems (TOIS) 20, (4), 2002,
* pp. 357-389.
*/
class XAPIAN_VISIBILITY_DEFAULT InL2Weight : public Weight {
/// The wdf normalization parameter in the formula.
double param_c;
/// The upper bound on the weight a term can give to a document.
double upper_bound;
/// The constant values which are used on every call to get_sumpart().
double wqf_product_idf;
double c_product_avlen;
InL2Weight * clone() const;
void init(double factor);
public:
/** Construct an InL2Weight.
*
* @param c A non-negative and non zero parameter controlling the extent
* of the normalization of the wdf to the document length. The
* default value of 1 is suitable for longer queries but it may
* need to be changed for shorter queries. For more information,
* please refer to Gianni Amati's PHD thesis.
*/
explicit InL2Weight(double c);
InL2Weight()
: param_c(1.0)
{
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(DOC_LENGTH_MIN);
need_stat(DOC_LENGTH_MAX);
need_stat(COLLECTION_SIZE);
need_stat(WDF);
need_stat(WDF_MAX);
need_stat(WQF);
need_stat(TERMFREQ);
}
std::string name() const;
std::string serialise() const;
InL2Weight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/** This class implements the IfB2 weighting scheme.
*
* IfB2 is a representative scheme of the Divergence from Randomness Framework
* by Gianni Amati.
*
* It uses the Inverse term frequency model (If), the Bernoulli method to find
* the aftereffect of sampling (B) and the second wdf normalization proposed
* by Amati to normalize the wdf in the document to the length of the document
* (H2).
*
* For more information about the DFR Framework and the IfB2 scheme, please
* refer to: Gianni Amati and Cornelis Joost Van Rijsbergen Probabilistic
* models of information retrieval based on measuring the divergence from
* randomness ACM Transactions on Information Systems (TOIS) 20, (4), 2002,
* pp. 357-389.
*/
class XAPIAN_VISIBILITY_DEFAULT IfB2Weight : public Weight {
/// The wdf normalization parameter in the formula.
double param_c;
/// The upper bound on the weight.
double upper_bound;
/// The constant values which are used for calculations in get_sumpart().
double wqf_product_idf;
double c_product_avlen;
double B_constant;
IfB2Weight * clone() const;
void init(double factor);
public:
/** Construct an IfB2Weight.
*
* @param c A non-negative and non zero parameter controlling the extent
* of the normalization of the wdf to the document length. The
* default value of 1 is suitable for longer queries but it may
* need to be changed for shorter queries. For more information,
* please refer to Gianni Amati's PHD thesis titled
* Probabilistic Models for Information Retrieval based on
* Divergence from Randomness.
*/
explicit IfB2Weight(double c);
IfB2Weight() : param_c(1.0) {
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(DOC_LENGTH_MIN);
need_stat(DOC_LENGTH_MAX);
need_stat(COLLECTION_SIZE);
need_stat(COLLECTION_FREQ);
need_stat(WDF);
need_stat(WDF_MAX);
need_stat(WQF);
need_stat(TERMFREQ);
}
std::string name() const;
std::string serialise() const;
IfB2Weight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterm) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/** This class implements the IneB2 weighting scheme.
*
* IneB2 is a representative scheme of the Divergence from Randomness
* Framework by Gianni Amati.
*
* It uses the Inverse expected document frequency model (Ine), the Bernoulli
* method to find the aftereffect of sampling (B) and the second wdf
* normalization proposed by Amati to normalize the wdf in the document to the
* length of the document (H2).
*
* For more information about the DFR Framework and the IneB2 scheme, please
* refer to: Gianni Amati and Cornelis Joost Van Rijsbergen Probabilistic
* models of information retrieval based on measuring the divergence from
* randomness ACM Transactions on Information Systems (TOIS) 20, (4), 2002,
* pp. 357-389.
*/
class XAPIAN_VISIBILITY_DEFAULT IneB2Weight : public Weight {
/// The wdf normalization parameter in the formula.
double param_c;
/// The upper bound of the weight.
double upper_bound;
/// Constant values used in get_sumpart().
double wqf_product_idf;
double c_product_avlen;
double B_constant;
IneB2Weight * clone() const;
void init(double factor);
public:
/** Construct an IneB2Weight.
*
* @param c A non-negative and non zero parameter controlling the extent
* of the normalization of the wdf to the document length. The
* default value of 1 is suitable for longer queries but it may
* need to be changed for shorter queries. For more information,
* please refer to Gianni Amati's PHD thesis.
*/
explicit IneB2Weight(double c);
IneB2Weight() : param_c(1.0) {
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(DOC_LENGTH_MIN);
need_stat(DOC_LENGTH_MAX);
need_stat(COLLECTION_SIZE);
need_stat(WDF);
need_stat(WDF_MAX);
need_stat(WQF);
need_stat(COLLECTION_FREQ);
need_stat(TERMFREQ);
}
std::string name() const;
std::string serialise() const;
IneB2Weight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/** This class implements the BB2 weighting scheme.
*
* BB2 is a representative scheme of the Divergence from Randomness Framework
* by Gianni Amati.
*
* It uses the Bose-Einstein probabilistic distribution (B) along with
* Stirling's power approximation, the Bernoulli method to find the
* aftereffect of sampling (B) and the second wdf normalization proposed by
* Amati to normalize the wdf in the document to the length of the document
* (H2).
*
* For more information about the DFR Framework and the BB2 scheme, please
* refer to : Gianni Amati and Cornelis Joost Van Rijsbergen Probabilistic
* models of information retrieval based on measuring the divergence from
* randomness ACM Transactions on Information Systems (TOIS) 20, (4), 2002,
* pp. 357-389.
*/
class XAPIAN_VISIBILITY_DEFAULT BB2Weight : public Weight {
/// The wdf normalization parameter in the formula.
double param_c;
/// The upper bound on the weight.
double upper_bound;
/// The constant values to be used in get_sumpart().
double c_product_avlen;
double B_constant;
double wt;
double stirling_constant_1;
double stirling_constant_2;
BB2Weight * clone() const;
void init(double factor);
public:
/** Construct a BB2Weight.
*
* @param c A non-negative and non zero parameter controlling the extent
* of the normalization of the wdf to the document length. A
* default value of 1 is suitable for longer queries but it may
* need to be changed for shorter queries. For more information,
* please refer to Gianni Amati's PHD thesis titled
* Probabilistic Models for Information Retrieval based on
* Divergence from Randomness.
*/
explicit BB2Weight(double c);
BB2Weight() : param_c(1.0) {
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(DOC_LENGTH_MIN);
need_stat(DOC_LENGTH_MAX);
need_stat(COLLECTION_SIZE);
need_stat(COLLECTION_FREQ);
need_stat(WDF);
need_stat(WDF_MAX);
need_stat(WQF);
need_stat(TERMFREQ);
}
std::string name() const;
std::string serialise() const;
BB2Weight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/** This class implements the DLH weighting scheme, which is a representative
* scheme of the Divergence from Randomness Framework by Gianni Amati.
*
* This is a parameter free weighting scheme and it should be used with query
* expansion to obtain better results. It uses the HyperGeometric Probabilistic
* model and Laplace's normalization to calculate the risk gain.
*
* For more information about the DFR Framework and the DLH scheme, please
* refer to :
* a.) Gianni Amati and Cornelis Joost Van Rijsbergen Probabilistic
* models of information retrieval based on measuring the divergence from
* randomness ACM Transactions on Information Systems (TOIS) 20, (4), 2002, pp.
* 357-389.
* b.) FUB, IASI-CNR and University of Tor Vergata at TREC 2007 Blog Track.
* G. Amati and E. Ambrosi and M. Bianchi and C. Gaibisso and G. Gambosi.
* Proceedings of the 16th Text REtrieval Conference (TREC-2007), 2008.
*/
class XAPIAN_VISIBILITY_DEFAULT DLHWeight : public Weight {
/// Now unused but left in place in 1.4.x for ABI compatibility.
double lower_bound;
/// The upper bound on the weight.
double upper_bound;
/// The constant value to be used in get_sumpart().
double log_constant;
double wqf_product_factor;
DLHWeight * clone() const;
void init(double factor);
public:
DLHWeight() {
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(COLLECTION_SIZE);
need_stat(COLLECTION_FREQ);
need_stat(WDF);
need_stat(WQF);
need_stat(WDF_MAX);
need_stat(DOC_LENGTH_MIN);
need_stat(DOC_LENGTH_MAX);
}
std::string name() const;
std::string serialise() const;
DLHWeight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/** This class implements the PL2 weighting scheme.
*
* PL2 is a representative scheme of the Divergence from Randomness Framework
* by Gianni Amati.
*
* This weighting scheme is useful for tasks that require early precision.
*
* It uses the Poisson approximation of the Binomial Probabilistic distribution
* (P) along with Stirling's approximation for the factorial value, the Laplace
* method to find the aftereffect of sampling (L) and the second wdf
* normalization proposed by Amati to normalize the wdf in the document to the
* length of the document (H2).
*
* For more information about the DFR Framework and the PL2 scheme, please
* refer to : Gianni Amati and Cornelis Joost Van Rijsbergen Probabilistic models
* of information retrieval based on measuring the divergence from randomness
* ACM Transactions on Information Systems (TOIS) 20, (4), 2002, pp. 357-389.
*/
class XAPIAN_VISIBILITY_DEFAULT PL2Weight : public Weight {
/// The wdf normalization parameter in the formula.
double param_c;
/** The factor to multiply weights by.
*
* The misleading name is due to this having been used to store a lower
* bound in 1.4.0. We no longer need to store that, and so this member
* has been repurposed in 1.4.1 and later (but the name left the same to
* ensure ABI compatibility with 1.4.0).
*/
double lower_bound;
/// The upper bound on the weight.
double upper_bound;
/// Constants for a given term in a given query.
double P1, P2;
/// Set by init() to (param_c * get_average_length())
double cl;
PL2Weight * clone() const;
void init(double factor);
public:
/** Construct a PL2Weight.
*
* @param c A non-negative and non zero parameter controlling the extent
* of the normalization of the wdf to the document length. The
* default value of 1 is suitable for longer queries but it may
* need to be changed for shorter queries. For more information,
* please refer to Gianni Amati's PHD thesis titled
* Probabilistic Models for Information Retrieval based on
* Divergence from Randomness.
*/
explicit PL2Weight(double c);
PL2Weight() : param_c(1.0) {
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(DOC_LENGTH_MIN);
need_stat(DOC_LENGTH_MAX);
need_stat(COLLECTION_SIZE);
need_stat(COLLECTION_FREQ);
need_stat(WDF);
need_stat(WDF_MAX);
need_stat(WQF);
}
std::string name() const;
std::string serialise() const;
PL2Weight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/// Xapian::Weight subclass implementing the PL2+ probabilistic formula.
class XAPIAN_VISIBILITY_DEFAULT PL2PlusWeight : public Weight {
/// The factor to multiply weights by.
double factor;
/// The wdf normalization parameter in the formula.
double param_c;
/// Additional parameter delta in the PL2+ weighting formula.
double param_delta;
/// The upper bound on the weight.
double upper_bound;
/// Constants for a given term in a given query.
double P1, P2;
/// Set by init() to (param_c * get_average_length())
double cl;
/// Set by init() to get_collection_freq()) / get_collection_size()
double mean;
/// Weight contribution of delta term in the PL2+ function
double dw;
PL2PlusWeight * clone() const;
void init(double factor_);
public:
/** Construct a PL2PlusWeight.
*
* @param c A non-negative and non zero parameter controlling the extent
* of the normalization of the wdf to the document length. The
* default value of 1 is suitable for longer queries but it may
* need to be changed for shorter queries. For more information,
* please refer to Gianni Amati's PHD thesis titled
* Probabilistic Models for Information Retrieval based on
* Divergence from Randomness.
*
* @param delta A parameter for pseudo tf value to control the scale
* of the tf lower bound. Delta(δ) should be a positive
* real number. It can be tuned for example from 0.1 to 1.5
* in increments of 0.1 or so. Experiments have shown that
* PL2+ works effectively across collections with a fixed δ = 0.8
* (default 0.8)
*/
PL2PlusWeight(double c, double delta);
PL2PlusWeight()
: param_c(1.0), param_delta(0.8) {
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(DOC_LENGTH_MIN);
need_stat(DOC_LENGTH_MAX);
need_stat(COLLECTION_SIZE);
need_stat(COLLECTION_FREQ);
need_stat(WDF);
need_stat(WDF_MAX);
need_stat(WQF);
}
std::string name() const;
std::string serialise() const;
PL2PlusWeight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/** This class implements the DPH weighting scheme.
*
* DPH is a representative scheme of the Divergence from Randomness Framework
* by Gianni Amati.
*
* This is a parameter free weighting scheme and it should be used with query
* expansion to obtain better results. It uses the HyperGeometric Probabilistic
* model and Popper's normalization to calculate the risk gain.
*
* For more information about the DFR Framework and the DPH scheme, please
* refer to :
* a.) Gianni Amati and Cornelis Joost Van Rijsbergen
* Probabilistic models of information retrieval based on measuring the
* divergence from randomness ACM Transactions on Information Systems (TOIS) 20,
* (4), 2002, pp. 357-389.
* b.) FUB, IASI-CNR and University of Tor Vergata at TREC 2007 Blog Track.
* G. Amati and E. Ambrosi and M. Bianchi and C. Gaibisso and G. Gambosi.
* Proceedings of the 16th Text Retrieval Conference (TREC-2007), 2008.
*/
class XAPIAN_VISIBILITY_DEFAULT DPHWeight : public Weight {
/// The upper bound on the weight.
double upper_bound;
/// Now unused but left in place in 1.4.x for ABI compatibility.
double lower_bound;
/// The constant value used in get_sumpart() .
double log_constant;
double wqf_product_factor;
DPHWeight * clone() const;
void init(double factor);
public:
/** Construct a DPHWeight. */
DPHWeight() {
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(COLLECTION_SIZE);
need_stat(COLLECTION_FREQ);
need_stat(WDF);
need_stat(WQF);
need_stat(WDF_MAX);
need_stat(DOC_LENGTH_MIN);
need_stat(DOC_LENGTH_MAX);
}
std::string name() const;
std::string serialise() const;
DPHWeight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen,
Xapian::termcount uniqterms) const;
double get_maxextra() const;
};
/** Xapian::Weight subclass implementing the Language Model formula.
*
* This class implements the "Language Model" Weighting scheme, as
* described by the early papers on LM by Bruce Croft.
*
* LM works by comparing the query to a Language Model of the document.
* The language model itself is parameter-free, though LMWeight takes
* parameters which specify the smoothing used.
*/
class XAPIAN_VISIBILITY_DEFAULT LMWeight : public Weight {
/** The type of smoothing to use. */
type_smoothing select_smoothing;
// Parameters for handling negative value of log, and for smoothing.
double param_log, param_smoothing1, param_smoothing2;
/** The factor to multiply weights by.
*
* The misleading name is due to this having been used to store some
* other value in 1.4.0. However, that value only takes one
* multiplication and one division to calculate, so for 1.4.x we can just
* recalculate it each time we need it, and so this member has been
* repurposed in 1.4.1 and later (but the name left the same to ensure ABI
* compatibility with 1.4.0).
*/
double weight_collection;
LMWeight * clone() const;
void init(double factor);
public:
/** Construct a LMWeight.
*
* @param param_log_ A non-negative parameter controlling how much
* to clamp negative values returned by the log.
* The log is calculated by multiplying the
* actual weight by param_log. If param_log is
* 0.0, then the document length upper bound will
* be used (default: document length upper bound)
*
* @param select_smoothing_ A parameter of type enum
* type_smoothing. This parameter
* controls which smoothing type to use.
* (default: TWO_STAGE_SMOOTHING)
*
* @param param_smoothing1_ A non-negative parameter for smoothing
* whose meaning depends on
* select_smoothing_. In
* JELINEK_MERCER_SMOOTHING, it plays the
* role of estimation and in
* DIRICHLET_SMOOTHING the role of query
* modelling. (default JELINEK_MERCER,
* ABSOLUTE, TWOSTAGE(0.7),
* DIRCHLET(2000))
*
* @param param_smoothing2_ A non-negative parameter which is used
* with TWO_STAGE_SMOOTHING as parameter for Dirichlet's
* smoothing (default: 2000) and as parameter delta to
* control the scale of the tf lower bound in the
* DIRICHLET_PLUS_SMOOTHING (default 0.05).
*
*/
// Unigram LM Constructor to specifically mention all parameters for handling negative log value and smoothing.
explicit LMWeight(double param_log_ = 0.0,
type_smoothing select_smoothing_ = TWO_STAGE_SMOOTHING,
double param_smoothing1_ = -1.0,
double param_smoothing2_ = -1.0)
: select_smoothing(select_smoothing_), param_log(param_log_), param_smoothing1(param_smoothing1_),
param_smoothing2(param_smoothing2_)
{
if (param_smoothing1 < 0) param_smoothing1 = 0.7;
if (param_smoothing2 < 0) {
if (select_smoothing == TWO_STAGE_SMOOTHING)
param_smoothing2 = 2000.0;
else
param_smoothing2 = 0.05;
}
need_stat(AVERAGE_LENGTH);
need_stat(DOC_LENGTH);
need_stat(COLLECTION_SIZE);
need_stat(RSET_SIZE);
need_stat(TERMFREQ);
need_stat(RELTERMFREQ);
need_stat(DOC_LENGTH_MAX);
need_stat(WDF);
need_stat(WDF_MAX);
need_stat(COLLECTION_FREQ);
if (select_smoothing == ABSOLUTE_DISCOUNT_SMOOTHING)
need_stat(UNIQUE_TERMS);
if (select_smoothing == DIRICHLET_PLUS_SMOOTHING)
need_stat(DOC_LENGTH_MIN);
}
std::string name() const;
std::string serialise() const;
LMWeight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterm) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount doclen, Xapian::termcount) const;
double get_maxextra() const;
};
/** Xapian::Weight subclass implementing Coordinate Matching.
*
* Each matching term score one point. See Managing Gigabytes, Second Edition
* p181.
*/
class XAPIAN_VISIBILITY_DEFAULT CoordWeight : public Weight {
/// The factor to multiply weights by.
double factor;
public:
CoordWeight * clone() const;
void init(double factor_);
/** Construct a CoordWeight. */
CoordWeight() { }
std::string name() const;
std::string serialise() const;
CoordWeight * unserialise(const std::string & serialised) const;
double get_sumpart(Xapian::termcount wdf,
Xapian::termcount doclen,
Xapian::termcount uniqterm) const;
double get_maxpart() const;
double get_sumextra(Xapian::termcount, Xapian::termcount) const;
double get_maxextra() const;
};
}
#endif // XAPIAN_INCLUDED_WEIGHT_H
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