This file is indexed.

/usr/lib/python3/dist-packages/patsy/categorical.py is in python3-patsy 0.4.1+git34-ga5b54c2-1.

This file is owned by root:root, with mode 0o644.

The actual contents of the file can be viewed below.

  1
  2
  3
  4
  5
  6
  7
  8
  9
 10
 11
 12
 13
 14
 15
 16
 17
 18
 19
 20
 21
 22
 23
 24
 25
 26
 27
 28
 29
 30
 31
 32
 33
 34
 35
 36
 37
 38
 39
 40
 41
 42
 43
 44
 45
 46
 47
 48
 49
 50
 51
 52
 53
 54
 55
 56
 57
 58
 59
 60
 61
 62
 63
 64
 65
 66
 67
 68
 69
 70
 71
 72
 73
 74
 75
 76
 77
 78
 79
 80
 81
 82
 83
 84
 85
 86
 87
 88
 89
 90
 91
 92
 93
 94
 95
 96
 97
 98
 99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
# This file is part of Patsy
# Copyright (C) 2011-2013 Nathaniel Smith <njs@pobox.com>
# See file LICENSE.txt for license information.

__all__ = ["C", "guess_categorical", "CategoricalSniffer",
           "categorical_to_int"]

# How we handle categorical data: the big picture
# -----------------------------------------------
#
# There is no Python/NumPy standard for how to represent categorical data.
# There is no Python/NumPy standard for how to represent missing data.
#
# Together, these facts mean that when we receive some data object, we must be
# able to heuristically infer what levels it has -- and this process must be
# sensitive to the current missing data handling, because maybe 'None' is a
# level and maybe it is missing data.
#
# We don't know how missing data is represented until we get into the actual
# builder code, so anything which runs before this -- e.g., the 'C()' builtin
# -- cannot actually do *anything* meaningful with the data.
#
# Therefore, C() simply takes some data and arguments, and boxes them all up
# together into an object called (appropriately enough) _CategoricalBox. All
# the actual work of handling the various different sorts of categorical data
# (lists, string arrays, bool arrays, pandas.Categorical, etc.) happens inside
# the builder code, and we just extend this so that it also accepts
# _CategoricalBox objects as yet another categorical type.
#
# Originally this file contained a container type (called 'Categorical'), and
# the various sniffing, conversion, etc., functions were written as methods on
# that type. But we had to get rid of that type, so now this file just
# provides a set of plain old functions which are used by patsy.build to
# handle the different stages of categorical data munging.

import numpy as np
import six
from patsy import PatsyError
from patsy.util import (SortAnythingKey,
                        safe_scalar_isnan,
                        iterable,
                        have_pandas, have_pandas_categorical,
                        have_pandas_categorical_dtype,
                        safe_is_pandas_categorical,
                        pandas_Categorical_from_codes,
                        pandas_Categorical_categories,
                        pandas_Categorical_codes,
                        safe_issubdtype,
                        no_pickling, assert_no_pickling)

if have_pandas:
    import pandas

# Objects of this type will always be treated as categorical, with the
# specified levels and contrast (if given).
class _CategoricalBox(object):
    def __init__(self, data, contrast, levels):
        self.data = data
        self.contrast = contrast
        self.levels = levels

    __getstate__ = no_pickling

def C(data, contrast=None, levels=None):
    """
    Marks some `data` as being categorical, and specifies how to interpret
    it.

    This is used for three reasons:

    * To explicitly mark some data as categorical. For instance, integer data
      is by default treated as numerical. If you have data that is stored
      using an integer type, but where you want patsy to treat each different
      value as a different level of a categorical factor, you can wrap it in a
      call to `C` to accomplish this. E.g., compare::

        dmatrix("a", {"a": [1, 2, 3]})
        dmatrix("C(a)", {"a": [1, 2, 3]})

    * To explicitly set the levels or override the default level ordering for
      categorical data, e.g.::

        dmatrix("C(a, levels=["a2", "a1"])", balanced(a=2))
    * To override the default coding scheme for categorical data. The
      `contrast` argument can be any of:

      * A :class:`ContrastMatrix` object
      * A simple 2d ndarray (which is treated the same as a ContrastMatrix
        object except that you can't specify column names)
      * An object with methods called `code_with_intercept` and
        `code_without_intercept`, like the built-in contrasts
        (:class:`Treatment`, :class:`Diff`, :class:`Poly`, etc.). See
        :ref:`categorical-coding` for more details.
      * A callable that returns one of the above.
    """
    if isinstance(data, _CategoricalBox):
        if contrast is None:
            contrast = data.contrast
        if levels is None:
            levels = data.levels
        data = data.data
    return _CategoricalBox(data, contrast, levels)

def test_C():
    c1 = C("asdf")
    assert isinstance(c1, _CategoricalBox)
    assert c1.data == "asdf"
    assert c1.levels is None
    assert c1.contrast is None
    c2 = C("DATA", "CONTRAST", "LEVELS")
    assert c2.data == "DATA"
    assert c2.contrast == "CONTRAST"
    assert c2.levels == "LEVELS"
    c3 = C(c2, levels="NEW LEVELS")
    assert c3.data == "DATA"
    assert c3.contrast == "CONTRAST"
    assert c3.levels == "NEW LEVELS"
    c4 = C(c2, "NEW CONTRAST")
    assert c4.data == "DATA"
    assert c4.contrast == "NEW CONTRAST"
    assert c4.levels == "LEVELS"

    assert_no_pickling(c4)

def guess_categorical(data):
    if safe_is_pandas_categorical(data):
        return True
    if isinstance(data, _CategoricalBox):
        return True
    data = np.asarray(data)
    if safe_issubdtype(data.dtype, np.number):
        return False
    return True

def test_guess_categorical():
    if have_pandas_categorical:
        c = pandas.Categorical([1, 2, 3])
        assert guess_categorical(c)
        if have_pandas_categorical_dtype:
            assert guess_categorical(pandas.Series(c))
    assert guess_categorical(C([1, 2, 3]))
    assert guess_categorical([True, False])
    assert guess_categorical(["a", "b"])
    assert guess_categorical(["a", "b", np.nan])
    assert guess_categorical(["a", "b", None])
    assert not guess_categorical([1, 2, 3])
    assert not guess_categorical([1, 2, 3, np.nan])
    assert not guess_categorical([1.0, 2.0, 3.0])
    assert not guess_categorical([1.0, 2.0, 3.0, np.nan])

def _categorical_shape_fix(data):
    # helper function
    # data should not be a _CategoricalBox or pandas Categorical or anything
    # -- it should be an actual iterable of data, but which might have the
    # wrong shape.
    if hasattr(data, "ndim") and data.ndim > 1:
        raise PatsyError("categorical data cannot be >1-dimensional")
    # coerce scalars into 1d, which is consistent with what we do for numeric
    # factors. (See statsmodels/statsmodels#1881)
    if (not iterable(data)
        or isinstance(data, (six.text_type, six.binary_type))):
        data = [data]
    return data

class CategoricalSniffer(object):
    def __init__(self, NA_action, origin=None):
        self._NA_action = NA_action
        self._origin = origin
        self._contrast = None
        self._levels = None
        self._level_set = set()

    def levels_contrast(self):
        if self._levels is None:
            levels = list(self._level_set)
            levels.sort(key=SortAnythingKey)
            self._levels = levels
        return tuple(self._levels), self._contrast

    def sniff(self, data):
        if hasattr(data, "contrast"):
            self._contrast = data.contrast
        # returns a bool: are we confident that we found all the levels?
        if isinstance(data, _CategoricalBox):
            if data.levels is not None:
                self._levels = tuple(data.levels)
                return True
            else:
                # unbox and fall through
                data = data.data
        if safe_is_pandas_categorical(data):
            # pandas.Categorical has its own NA detection, so don't try to
            # second-guess it.
            self._levels = tuple(pandas_Categorical_categories(data))
            return True
        # fastpath to avoid doing an item-by-item iteration over boolean
        # arrays, as requested by #44
        if hasattr(data, "dtype") and safe_issubdtype(data.dtype, np.bool_):
            self._level_set = set([True, False])
            return True

        data = _categorical_shape_fix(data)

        for value in data:
            if self._NA_action.is_categorical_NA(value):
                continue
            if value is True or value is False:
                self._level_set.update([True, False])
            else:
                try:
                    self._level_set.add(value)
                except TypeError:
                    raise PatsyError("Error interpreting categorical data: "
                                     "all items must be hashable",
                                     self._origin)
        # If everything we've seen is boolean, assume that everything else
        # would be too. Otherwise we need to keep looking.
        return self._level_set == set([True, False])

    __getstate__ = no_pickling

def test_CategoricalSniffer():
    from patsy.missing import NAAction
    def t(NA_types, datas, exp_finish_fast, exp_levels, exp_contrast=None):
        sniffer = CategoricalSniffer(NAAction(NA_types=NA_types))
        for data in datas:
            done = sniffer.sniff(data)
            if done:
                assert exp_finish_fast
                break
            else:
                assert not exp_finish_fast
        assert sniffer.levels_contrast() == (exp_levels, exp_contrast)
    
    if have_pandas_categorical:
        # We make sure to test with both boxed and unboxed pandas objects,
        # because we used to have a bug where boxed pandas objects would be
        # treated as categorical, but their levels would be lost...
        preps = [lambda x: x,
                 C]
        if have_pandas_categorical_dtype:
            preps += [pandas.Series,
                      lambda x: C(pandas.Series(x))]
        for prep in preps:
            t([], [prep(pandas.Categorical([1, 2, None]))],
              True, (1, 2))
            # check order preservation
            t([], [prep(pandas_Categorical_from_codes([1, 0], ["a", "b"]))],
              True, ("a", "b"))
            t([], [prep(pandas_Categorical_from_codes([1, 0], ["b", "a"]))],
              True, ("b", "a"))
            # check that if someone sticks a .contrast field onto our object
            obj = prep(pandas.Categorical(["a", "b"]))
            obj.contrast = "CONTRAST"
            t([], [obj], True, ("a", "b"), "CONTRAST")

    t([], [C([1, 2]), C([3, 2])], False, (1, 2, 3))
    # check order preservation
    t([], [C([1, 2], levels=[1, 2, 3]), C([4, 2])], True, (1, 2, 3))
    t([], [C([1, 2], levels=[3, 2, 1]), C([4, 2])], True, (3, 2, 1))

    # do some actual sniffing with NAs in
    t(["None", "NaN"], [C([1, np.nan]), C([10, None])],
      False, (1, 10))
    # But 'None' can be a type if we don't make it represent NA:
    sniffer = CategoricalSniffer(NAAction(NA_types=["NaN"]))
    sniffer.sniff(C([1, np.nan, None]))
    # The level order here is different on py2 and py3 :-( Because there's no
    # consistent way to sort mixed-type values on both py2 and py3. Honestly
    # people probably shouldn't use this, but I don't know how to give a
    # sensible error.
    levels, _ = sniffer.levels_contrast()
    assert set(levels) == set([None, 1])

    # bool special cases
    t(["None", "NaN"], [C([True, np.nan, None])],
      True, (False, True))
    t([], [C([10, 20]), C([False]), C([30, 40])],
      False, (False, True, 10, 20, 30, 40))
    # exercise the fast-path
    t([], [np.asarray([True, False]), ["foo"]],
      True, (False, True))

    # check tuples too
    t(["None", "NaN"], [C([("b", 2), None, ("a", 1), np.nan, ("c", None)])],
      False, (("a", 1), ("b", 2), ("c", None)))

    # contrasts
    t([], [C([10, 20], contrast="FOO")], False, (10, 20), "FOO")

    # no box
    t([], [[10, 30], [20]], False, (10, 20, 30))
    t([], [["b", "a"], ["a"]], False, ("a", "b"))

    # 0d
    t([], ["b"], False, ("b",))

    from nose.tools import assert_raises

    # unhashable level error:
    sniffer = CategoricalSniffer(NAAction())
    assert_raises(PatsyError, sniffer.sniff, [{}])

    # >1d is illegal
    assert_raises(PatsyError, sniffer.sniff, np.asarray([["b"]]))

# returns either a 1d ndarray or a pandas.Series
def categorical_to_int(data, levels, NA_action, origin=None):
    assert isinstance(levels, tuple)
    # In this function, missing values are always mapped to -1

    if safe_is_pandas_categorical(data):
        data_levels_tuple = tuple(pandas_Categorical_categories(data))
        if not data_levels_tuple == levels:
            raise PatsyError("mismatching levels: expected %r, got %r"
                             % (levels, data_levels_tuple), origin)
        # pandas.Categorical also uses -1 to indicate NA, and we don't try to
        # second-guess its NA detection, so we can just pass it back.
        return pandas_Categorical_codes(data)

    if isinstance(data, _CategoricalBox):
        if data.levels is not None and tuple(data.levels) != levels:
            raise PatsyError("mismatching levels: expected %r, got %r"
                             % (levels, tuple(data.levels)), origin)
        data = data.data

    data = _categorical_shape_fix(data)

    try:
        level_to_int = dict(zip(levels, range(len(levels))))
    except TypeError:
        raise PatsyError("Error interpreting categorical data: "
                         "all items must be hashable", origin)

    # fastpath to avoid doing an item-by-item iteration over boolean arrays,
    # as requested by #44
    if hasattr(data, "dtype") and safe_issubdtype(data.dtype, np.bool_):
        if level_to_int[False] == 0 and level_to_int[True] == 1:
            return data.astype(np.int_)
    out = np.empty(len(data), dtype=int)
    for i, value in enumerate(data):
        if NA_action.is_categorical_NA(value):
            out[i] = -1
        else:
            try:
                out[i] = level_to_int[value]
            except KeyError:
                SHOW_LEVELS = 4
                level_strs = []
                if len(levels) <= SHOW_LEVELS:
                    level_strs += [repr(level) for level in levels]
                else:
                    level_strs += [repr(level)
                                   for level in levels[:SHOW_LEVELS//2]]
                    level_strs.append("...")
                    level_strs += [repr(level)
                                   for level in levels[-SHOW_LEVELS//2:]]
                level_str = "[%s]" % (", ".join(level_strs))
                raise PatsyError("Error converting data to categorical: "
                                 "observation with value %r does not match "
                                 "any of the expected levels (expected: %s)"
                                 % (value, level_str), origin)
            except TypeError:
                raise PatsyError("Error converting data to categorical: "
                                 "encountered unhashable value %r"
                                 % (value,), origin)
    if have_pandas and isinstance(data, pandas.Series):
        out = pandas.Series(out, index=data.index)
    return out

def test_categorical_to_int():
    from nose.tools import assert_raises
    from patsy.missing import NAAction
    if have_pandas:
        s = pandas.Series(["a", "b", "c"], index=[10, 20, 30])
        c_pandas = categorical_to_int(s, ("a", "b", "c"), NAAction())
        assert np.all(c_pandas == [0, 1, 2])
        assert np.all(c_pandas.index == [10, 20, 30])
        # Input must be 1-dimensional
        assert_raises(PatsyError,
                      categorical_to_int,
                      pandas.DataFrame({10: s}), ("a", "b", "c"), NAAction())
    if have_pandas_categorical:
        constructors = [pandas_Categorical_from_codes]
        if have_pandas_categorical_dtype:
            def Series_from_codes(codes, categories):
                c = pandas_Categorical_from_codes(codes, categories)
                return pandas.Series(c)
            constructors.append(Series_from_codes)
        for con in constructors:
            cat = con([1, 0, -1], ("a", "b"))
            conv = categorical_to_int(cat, ("a", "b"), NAAction())
            assert np.all(conv == [1, 0, -1])
            # Trust pandas NA marking
            cat2 = con([1, 0, -1], ("a", "None"))
            conv2 = categorical_to_int(cat, ("a", "b"),
                                       NAAction(NA_types=["None"]))
            assert np.all(conv2 == [1, 0, -1])
            # But levels must match
            assert_raises(PatsyError,
                          categorical_to_int,
                          con([1, 0], ("a", "b")),
                          ("a", "c"),
                          NAAction())
            assert_raises(PatsyError,
                          categorical_to_int,
                          con([1, 0], ("a", "b")),
                          ("b", "a"),
                          NAAction())

    def t(data, levels, expected, NA_action=NAAction()):
        got = categorical_to_int(data, levels, NA_action)
        assert np.array_equal(got, expected)

    t(["a", "b", "a"], ("a", "b"), [0, 1, 0])
    t(np.asarray(["a", "b", "a"]), ("a", "b"), [0, 1, 0])
    t(np.asarray(["a", "b", "a"], dtype=object), ("a", "b"), [0, 1, 0])
    t([0, 1, 2], (1, 2, 0), [2, 0, 1])
    t(np.asarray([0, 1, 2]), (1, 2, 0), [2, 0, 1])
    t(np.asarray([0, 1, 2], dtype=float), (1, 2, 0), [2, 0, 1])
    t(np.asarray([0, 1, 2], dtype=object), (1, 2, 0), [2, 0, 1])
    t(["a", "b", "a"], ("a", "d", "z", "b"), [0, 3, 0])
    t([("a", 1), ("b", 0), ("a", 1)], (("a", 1), ("b", 0)), [0, 1, 0])

    assert_raises(PatsyError, categorical_to_int,
                  ["a", "b", "a"], ("a", "c"), NAAction())

    t(C(["a", "b", "a"]), ("a", "b"), [0, 1, 0])
    t(C(["a", "b", "a"]), ("b", "a"), [1, 0, 1])
    t(C(["a", "b", "a"], levels=["b", "a"]), ("b", "a"), [1, 0, 1])
    # Mismatch between C() levels and expected levels
    assert_raises(PatsyError, categorical_to_int,
                  C(["a", "b", "a"], levels=["a", "b"]),
                  ("b", "a"), NAAction())

    # ndim == 0 is okay
    t("a", ("a", "b"), [0])
    t("b", ("a", "b"), [1])
    t(True, (False, True), [1])

    # ndim == 2 is disallowed
    assert_raises(PatsyError, categorical_to_int,
                  np.asarray([["a", "b"], ["b", "a"]]),
                  ("a", "b"), NAAction())

    # levels must be hashable
    assert_raises(PatsyError, categorical_to_int,
                  ["a", "b"], ("a", "b", {}), NAAction())
    assert_raises(PatsyError, categorical_to_int,
                  ["a", "b", {}], ("a", "b"), NAAction())

    t(["b", None, np.nan, "a"], ("a", "b"), [1, -1, -1, 0],
      NAAction(NA_types=["None", "NaN"]))
    t(["b", None, np.nan, "a"], ("a", "b", None), [1, -1, -1, 0],
      NAAction(NA_types=["None", "NaN"]))
    t(["b", None, np.nan, "a"], ("a", "b", None), [1, 2, -1, 0],
      NAAction(NA_types=["NaN"]))

    # Smoke test for the branch that formats the ellipsized list of levels in
    # the error message:
    assert_raises(PatsyError, categorical_to_int,
                  ["a", "b", "q"],
                  ("a", "b", "c", "d", "e", "f", "g", "h"),
                  NAAction())