metrics.py 9.96 KB
Newer Older
&'s avatar
& committed
1
import math
2
3
4
5
6
from collections.abc import Iterable

import numpy as np
import sacrebleu
import sklearn.metrics
Leo Gao's avatar
Leo Gao committed
7
import random
&'s avatar
& committed
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
from lm_eval.api.registry import register_metric, register_aggregation


# Register Aggregations First
@register_aggregation("mean")
def mean(arr):
    return sum(arr) / len(arr)


@register_aggregation("median")
def median(arr):
    return arr[len(arr) // 2]


@register_aggregation("perplexity")
def perplexity(items):
    return math.exp(-mean(items))


@register_aggregation("weighted_perplexity")
def weighted_perplexity(items):
    return math.exp(-weighted_mean(items))


@register_aggregation("bits_per_byte")
def bits_per_byte(items):
    return -weighted_mean(items) / math.log(2)


@register_metric(
    metric="acc",
    higher_is_better=True,
    output_type=["loglikelihood", "multiple_choice"],
    aggregation="mean",
)
def acc_fn(items):  # This is a passthrough function
    return items


48
49
50
51
52
53
54
55
56
57
@register_metric(
    metric="acc_norm",
    higher_is_better=True,
    output_type=["loglikelihood", "multiple_choice"],
    aggregation="mean",
)
def acc_norm_fn(items):  # This is a passthrough function
    return items


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
@register_metric(
    metric="acc_mutual_info",
    higher_is_better=True,
    output_type="multiple_choice",
    aggregation="mean",
)
def acc_mutual_info_fn(items):  # This is a passthrough function
    return items


@register_metric(
    metric="perplexity",
    higher_is_better=False,
    output_type="loglikelihood",
    aggregation="perplexity",
)
def perplexity_fn(items):  # This is a passthrough function
    return items


@register_metric(
    metric="word_perplexity",
    higher_is_better=False,
    output_type="loglikelihood_rolling",
    aggregation="weighted_perplexity",
)
def word_perplexity_fn(items):  # This is a passthrough function
    return items


@register_metric(
    metric="byte_perplexity",
    higher_is_better=False,
    output_type="loglikelihood_rolling",
    aggregation="weighted_perplexity",
)
def byte_perplexity_fn(items):  # This is a passthrough function
    return items


@register_metric(
    metric="bits_per_byte",
    higher_is_better=False,
    output_type="loglikelihood_rolling",
    aggregation="bits_per_byte",
)
def bits_per_byte_fn(items):  # This is a passthrough function
    return items

&'s avatar
& committed
107

Leo Gao's avatar
Leo Gao committed
108
def pop_stddev(arr):
109
    mu = mean(arr)
Leo Gao's avatar
Leo Gao committed
110
111
112
    return math.sqrt(sum([(x - mu) ** 2 for x in arr]) / len(arr))


Leo Gao's avatar
Leo Gao committed
113
def sample_stddev(arr):
114
    mu = mean(arr)
Leo Gao's avatar
Leo Gao committed
115
116
117
    return math.sqrt(sum([(x - mu) ** 2 for x in arr]) / (len(arr) - 1))


Leo Gao's avatar
Leo Gao committed
118
def mean_stderr(arr):
Leo Gao's avatar
Leo Gao committed
119
    return sample_stddev(arr) / math.sqrt(len(arr))
Leo Gao's avatar
Leo Gao committed
120
121


122
123
124
125
126
127
128
129
130
@register_metric(metric="matthews_corrcoef", higher_is_better=True, aggregation="mean")
def matthews_corrcoef(items):
    unzipped_list = list(zip(*items))
    golds = unzipped_list[0]
    preds = unzipped_list[1]
    return sklearn.metrics.matthews_corrcoef(golds, preds)


@register_metric(
131
    metric="f1",
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
    higher_is_better=True,
    output_type="multiple_choice",
    aggregation="mean",
)
def f1_score(items):
    unzipped_list = list(zip(*items))
    golds = unzipped_list[0]
    preds = unzipped_list[1]
    fscore = sklearn.metrics.f1_score(golds, preds)

    return np.max(fscore)


@register_metric(
    metric="acc_all",
    higher_is_better=True,
    output_type="loglikelihood",
    aggregation="mean",
)
def acc_all(items):
    # Only count as correct if all answers are labeled correctly for each question
    question_scoring_dict = {}
    preds = list(zip(*items))[0]
    docs = list(zip(*items))[1]

    for doc, pred in zip(docs, preds):
        paragraph_id = doc["idx"]["paragraph"]
        question_id = doc["idx"]["question"]
        if (paragraph_id, question_id) not in question_scoring_dict:
            question_scoring_dict[(paragraph_id, question_id)] = []

        gold_label = doc["label"] == 1

        question_scoring_dict[(paragraph_id, question_id)].append(gold_label == pred)
    acc = np.mean([int(all(x)) for x in question_scoring_dict.values()])
    return acc


Leo Gao's avatar
Leo Gao committed
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
def acc_all_stderr(items):
    # Only count as correct if all answers are labeled correctly for each question
    question_scoring_dict = {}
    preds = list(zip(*items))[0]
    docs = list(zip(*items))[1]

    for doc, pred in zip(docs, preds):
        question_id = doc["idx"]["question"]
        if question_id not in question_scoring_dict:
            question_scoring_dict[question_id] = []

        gold_label = doc["label"] == 1
        question_scoring_dict[question_id].append(gold_label == pred)

    acc = mean_stderr([int(all(x)) for x in question_scoring_dict.values()])
    return acc

&'s avatar
& committed
187
188
189
190
191
192
193
194
195
196

def metric_max_over_ground_truths(metric_fn, prediction, ground_truths):
    """Compute max metric between prediction and each ground truth."""
    scores_for_ground_truths = []
    for ground_truth in ground_truths:
        score = metric_fn(prediction, ground_truth)
        scores_for_ground_truths.append(score)
    return max(scores_for_ground_truths)


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
def weighted_mean(items):
    a, b = zip(*items)
    return sum(a) / sum(b)


@register_metric(metric="bleu", higher_is_better=True, aggregation="mean")
def bleu(items):
    """The Bilingual Evaluation Understudy Score, or BLEU for short, is a metric
    for evaluating a generated sentence to a reference sentence. It counts matching
    n-grams in the candidate translation to n-grams in the reference text, where
    1-gram or unigram would be each token and a bigram comparison would be each
    word pair. The comparison is made regardless of word order
    Source: https://machinelearningmastery.com/calculate-bleu-score-for-text-python/
    Paper: https://www.aclweb.org/anthology/P02-1040/

    Higher is better
    """
    refs = list(zip(*items))[0]
    preds = list(zip(*items))[1]
    refs, preds = _sacreformat(refs, preds)
    return sacrebleu.corpus_bleu(preds, refs).score


@register_metric(metric="chrf", higher_is_better=True, aggregation="mean")
def chrf(items):
    """chrF++ is a tool for automatic evaluation of machine translation output
    based on character n-gram precision and recall enhanced with word n-grams.
    Source: https://github.com/m-popovic/chrF
    Paper: https://www.aclweb.org/anthology/W15-3049.pdf

    Higher is better  # TODO I think
    """
    refs = list(zip(*items))[0]
    preds = list(zip(*items))[1]
    refs, preds = _sacreformat(refs, preds)
    return sacrebleu.corpus_chrf(preds, refs).score


@register_metric(metric="ter", higher_is_better=True, aggregation="mean")
def ter(items):
    """Translation Error Rate is an error metric for machine translation that
    measures the number of edits required to change a system output into one
    of the references
    Source: http://www.cs.umd.edu/~snover/tercom/
    Paper: http://mt-archive.info/AMTA-2006-Snover.pdf

    Lower is better
    """
    refs = list(zip(*items))[0]
    preds = list(zip(*items))[1]
    refs, preds = _sacreformat(refs, preds)
    return sacrebleu.corpus_ter(preds, refs).score


def is_non_str_iterable(obj):
    return isinstance(obj, Iterable) and not isinstance(obj, str)


def _sacreformat(refs, preds):
    """Format refs and preds for sacrebleu corpus calculation. It is very particular"""
    # Sacrebleu expects (List[str], List[List[str])
    #   e.g. sacrebleu.corpus_bleu([pred_t], [[ref1_stream], [ref2_stream], ...])

    # Note [ref1_stream] is the first reference for each pred.
    # So lists are size N and (M, N) for N preds and M possible refs for each pred
    # This is a different order of dimensions that I would expect

    # We expect refs to be List[str] or List[List[str]], the outer list corresponding to preds
    # Must become List[List[str]] with the inner list corresponding to preds
    if not is_non_str_iterable(refs):
        refs = list(refs)
    if not is_non_str_iterable(refs[0]):
        refs = [[ref] for ref in refs]
    refs = list(zip(*refs))
    # Note the number of refs in each ref list much match the number of preds

    # We expect preds to be List[str] or List[List[str]]. Must become List[str]
    if not is_non_str_iterable(preds):
        preds = list(preds)
    if is_non_str_iterable(preds[0]):
        assert len(preds[0]) == 1, f"Pred must be a str, was {preds[0]}"
        preds = [pred[0] for pred in preds]

    return refs, preds


# stderr stuff


Leo Gao's avatar
Leo Gao committed
286
287
288
289
class _bootstrap_internal:
    def __init__(self, f, n):
        self.f = f
        self.n = n
290

Leo Gao's avatar
Leo Gao committed
291
292
293
294
295
296
297
298
299
    def __call__(self, v):
        i, xs = v
        rnd = random.Random()
        rnd.seed(i)
        res = []
        for _ in range(self.n):
            res.append(self.f(rnd.choices(xs, k=len(xs))))
        return res

Leo Gao's avatar
Leo Gao committed
300

301
def bootstrap_stderr(f, xs, iters):
Leo Gao's avatar
Leo Gao committed
302
    import multiprocessing as mp
Fabrizio Milo's avatar
Fabrizio Milo committed
303

Leo Gao's avatar
Leo Gao committed
304
    pool = mp.Pool(mp.cpu_count())
Leo Gao's avatar
Leo Gao committed
305
    # this gives a biased estimate of the stderr (i.e w/ the mean, it gives something
Fabrizio Milo's avatar
Fabrizio Milo committed
306
    # equivalent to stderr calculated without Bessel's correction in the stddev.
Leo Gao's avatar
Leo Gao committed
307
308
309
310
    # Unfortunately, I haven't been able to figure out what the right correction is
    # to make the bootstrap unbiased - i considered multiplying by sqrt(n/(n-1)) but
    # that would be ad-hoc and I can't prove that that would actually be an unbiased estimator)
    # Thankfully, shouldn't matter because our samples are pretty big usually anyways
Leo Gao's avatar
Leo Gao committed
311
    res = []
312
    chunk_size = min(1000, iters)
Leo Gao's avatar
Leo Gao committed
313
    from tqdm import tqdm
Fabrizio Milo's avatar
Fabrizio Milo committed
314

Leo Gao's avatar
Leo Gao committed
315
    print("bootstrapping for stddev:", f.__name__)
Fabrizio Milo's avatar
Fabrizio Milo committed
316
317
    for bootstrap in tqdm(
        pool.imap(
318
            _bootstrap_internal(f, chunk_size),
Fabrizio Milo's avatar
Fabrizio Milo committed
319
320
321
322
            [(i, xs) for i in range(iters // chunk_size)],
        ),
        total=iters // chunk_size,
    ):
Leo Gao's avatar
Leo Gao committed
323
        # sample w replacement
Leo Gao's avatar
Leo Gao committed
324
        res.extend(bootstrap)
Leo Gao's avatar
Leo Gao committed
325

Leo Gao's avatar
Leo Gao committed
326
    pool.close()
Leo Gao's avatar
Leo Gao committed
327
    return sample_stddev(res)
Leo Gao's avatar
Leo Gao committed
328
329


330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
def stderr_for_metric(metric, bootstrap_iters):
    bootstrappable = [
        median,
        matthews_corrcoef,
        f1_score,
        perplexity,
        bleu,
        chrf,
        ter,
    ]

    if metric in bootstrappable:
        return lambda x: bootstrap_stderr(metric, x, iters=bootstrap_iters)

    stderr = {mean: mean_stderr, acc_all: acc_all_stderr}

    return stderr.get(metric, None)


Jonathan Tow's avatar
Jonathan Tow committed
349
350
def yesno(x):
    if x:
Fabrizio Milo's avatar
Fabrizio Milo committed
351
        return "yes"
Jonathan Tow's avatar
Jonathan Tow committed
352
    else:
Fabrizio Milo's avatar
Fabrizio Milo committed
353
        return "no"