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metrics.py
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import math
from collections.abc import Iterable
import numpy as np
import sacrebleu
import sklearn.metrics
import random
def mean(arr):
return sum(arr) / len(arr)
def pop_stddev(arr):
mu = mean(arr)
return math.sqrt(sum([(x - mu) ** 2 for x in arr]) / len(arr))
def sample_stddev(arr):
mu = mean(arr)
return math.sqrt(sum([(x - mu) ** 2 for x in arr]) / (len(arr) - 1))
def mean_stderr(arr):
return sample_stddev(arr) / math.sqrt(len(arr))
def median(arr):
return arr[len(arr) // 2]
def matthews_corrcoef(items):
unzipped_list = list(zip(*items))
golds = unzipped_list[0]
preds = unzipped_list[1]
return sklearn.metrics.matthews_corrcoef(golds, preds)
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)
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
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
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)
def perplexity(items):
return math.exp(-mean(items))
def weighted_mean(items):
a, b = zip(*items)
return sum(a) / sum(b)
def weighted_perplexity(items):
return math.exp(-weighted_mean(items))
def bits_per_byte(items):
return -weighted_mean(items) / math.log(2)
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
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
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
class _bootstrap_internal:
def __init__(self, f, n):
self.f = f
self.n = n
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
def bootstrap_stderr(f, xs, iters):
import multiprocessing as mp
pool = mp.Pool(mp.cpu_count())
# this gives a biased estimate of the stderr (i.e w/ the mean, it gives something
# equivalent to stderr calculated without Bessel's correction in the stddev.
# 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
res = []
chunk_size = min(1000, iters)
from tqdm import tqdm
print("bootstrapping for stddev:", f.__name__)
for bootstrap in tqdm(
pool.imap(
_bootstrap_internal(f, chunk_size),
[(i, xs) for i in range(iters // chunk_size)],
),
total=iters // chunk_size,
):
# sample w replacement
res.extend(bootstrap)
pool.close()
return sample_stddev(res)
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)
def yesno(x):
if x:
return "yes"
else:
return "no"