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53 changes: 53 additions & 0 deletions benchmarks/bench_adjusted_mutual_info_score.py
Original file line number Diff line number Diff line change
@@ -0,0 +1,53 @@
from collections import defaultdict
from itertools import product
from time import time

import numpy as np
import pandas as pd
import matplotlib.pyplot as plt

from sklearn.metrics import adjusted_mutual_info_score

repeat = 10
n_samples = [1_000, 10_000, 100_000, 1_000_000]
n_labels = [10, 100, 1_000]

rng = np.random.default_rng(0)

result = defaultdict(list)
for ns, nl in product(n_samples, n_labels):
local_result = []
for i in range(repeat):
print(f"Repetition {i+1} for n_samples={ns} and n_labels={nl}")
x = rng.integers(low=0, high=nl, size=ns)
y = rng.integers(low=0, high=nl, size=ns)

start = time()
adjusted_mutual_info_score(x, y)
end = time()
local_result.append(end - start)

result["n_samples"].append(ns)
result["n_labels"].append(nl)
result["mean_time"].append(np.mean(local_result))

result = pd.DataFrame(result)
plt.figure("Adjusted Mutual Info Score Benchmarks against number of Labels")
for n_sample in n_samples:
samples = result[result["n_samples"] == n_sample]
plt.plot(
samples["n_labels"], samples["mean_time"], label=f"{str(n_sample)} samples"
)
plt.xlabel("n_labels")
plt.ylabel("Time (s)")
plt.legend()

plt.figure("Adjusted Mutual Info Score Benchmarks against number of Samples")
for n_label in n_labels:
labels = result[result["n_labels"] == n_label]
plt.plot(labels["n_samples"], labels["mean_time"], label=f"{str(n_label)} labels")
plt.xlabel("n_samples")
plt.ylabel("Time (s)")
plt.legend()

plt.show()
3 changes: 2 additions & 1 deletion sklearn/metrics/cluster/_expected_mutual_info_fast.pyx
Original file line number Diff line number Diff line change
Expand Up @@ -50,7 +50,8 @@ def expected_mutual_information(contingency, int n_samples):
gln_N = gammaln(N + 1)
gln_nij = gammaln(nijs + 1)
# start and end values for nij terms for each summation.
start = np.array([[v - N + w for w in b] for v in a], dtype='int')
start = np.array(np.meshgrid(a, b), dtype='int').T
start = np.array([start[i].sum(axis=1) - N for i in range(len(start))])
start = np.maximum(start, 1)
end = np.minimum(np.resize(a, (C, R)).T, np.resize(b, (R, C))) + 1
# emi itself is a summation over the various values.
Expand Down