VertiBench is a benchmark for federated learning, split learning, and assisted learning on vertical partitioned data. It provides tools to synthetic vertical partitioned data from a given global dataset. VertiBench supports partition under various imbalance and correlation level, effectively simulating a wide-range of real-world vertical federated learning scenarios.
VertiBench has already been published on PyPI. The installation requires the installation of python>=3.9
. To further install VertiBench, run the following command:
pip install vertibench
This examples includes the pipeline of split and evaluate. First, load your datasets or generate synthetic datasets.
from sklearn.datasets import make_classification
# Generate a large dataset
X, y = make_classification(n_samples=10000, n_features=10)
To split the dataset by importance,
from vertibench.Splitter import ImportanceSplitter
imp_splitter = ImportanceSplitter(num_parties=4, weights=[1, 1, 1, 3])
Xs = imp_splitter.split(X)
To split the dataset by correlation,
from vertibench.Splitter import CorrelationSplitter
corr_splitter = CorrelationSplitter(num_parties=4)
Xs = corr_splitter.fit_split(X)
To evaluate a feature split Xs
in terms of party importance,
from vertibench.Evaluator import ImportanceEvaluator
from sklearn.linear_model import LogisticRegression
import numpy as np
model = LogisticRegression()
X = np.concatenate(Xs, axis=1)
model.fit(X, y)
imp_evaluator = ImportanceEvaluator()
imp_scores = imp_evaluator.evaluate(Xs, model.predict)
alpha = imp_evaluator.evaluate_alpha(scores=imp_scores)
print(f"Importance scores: {imp_scores}, alpha: {alpha}")
To evaluate a feature split in terms of correlation,
from vertibench.Evaluator import CorrelationEvaluator
corr_evaluator = CorrelationEvaluator()
corr_scores = corr_evaluator.fit_evaluate(Xs)
beta = corr_evaluator.evaluate_beta()
print(f"Correlation scores: {corr_scores}, beta: {beta}")