Login / Signup

Generative and reproducible benchmarks for comprehensive evaluation of machine learning classifiers.

Patryk R OrzechowskiJason H Moore
Published in: Science advances (2022)
Understanding the strengths and weaknesses of machine learning (ML) algorithms is crucial to determine their scope of application. Here, we introduce the Diverse and Generative ML Benchmark (DIGEN), a collection of synthetic datasets for comprehensive, reproducible, and interpretable benchmarking of ML algorithms for classification of binary outcomes. The DIGEN resource consists of 40 mathematical functions that map continuous features to binary targets for creating synthetic datasets. These 40 functions were found using a heuristic algorithm designed to maximize the diversity of performance among multiple popular ML algorithms, thus providing a useful test suite for evaluating and comparing new methods. Access to the generative functions facilitates understanding of why a method performs poorly compared to other algorithms, thus providing ideas for improvement.
Keyphrases
  • machine learning
  • artificial intelligence
  • deep learning
  • big data
  • rna seq
  • metabolic syndrome
  • adipose tissue
  • skeletal muscle
  • weight loss