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On Linear Separability of the MNIST Handwritten Digits Dataset

arXiv cs.LG / 3/16/2026

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Key Points

  • The paper performs a comprehensive empirical investigation of whether the MNIST dataset is linearly separable, distinguishing pairwise and one-vs-rest separations across training, test, and combined sets.
  • It reviews theoretical approaches and current tools for assessing linear separability and systematically examines all relevant data assemblies.
  • The findings aim to resolve conflicting claims about MNIST's separability and provide updated benchmarks for evaluating linear models on this dataset.
  • The study has implications for model choice and data representations in pattern recognition, influencing how researchers and engineers approach MNIST-style benchmarks.

Abstract

The MNIST dataset containing thousands of handwritten digit images is still a fundamental benchmark for evaluating various pattern-recognition and image-classification models. Linear separability is a key concept in many statistical and machine-learning techniques. Despite the long history of the MNIST dataset and its relative simplicity in size and resolution, the question of whether the dataset is linearly separable has never been fully answered -- scientific and informal sources share conflicting claims. This paper aims to provide a comprehensive empirical investigation to address this question, distinguishing pairwise and one-vs-rest separation of the training, the test and the combined sets, respectively. It reviews the theoretical approaches to assessing linear separability, alongside state-of-the-art methods and tools, then systematically examines all relevant assemblies, and reports the findings.