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Updated: Jun 5, 2025

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Active learning with human heuristics: an algorithm robust to labeling bias.

Sriram Ravichandran1, Nandan Sudarsanam2,3, Balaraman Ravindran2,3

  • 1Department of Management Studies, Indian Institute of Technology Madras, Chennai, Tamil Nadu, India.

Frontiers in Artificial Intelligence
|December 4, 2024
PubMed
Summary
This summary is machine-generated.

Human labeling biases in active learning significantly degrade model performance. A new inverse information density algorithm, inspired by human psychology, improves performance by 87%, demonstrating the need for bias-robust active learning strategies.

Keywords:
active learningbiasesfast-and-frugal heuristicshuman behaviorhuman in the looprobustness

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Area of Science:

  • Machine Learning
  • Cognitive Science
  • Data Science

Background:

  • Active learning enhances model training by adaptively selecting data for labeling.
  • Human oracles, like doctors, can introduce labeling biases due to cognitive heuristics.

Purpose of the Study:

  • To investigate the impact of human heuristics on active learning performance.
  • To develop active learning algorithms robust to labeling bias.

Main Methods:

  • Evaluated combinations of human heuristics (fast-and-frugal tree, tallying model) with active learning algorithms (entropy sampling, multi-view learning, information density, inverse information density) and classifiers.
  • Tested on 15 real-world datasets across health, marketing, and transportation domains.

Main Results:

  • Labeling by human heuristics significantly decreased active learning performance, sometimes below random chance.
  • The proposed inverse information density algorithm improved performance by 87% compared to other methods.

Conclusions:

  • Modeling human heuristics is crucial for designing effective active learning systems.
  • Developing bias-robust active learning algorithms is essential for reliable prediction models.