English

Time-Aware Feature Selection: Adaptive Temporal Masking for Stable Sparse Autoencoder Training

Machine Learning 2025-10-13 v1 Artificial Intelligence Computation and Language

Abstract

Understanding the internal representations of large language models is crucial for ensuring their reliability and safety, with sparse autoencoders (SAEs) emerging as a promising interpretability approach. However, current SAE training methods face feature absorption, where features (or neurons) are absorbed into each other to minimize L1L_1 penalty, making it difficult to consistently identify and analyze model behaviors. We introduce Adaptive Temporal Masking (ATM), a novel training approach that dynamically adjusts feature selection by tracking activation magnitudes, frequencies, and reconstruction contributions to compute importance scores that evolve over time. ATM applies a probabilistic masking mechanism based on statistical thresholding of these importance scores, creating a more natural feature selection process. Through extensive experiments on the Gemma-2-2b model, we demonstrate that ATM achieves substantially lower absorption scores compared to existing methods like TopK and JumpReLU SAEs, while maintaining excellent reconstruction quality. These results establish ATM as a principled solution for learning stable, interpretable features in neural networks, providing a foundation for more reliable model analysis.

Keywords

Cite

@article{arxiv.2510.08855,
  title  = {Time-Aware Feature Selection: Adaptive Temporal Masking for Stable Sparse Autoencoder Training},
  author = {T. Ed Li and Junyu Ren},
  journal= {arXiv preprint arXiv:2510.08855},
  year   = {2025}
}

Comments

First submitted on February 10th, 2025 to ICLR 2025 Workshop (XAI4Science: From Understanding Model Behavior to Discovering New Scientific Knowledge). The paper was accepted but the workshop does not generate proceedings. Now uploading to arXiv to make the paper publicly available

R2 v1 2026-07-01T06:28:22.213Z