DS1 spectrogram: Polysemanticity or Polysemy? Lexical Identity Confounds Superposition Metrics

Polysemanticity or Polysemy? Lexical Identity Confounds Superposition Metrics

April 1, 20262604.00443

Authors

Iyad Ait Hou,Rebecca Hwa

Abstract

If the same neuron activates for both "lender" and "riverside," standard metrics attribute the overlap to superposition--the neuron must be compressing two unrelated concepts. This work explores how much of the overlap is due a lexical confound: neurons fire for a shared word form (such as "bank") rather than for two compressed concepts.

A 2x2 factorial decomposition reveals that the lexical-only condition (same word, different meaning) consistently exceeds the semantic-only condition (different word, same meaning) across models spanning 110M-70B parameters. The confound carries into sparse autoencoders (18-36% of features blend senses), sits in <=1% of activation dimensions, and hurts downstream tasks: filtering it out improves word sense disambiguation and makes knowledge edits more selective (p = 0.002).

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