Phase-Associative Memory: Sequence Modeling in Complex Hilbert Space
Gowrav Vishwakarma, Christopher J. Agostino

TL;DR
This paper introduces Phase-Associative Memory (PAM), a complex-valued sequence model inspired by quantum logic, which shows promising parameter efficiency and potential for scalable language modeling.
Contribution
The work presents a novel complex-valued sequence model, PAM, demonstrating stable training and faster loss reduction compared to real-valued models on language tasks.
Findings
PAM trains stably across 5M to 100M parameters on WikiText-103.
PAM exhibits faster loss reduction and narrower gap with real-valued models as parameters increase.
Complex-valued models like PAM could achieve comparable performance with fewer parameters.
Abstract
Experiments probing natural language processing by both humans and LLMs suggest that the meaning of a semantic expression is indeterminate prior to the act of interpretation rather than being specifiable simply as the sum of its parts (i.e. compositionality). This observer-dependent act dynamically actualizes meaning under genuine contextuality more consistent with quantum logical mechanisms than with classical Boolean approaches that assume separability, motivating an approach to language modeling that utilizes a Hilbert space formalism. In this work, we introduce Phase-Associative Memory (PAM) -- a complex-valued sequence model whose state S_t \in \mathbb{C}^{d \times d} accumulates outer products of complex token embeddings retrieved through the conjugate inner product -- and evaluate it against a structurally matched real-valued…
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