Paper
Generic Triple-Latent Compression with Gated Associative Retrieval
arXiv:2606.05175v1 Announce Type: new Abstract: We study generic triple-latent sequence models that maintain a running token state and compressed pair-memory pathway to capture higher-order token interactions without benchmark-specific parsing. The triple-latent family improves a small Transformer baseline on byte-level WikiText-2 and on a tokenizer-based MiniMind language-model benchmark, while a recall-focused gated key-value retrieval extension improves associative recall but remains seed-sensitive and much slower in the current reference implementation.
Authors:
Topics
Relevant entities
People
Linked people will appear here.
Related coverage
Linked coverage will appear here.
Related events
Linked events will appear here.
Related discussions
Related discussion nodes will appear here.