MiA-Signature: Approximating Global Activation for Long-Context Understanding
About
A growing body of work in cognitive science suggests that reportable conscious access is associated with \emph{global ignition} over distributed memory systems, while such activation is only partially accessible as individuals cannot directly access or enumerate all activated contents. This tension suggests a plausible mechanism that cognition may rely on a compact representation that approximates the global influence of activation on downstream processing. Inspired by this idea, we introduce the concept of \textbf{Mindscape Activation Signature (MiA-Signature)}, a compressed representation of the global activation pattern induced by a query. In LLM systems, this is instantiated via submodular-based selection of high-level concepts that cover the activated context space, optionally refined through lightweight iterative updates using working memory. The resulting MiA-Signature serves as a conditioning signal that approximates the effect of the full activation state while remaining computationally tractable. Integrating MiA-Signatures into both RAG and agentic systems yields consistent performance gains across multiple long-context understanding tasks.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Long narrative understanding QA | NoCha | Pair Accuracy65.1 | 38 | |
| Long-context Question Answering | DetectiveQA-ZH | Accuracy80 | 38 | |
| Long-context Question Answering | DetectiveQA-En | Accuracy74.7 | 38 | |
| Long-context Question Answering | NarrativeQA | R@1059.5 | 6 | |
| Long-context Question Answering | NovelHopQA | R@1036.8 | 6 |