๐Ÿ’คQuietscore 0.0Jun 25, 2026ยท2606.27237cs.CL

LMs as Task-Specific Knowledge Bases: An Interpretability Analysis

Amit Elhelo, Amir Globerson, Mor Geva

Narrative

No narrative written yet. The narrate cron picks top papers by score; run /api/cron/narrate to populate this manually.

Abstract

Language models (LMs) capture large amounts of factual knowledge applicable to a wide range of tasks, motivating the view of their parameters as a knowledge base. An important property of knowledge bases is that different queries for the same fact return consistent results, drawing on a single source of truth. We investigate whether LMs satisfy this property through behavioral and mechanistic analyses. Our results suggest that they encode knowledge in a task-specific manner. Behaviorally, facts acquired on one task frequently fail to co-emerge on others during training. Parameter localization experiments suggest a mechanistic explanation, revealing distinct parameter subsets underlying different tasks for the same fact. Finally, we show that chain-of-thought reasoning draws part of its effectiveness from engaging task-specific parameters beyond those tied to the evaluation task. Our findings suggest that what the model knows and how it is asked are intertwined in parameter space, undermining the "knowledge base" analogy and carrying implications for the reliability and controllability of factual knowledge in LMs.

Citation timeline
Not enough citation snapshots yet to plot a timeline. Come back after a few cron runs.