CLJun 18, 2024

Hopping Too Late: Exploring the Limitations of Large Language Models on Multi-Hop Queries

arXiv:2406.12775v284 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of understanding and improving latent reasoning in transformer-based LLMs for researchers and practitioners, though it is incremental as it builds on existing analysis methods.

The paper investigates how large language models (LLMs) internally compute multi-hop queries, revealing that bridge entities are resolved early, but later layers may lack necessary knowledge, leading to errors. It introduces a 'back-patching' method that corrects up to 66% of previously incorrect cases by patching hidden representations from later to earlier layers.

Large language models (LLMs) can solve complex multi-step problems, but little is known about how these computations are implemented internally. Motivated by this, we study how LLMs answer multi-hop queries such as "The spouse of the performer of Imagine is". These queries require two information extraction steps: a latent one for resolving the first hop ("the performer of Imagine") into the bridge entity (John Lennon), and another for resolving the second hop ("the spouse of John Lennon") into the target entity (Yoko Ono). Understanding how the latent step is computed internally is key to understanding the overall computation. By carefully analyzing the internal computations of transformer-based LLMs, we discover that the bridge entity is resolved in the early layers of the model. Then, only after this resolution, the two-hop query is solved in the later layers. Because the second hop commences in later layers, there could be cases where these layers no longer encode the necessary knowledge for correctly predicting the answer. Motivated by this, we propose a novel "back-patching" analysis method whereby a hidden representation from a later layer is patched back to an earlier layer. We find that in up to 66% of previously incorrect cases there exists a back-patch that results in the correct generation of the answer, showing that the later layers indeed sometimes lack the needed functionality. Overall, our methods and findings open further opportunities for understanding and improving latent reasoning in transformer-based LLMs.

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