Understanding and Patching Compositional Reasoning in LLMs
CoRR(2024)
摘要
LLMs have marked a revolutonary shift, yet they falter when faced with
compositional reasoning tasks. Our research embarks on a quest to uncover the
root causes of compositional reasoning failures of LLMs, uncovering that most
of them stem from the improperly generated or leveraged implicit reasoning
results. Inspired by our empirical findings, we resort to Logit Lens and an
intervention experiment to dissect the inner hidden states of LLMs. This deep
dive reveals that implicit reasoning results indeed surface within middle
layers and play a causative role in shaping the final explicit reasoning
results. Our exploration further locates multi-head self-attention (MHSA)
modules within these layers, which emerge as the linchpins in accurate
generation and leveraing of implicit reasoning results. Grounded on the above
findings, we develop CREME, a lightweight method to patch errors in
compositional reasoning via editing the located MHSA modules. Our empirical
evidence stands testament to CREME's effectiveness, paving the way for
autonomously and continuously enhancing compositional reasoning capabilities in
language models.
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