Pack of LLMs: Model Fusion at Test-Time via Perplexity Optimization
arxiv(2024)
摘要
Fusing knowledge from multiple Large Language Models (LLMs) can combine their
diverse strengths to achieve improved performance on a given task. However,
current fusion approaches either rely on learning-based fusers that do not
generalize to new LLMs, or do not take into account how well each LLM
understands the input. In this work, we study LLM fusion at test-time, which
enables leveraging knowledge from arbitrary user-specified LLMs during
inference. We introduce Pack of LLMs (PackLLM), an effective method for
test-time fusion that leverages each LLM's expertise, given an input prompt.
PackLLM performs model fusion by solving an optimization problem for
determining each LLM's importance, so that perplexity over the input prompt is
minimized. First, our simple PackLLM-sim variant validates that perplexity is a
good indicator for measuring each LLM's expertise. Second, our PackLLM-opt
variant approximately solves the perplexity minimization problem via a greedy
algorithm. The derived importance weights are used to combine the LLMs during
inference. We conduct experiments with over 100 total LLMs on a diverse set of
tasks. Experimental results show that (i) perplexity is a reliable measure for
LLM fusion, (ii) PackLLM outperforms test-time fusion baselines by 1.89
accuracy points, and (iii) PackLLM can leverage new LLMs to improve performance
over learning-based fusion approaches by 3.92-11.94
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