Test-Time Learning for Large Language Models
- URL: http://arxiv.org/abs/2505.20633v1
- Date: Tue, 27 May 2025 02:18:59 GMT
- Title: Test-Time Learning for Large Language Models
- Authors: Jinwu Hu, Zhitian Zhang, Guohao Chen, Xutao Wen, Chao Shuai, Wei Luo, Bin Xiao, Yuanqing Li, Mingkui Tan,
- Abstract summary: We propose a Test-Time Learning (TTL) paradigm for Large Language Models (LLMs)<n>LLMs dynamically adapts to target domains using only unlabeled test data during testing.<n>We demonstrate through experiments that TLM improves performance by at least 20% compared to original LLMs on domain knowledge adaptation.
- Score: 33.11605667376906
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: While Large Language Models (LLMs) have exhibited remarkable emergent capabilities through extensive pre-training, they still face critical limitations in generalizing to specialized domains and handling diverse linguistic variations, known as distribution shifts. In this paper, we propose a Test-Time Learning (TTL) paradigm for LLMs, namely TLM, which dynamically adapts LLMs to target domains using only unlabeled test data during testing. Specifically, we first provide empirical evidence and theoretical insights to reveal that more accurate predictions from LLMs can be achieved by minimizing the input perplexity of the unlabeled test data. Based on this insight, we formulate the Test-Time Learning process of LLMs as input perplexity minimization, enabling self-supervised enhancement of LLM performance. Furthermore, we observe that high-perplexity samples tend to be more informative for model optimization. Accordingly, we introduce a Sample Efficient Learning Strategy that actively selects and emphasizes these high-perplexity samples for test-time updates. Lastly, to mitigate catastrophic forgetting and ensure adaptation stability, we adopt Low-Rank Adaptation (LoRA) instead of full-parameter optimization, which allows lightweight model updates while preserving more original knowledge from the model. We introduce the AdaptEval benchmark for TTL and demonstrate through experiments that TLM improves performance by at least 20% compared to original LLMs on domain knowledge adaptation.
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