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Making Long-Context Language Models Better Multi-Hop Reasoners

A novel attribution-based approach enhances language models' reasoning in complex, multi-hop tasks, improving performance and resilience to noisy data.

Year
2024
Venue
arXiv 2024
Authors
4
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arxiv.org/abs/2408.03246ARXIV-DEFAULT
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Abstract

Recent advancements in long-context modeling have enhanced language models (LMs) for complex tasks across multiple NLP applications. Despite this progress, we find that these models struggle with multi-hop reasoning and exhibit decreased performance in the presence of noisy contexts. In this paper, we introduce Reasoning with Attributions, a novel approach that prompts LMs to supply attributions for each assertion during their reasoning. We validate our approach through experiments on three multi-hop datasets, employing both proprietary and open-source models, and demonstrate its efficacy and resilience. Furthermore, we explore methods to augment reasoning capabilities via fine-tuning and offer an attribution-annotated dataset and a specialized training strategy. Our fine-tuned model achieves competitive performance on multi-hop reasoning benchmarks, closely paralleling proprietary LMs such as ChatGPT and Claude-instant.

Authors

4