CLMay 22, 2023

Iterative Forward Tuning Boosts In-Context Learning in Language Models

arXiv:2305.13016v337 citations
Originality Incremental advance
AI Analysis

This addresses the problem of improving in-context learning efficiency for language model users, though it is incremental as it builds on existing prompt engineering approaches.

The paper tackles the limitation of single-iteration in-context learning in language models by proposing a two-stage framework with iterative enhanced attention, achieving superior performance over vanilla methods across benchmarks.

Despite the advancements in in-context learning (ICL) for large language models (LLMs), current research centers on specific prompt engineering, such as demonstration selection, with the expectation that a single iteration of demonstrations processing can generalize effectively to a given test sample. However, this perspective overlooks the potential benefits derived from multiple iterations involving demonstrations, a practice aligning more closely with the iterative decision-making process exhibited by humans, who often learn through analogy. In this study, we introduce a novel two-stage framework to boost ICL in LLMs. Specifically, our framework delineates the ICL process into two distinct stages: Deep-Thinking and test stages. The Deep-Thinking stage incorporates a unique attention mechanism, i.e., iterative enhanced attention, which enables multiple rounds of information accumulation. This mechanism operates by manipulating the Key-Value matrices without training, fostering enhanced understanding capabilities in LLMs by thinking demonstrations multiple times. We evaluated Deep-Thinking across a range of benchmarks and LLMs, showing its superior performance over vanilla ICL methods and its effectiveness in challenging tasks where demonstration selection is infeasible.

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Foundations

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