CLAIHCLGMay 26, 2023

Heterogeneous Value Alignment Evaluation for Large Language Models

arXiv:2305.17147v39 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of ensuring LLMs reflect diverse human values in practical applications, though it is incremental in extending existing evaluation frameworks.

The paper tackles the problem of aligning Large Language Models (LLMs) with heterogeneous human values by proposing a Heterogeneous Value Alignment Evaluation (HVAE) system, which reveals that mainstream LLMs tend to favor neutral values over pronounced personal values.

The emergent capabilities of Large Language Models (LLMs) have made it crucial to align their values with those of humans. However, current methodologies typically attempt to assign value as an attribute to LLMs, yet lack attention to the ability to pursue value and the importance of transferring heterogeneous values in specific practical applications. In this paper, we propose a Heterogeneous Value Alignment Evaluation (HVAE) system, designed to assess the success of aligning LLMs with heterogeneous values. Specifically, our approach first brings the Social Value Orientation (SVO) framework from social psychology, which corresponds to how much weight a person attaches to the welfare of others in relation to their own. We then assign the LLMs with different social values and measure whether their behaviors align with the inducing values. We conduct evaluations with new auto-metric \textit{value rationality} to represent the ability of LLMs to align with specific values. Evaluating the value rationality of five mainstream LLMs, we discern a propensity in LLMs towards neutral values over pronounced personal values. By examining the behavior of these LLMs, we contribute to a deeper insight into the value alignment of LLMs within a heterogeneous value system.

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