CLAIDec 8, 2023

Assessing LLMs for Moral Value Pluralism

arXiv:2312.10075v140 citationsh-index: 4
Originality Incremental advance
AI Analysis

This addresses the need for social science-informed methods to evaluate and mitigate moral value misalignment in AI systems, which is crucial for ensuring fair and culturally sensitive LLM applications, though it is incremental in applying existing survey tools to AI.

The paper tackles the problem of assessing implicit moral values in large language model (LLM) outputs by using a Recognizing Value Resonance (RVR) NLP model to quantify alignment with World Values Survey data, finding that LLMs exhibit Western-centric biases, such as overestimating conservatism in non-Western countries and misrepresenting gender and age values.

The fields of AI current lacks methods to quantitatively assess and potentially alter the moral values inherent in the output of large language models (LLMs). However, decades of social science research has developed and refined widely-accepted moral value surveys, such as the World Values Survey (WVS), eliciting value judgments from direct questions in various geographies. We have turned those questions into value statements and use NLP to compute to how well popular LLMs are aligned with moral values for various demographics and cultures. While the WVS is accepted as an explicit assessment of values, we lack methods for assessing implicit moral and cultural values in media, e.g., encountered in social media, political rhetoric, narratives, and generated by AI systems such as LLMs that are increasingly present in our daily lives. As we consume online content and utilize LLM outputs, we might ask, which moral values are being implicitly promoted or undercut, or -- in the case of LLMs -- if they are intending to represent a cultural identity, are they doing so consistently? In this paper we utilize a Recognizing Value Resonance (RVR) NLP model to identify WVS values that resonate and conflict with a given passage of output text. We apply RVR to the text generated by LLMs to characterize implicit moral values, allowing us to quantify the moral/cultural distance between LLMs and various demographics that have been surveyed using the WVS. In line with other work we find that LLMs exhibit several Western-centric value biases; they overestimate how conservative people in non-Western countries are, they are less accurate in representing gender for non-Western countries, and portray older populations as having more traditional values. Our results highlight value misalignment and age groups, and a need for social science informed technological solutions addressing value plurality in LLMs.

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