Cultural Learning-Based Culture Adaptation of Language Models
By: Chen Cecilia Liu, Anna Korhonen, Iryna Gurevych
Potential Business Impact:
Teaches computers to understand different cultures.
Adapting large language models (LLMs) to diverse cultural values is a challenging task, as existing LLMs often reflect the values of specific groups by default, and potentially causing harm to others. In this paper, we present CLCA, a novel framework for enhancing LLM alignment with cultural values based on cultural learning. The framework leverages simulated social interactions to generate conversations in which LLMs engage in role-playing within culturally adapted social scenarios, capturing implicit cultural norms for model fine-tuning. CLCA improves cultural value alignment across various model architectures measured using World Value Survey data, demonstrating the effectiveness of our proposed approach. Our results provide early evidence that understanding intent and social interactions can enhance cultural value adaptation in LLMs, highlighting the promise of training approaches based on cultural learning.
Similar Papers
Whispers of Many Shores: Cultural Alignment through Collaborative Cultural Expertise
Artificial Intelligence
Makes AI understand different cultures without retraining.
An Evaluation of Cultural Value Alignment in LLM
Computers and Society
Helps computers understand different cultures worldwide.
Culturally-Aware Conversations: A Framework & Benchmark for LLMs
Computation and Language
Helps computers talk better with people everywhere.