LORE: A Large Generative Model for Search Relevance
PositiveArtificial Intelligence
- LORE, a systematic framework for Large Generative Model-based relevance in e-commerce search, has been developed over three years, achieving a cumulative +27% improvement in online GoodRate metrics. This framework emphasizes the need for a qualitative-driven decomposition of relevance tasks, which includes knowledge and reasoning, multi-modal matching, and rule adherence.
- The advancements made with LORE are significant for enhancing search relevance in e-commerce, potentially leading to improved user experiences and increased sales. By addressing performance ceilings in existing models, LORE sets a new standard for relevance in search algorithms.
- This development reflects a broader trend in AI research, where the integration of large language models (LLMs) is evolving from simple text generation to complex problem-solving capabilities. The emphasis on structured reasoning and the quality of training data highlights ongoing discussions about the effectiveness and transparency of AI systems.
— via World Pulse Now AI Editorial System
