IRAug 9, 2021

IntenT5: Search Result Diversification using Causal Language Models

arXiv:2108.04026v117 citations
Originality Incremental advance
AI Analysis

This addresses the problem of under-specified queries in search engines without relying on massive user data, offering a scalable alternative for improving result diversity.

The paper tackled search result diversification for ambiguous or multi-faceted queries by using causal language models to generate query intents, achieving improved diversity across six benchmarks and matching or exceeding performance based on proprietary query logs.

Search result diversification is a beneficial approach to overcome under-specified queries, such as those that are ambiguous or multi-faceted. Existing approaches often rely on massive query logs and interaction data to generate a variety of possible query intents, which then can be used to re-rank documents. However, relying on user interaction data is problematic because one first needs a massive user base to build a sufficient log; public query logs are insufficient on their own. Given the recent success of causal language models (such as the Text-To-Text Transformer (T5) model) at text generation tasks, we explore the capacity of these models to generate potential query intents. We find that to encourage diversity in the generated queries, it is beneficial to adapt the model by including a new Distributional Causal Language Modeling (DCLM) objective during fine-tuning and a representation replacement during inference. Across six standard evaluation benchmarks, we find that our method (which we call IntenT5) improves search result diversity and attains (and sometimes exceeds) the diversity obtained when using query suggestions based on a proprietary query log. Our analysis shows that our approach is most effective for multi-faceted queries and is able to generalize effectively to queries that were unseen in training data.

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