Generative Retrieval with Preference Optimization for E-commerce Search
Generative retrieval introduces a groundbreaking paradigm to document retrieval by directly generating the identifier of a pertinent document in response to a specific query. This paradigm has demonstrated considerable benefits and potential, particularly in representation and generalization capabil...
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Zusammenfassung: | Generative retrieval introduces a groundbreaking paradigm to document
retrieval by directly generating the identifier of a pertinent document in
response to a specific query. This paradigm has demonstrated considerable
benefits and potential, particularly in representation and generalization
capabilities, within the context of large language models. However, it faces
significant challenges in E-commerce search scenarios, including the complexity
of generating detailed item titles from brief queries, the presence of noise in
item titles with weak language order, issues with long-tail queries, and the
interpretability of results. To address these challenges, we have developed an
innovative framework for E-commerce search, called generative retrieval with
preference optimization. This framework is designed to effectively learn and
align an autoregressive model with target data, subsequently generating the
final item through constraint-based beam search. By employing multi-span
identifiers to represent raw item titles and transforming the task of
generating titles from queries into the task of generating multi-span
identifiers from queries, we aim to simplify the generation process. The
framework further aligns with human preferences using click data and employs a
constrained search method to identify key spans for retrieving the final item,
thereby enhancing result interpretability. Our extensive experiments show that
this framework achieves competitive performance on a real-world dataset, and
online A/B tests demonstrate the superiority and effectiveness in improving
conversion gains. |
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DOI: | 10.48550/arxiv.2407.19829 |