A Comparative Study of Training Objectives for Clarification Facet Generation
Shiyu Ni, Keping Bi, Jiafeng Guo, Xueqi Cheng

TL;DR
This paper systematically compares various training objectives for clarification facet generation, analyzing their properties and effectiveness to improve user query understanding in information retrieval systems.
Contribution
It introduces a comprehensive comparison of training objectives, including new methods, for query facet generation, highlighting their advantages and limitations.
Findings
Permutation-invariant objectives improve diversity.
Sequential prediction enhances accuracy.
Controlling output facet count affects relevance.
Abstract
Due to the ambiguity and vagueness of a user query, it is essential to identify the query facets for the clarification of user intents. Existing work on query facet generation has achieved compelling performance by sequentially predicting the next facet given previously generated facets based on pre-trained language generation models such as BART. Given a query, there are mainly two types of training objectives to guide the facet generation models. One is to generate the default sequence of ground-truth facets, and the other is to enumerate all the permutations of ground-truth facets and use the sequence that has the minimum loss for model updates. The second is permutation-invariant while the first is not. In this paper, we aim to conduct a systematic comparative study of various types of training objectives, with different properties of not only whether it is permutation-invariant but…
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Taxonomy
TopicsTopic Modeling · Recommender Systems and Techniques · Multimodal Machine Learning Applications
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · Multi-Head Attention · Attention Is All You Need · Byte Pair Encoding · Dropout · Dense Connections · Linear Layer · Adam · Residual Connection · Layer Normalization
