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Frontiers of Computer Science

ISSN 2095-2228

ISSN 2095-2236(Online)

CN 10-1014/TP

邮发代号 80-970

2019 Impact Factor: 1.275

Frontiers of Computer Science  2022, Vol. 16 Issue (1): 161305   https://doi.org/10.1007/s11704-020-0016-y
  本期目录
Understanding the role of human-inspired heuristics for retrieval models
Xiangsheng LI, Yiqun LIU(), Jiaxin MAO
Department of Computer Science and Technology, Institute for Artificial Intelligence, Beijing National Research Center for Information Science and Technology, Tsinghua University, Beijing 100084, China
 全文: PDF(965 KB)  
Abstract

Relevance estimation is one of the core concerns of information retrieval (IR) studies. Although existing retrieval models gained much success in both deepening our understanding of information seeking behavior and building effective retrieval systems, we have to admit that the models work in a rather different manner from how humans make relevance judgments. Users’ information seeking behaviors involve complex cognitive processes, however, the majority of these behavior patterns are not considered in existing retrieval models. To bridge the gap between practical user behavior and retrieval model, it is essential to systematically investigate user cognitive behavior during relevance judgement and incorporate these heuristics into retrieval models. In this paper, we aim to formally define a set of basic user reading heuristics during relevance judgement and investigate their corresponding modeling strategies in retrieval models. Further experiments are conducted to evaluate the effectiveness of different reading heuristics for improving ranking performance. Based on a large-scale Web search dataset, we find that most reading heuristics can improve the performance of retrieval model and establish guidelines for improving the design of retrieval models with humaninspired heuristics. Our study sheds light on building retrieval model from the perspective of cognitive behavior.

Key wordsreading heuristics    retrieval model    cognitive be-havior
收稿日期: 2020-01-09      出版日期: 2021-09-28
Corresponding Author(s): Yiqun LIU   
 引用本文:   
. [J]. Frontiers of Computer Science, 2022, 16(1): 161305.
Xiangsheng LI, Yiqun LIU, Jiaxin MAO. Understanding the role of human-inspired heuristics for retrieval models. Front. Comput. Sci., 2022, 16(1): 161305.
 链接本文:  
https://academic.hep.com.cn/fcs/CN/10.1007/s11704-020-0016-y
https://academic.hep.com.cn/fcs/CN/Y2022/V16/I1/161305
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