Investigating Session Search Behavior with Knowledge Graphs

Knowledge graphs are widely used in information retrieval as they can enhance our semantic understanding of queries and documents. The main idea is to consider entities and entity relationships as side information. Although existing work has achieved improvements in retrieval effectiveness by incorporating information from knowledge graphs into retrieval models, few studies have leveraged knowledge graphs in understanding users' search behavior. We investigate user behavior during session search from the perspective of a knowledge graph. We conduct a query log-based analysis of users' query reformulation and document clicking behavior. Based on a large-scale commercial query log and a knowledge graph, we find new user behavior patterns in terms of query reformulation and document clicking. Our study deepens our understanding of user behavior in session search and provides implications to help improve retrieval models with knowledge graphs.

[1]  Jin Zhang,et al.  Identifying Web search session patterns using cluster analysis: A comparison of three search environments , 2009, J. Assoc. Inf. Sci. Technol..

[2]  Ji-Rong Wen,et al.  Knowledge Enhanced Personalized Search , 2020, SIGIR.

[3]  Jason Weston,et al.  Translating Embeddings for Modeling Multi-relational Data , 2013, NIPS.

[4]  Ryen W. White,et al.  Search, interrupted: understanding and predicting search task continuation , 2012, SIGIR '12.

[5]  James P. Callan,et al.  Explicit Semantic Ranking for Academic Search via Knowledge Graph Embedding , 2017, WWW.

[6]  Andrei Broder,et al.  A taxonomy of web search , 2002, SIGF.

[7]  Krisztian Balog,et al.  Entity Linking in Queries: Efficiency vs. Effectiveness , 2017, ECIR.

[8]  M. de Rijke,et al.  Measuring Semantic Coherence of a Conversation , 2018, SEMWEB.

[9]  Tie-Yan Liu,et al.  Bag-of-Entities Representation for Ranking , 2016, ICTIR.

[10]  Jacek Gwizdka,et al.  Analysis and evaluation of query reformulations in different task types , 2010, ASIST.

[11]  Fabrizio Silvestri,et al.  Mining Query Logs: Turning Search Usage Data into Knowledge , 2010, Found. Trends Inf. Retr..

[12]  Peng Zhang,et al.  XLore: A Large-scale English-Chinese Bilingual Knowledge Graph , 2013, SEMWEB.

[13]  Zhiyuan Liu,et al.  Entity-Duet Neural Ranking: Understanding the Role of Knowledge Graph Semantics in Neural Information Retrieval , 2018, ACL.

[14]  Yiqun Liu,et al.  TianGong-ST: A New Dataset with Large-scale Refined Real-world Web Search Sessions , 2019, CIKM.

[15]  Yiqun Liu,et al.  Jointly Learning Explainable Rules for Recommendation with Knowledge Graph , 2019, WWW.

[16]  M. de Rijke,et al.  Knowledge Graphs: An Information Retrieval Perspective , 2020, Found. Trends Inf. Retr..

[17]  Yiqun Liu,et al.  Investigating Query Reformulation Behavior of Search Users , 2019, CCIR.