Multiple Models for Recommending Temporal Aspects of Entities

Entity aspect recommendation is an emerging task in semantic search that helps users discover serendipitous and prominent information with respect to an entity, of which salience (e.g., popularity) is the most important factor in previous work. However, entity aspects are temporally dynamic and often driven by events happening over time. For such cases, aspect suggestion based solely on salience features can give unsatisfactory results, for two reasons. First, salience is often accumulated over a long time period and does not account for recency. Second, many aspects related to an event entity are strongly time-dependent. In this paper, we study the task of temporal aspect recommendation for a given entity, which aims at recommending the most relevant aspects and takes into account time in order to improve search experience. We propose a novel event-centric ensemble ranking method that learns from multiple time and type-dependent models and dynamically trades off salience and recency characteristics. Through extensive experiments on real-world query logs, we demonstrate that our method is robust and achieves better effectiveness than competitive baselines.

[1]  Shubhra Kanti Karmaker Santu,et al.  Modeling the Influence of Popular Trending Events on User Search Behavior , 2017, WWW.

[2]  Krisztian Balog,et al.  Dynamic Factual Summaries for Entity Cards , 2017, SIGIR.

[3]  Krisztian Balog,et al.  Report on the Eighth Workshop on Exploiting Semantic Annotations in Information Retrieval (ESAIR '15) , 2016, SIGIR Forum.

[4]  Fan Li,et al.  Ranking specialization for web search: a divide-and-conquer approach by using topical RankSVM , 2010, WWW '10.

[5]  Christos Faloutsos,et al.  Rise and fall patterns of information diffusion: model and implications , 2012, KDD.

[6]  Andrea Dessi,et al.  A machine-learning approach to ranking RDF properties , 2016, Future Gener. Comput. Syst..

[7]  Ji Zhang,et al.  A Probabilistic Model for Time-Aware Entity Recommendation , 2016, SEMWEB.

[8]  Hongbo Deng,et al.  Entropy-biased models for query representation on the click graph , 2009, SIGIR.

[9]  Maarten de Rijke,et al.  Identifying entity aspects in microblog posts , 2012, SIGIR '12.

[10]  Ashutosh Saxena,et al.  Cascaded Classification Models: Combining Models for Holistic Scene Understanding , 2008, NIPS.

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

[12]  Roi Blanco,et al.  Timely Semantics: A Study of a Stream-Based Ranking System for Entity Relationships , 2015, SEMWEB.

[13]  Maarten de Rijke,et al.  Mining, Ranking and Recommending Entity Aspects , 2015, SIGIR.

[14]  Jiawei Han,et al.  On building entity recommender systems using user click log and freebase knowledge , 2014, WSDM.

[15]  Ziv Bar-Yossef,et al.  Context-sensitive query auto-completion , 2011, WWW.

[16]  Joemon M. Jose,et al.  Recent and robust query auto-completion , 2014, WWW.

[17]  Wolfgang Nejdl,et al.  Learning to Detect Event-Related Queries for Web Search , 2015, WWW.

[18]  James Allan,et al.  Predicting Search Intent Based on Pre-Search Context , 2015, SIGIR.

[19]  Roi Blanco,et al.  Entity Recommendations in Web Search , 2013, SEMWEB.

[20]  Thomas B. Moeslund,et al.  Learning Dynamic Classes of Events using Stacked Multilayer Perceptron Networks , 2016, SIGIR 2016.

[21]  Milad Shokouhi,et al.  Time-sensitive query auto-completion , 2012, SIGIR '12.

[22]  Susan T. Dumais,et al.  Towards Supporting Search over Trending Events with Social Media , 2013, ICWSM.

[23]  Peter Mika,et al.  Ad-hoc object retrieval in the web of data , 2010, WWW '10.

[24]  Michael Gamon,et al.  Active objects: actions for entity-centric search , 2012, WWW.

[25]  Cong Yu,et al.  Knowledge Exploration using Tables on the Web , 2016, Proc. VLDB Endow..

[26]  Ji-Rong Wen,et al.  WWW 2007 / Track: Search Session: Personalization A Largescale Evaluation and Analysis of Personalized Search Strategies ABSTRACT , 2022 .

[27]  Claudia Niederée,et al.  Beyond Time: Dynamic Context-Aware Entity Recommendation , 2017, ESWC.

[28]  Susan T. Dumais,et al.  Understanding temporal query dynamics , 2011, WSDM '11.

[29]  Milad Shokouhi,et al.  Detecting seasonal queries by time-series analysis , 2011, SIGIR.

[30]  Thorsten Joachims,et al.  Training linear SVMs in linear time , 2006, KDD '06.