A unified framework for recommending diverse and relevant queries

Query recommendation has been considered as an effective way to help search users in their information seeking activities. Traditional approaches mainly focused on recommending alternative queries with close search intent to the original query. However, to only take relevance into account may generate redundant recommendations to users. It is better to provide diverse as well as relevant query recommendations, so that we can cover multiple potential search intents of users and minimize the risk that users will not be satisfied. Besides, previous query recommendation approaches mostly relied on measuring the relevance or similarity between queries in the Euclidean space. However, there is no convincing evidence that the query space is Euclidean. It is more natural and reasonable to assume that the query space is a manifold. In this paper, therefore, we aim to recommend diverse and relevant queries based on the intrinsic query manifold. We propose a unified model, named manifold ranking with stop points, for query recommendation. By turning ranked queries into stop points on the query manifold, our approach can generate query recommendations by simultaneously considering both diversity and relevance in a unified way. Empirical experimental results on a large scale query log of a commercial search engine show that our approach can effectively generate highly diverse as well as closely related query recommendations.

[1]  Filip Radlinski,et al.  Redundancy, diversity and interdependent document relevance , 2009, SIGF.

[2]  Michael R. Lyu,et al.  Learning latent semantic relations from clickthrough data for query suggestion , 2008, CIKM '08.

[3]  Reiner Kraft,et al.  Mining anchor text for query refinement , 2004, WWW '04.

[4]  Charles L. A. Clarke,et al.  Novelty and diversity in information retrieval evaluation , 2008, SIGIR '08.

[5]  Ji-Rong Wen,et al.  Clustering user queries of a search engine , 2001, WWW '01.

[6]  Mi Zhang,et al.  Enhancing diversity in Top-N recommendation , 2009, RecSys '09.

[7]  Gerhard Weikum,et al.  Efficient and self-tuning incremental query expansion for top-k query processing , 2005, SIGIR '05.

[8]  Bernhard Schölkopf,et al.  Ranking on Data Manifolds , 2003, NIPS.

[9]  Benjamin Rey,et al.  Generating query substitutions , 2006, WWW '06.

[10]  Doug Beeferman,et al.  Agglomerative clustering of a search engine query log , 2000, KDD '00.

[11]  Derek G. Bridge,et al.  Enhancing the diversity of conversational collaborative recommendations: a comparison , 2006, Artificial Intelligence Review.

[12]  W. Bruce Croft,et al.  Query expansion using local and global document analysis , 1996, SIGIR '96.

[13]  Enhong Chen,et al.  Context-aware query suggestion by mining click-through and session data , 2008, KDD.

[14]  Xiaojun Wan,et al.  Manifold-Ranking Based Topic-Focused Multi-Document Summarization , 2007, IJCAI.

[15]  Ling Liu,et al.  Query-URL Bipartite Based Approach to Personalized Query Recommendation , 2008, AAAI.

[16]  Jaana Kekäläinen,et al.  Cumulated gain-based evaluation of IR techniques , 2002, TOIS.

[17]  Xiaojin Zhu,et al.  Improving Diversity in Ranking using Absorbing Random Walks , 2007, NAACL.

[18]  Hang Li,et al.  A unified and discriminative model for query refinement , 2008, SIGIR '08.

[19]  Jade Goldstein-Stewart,et al.  The use of MMR, diversity-based reranking for reordering documents and producing summaries , 1998, SIGIR '98.

[20]  Jingrui He,et al.  Manifold-ranking based image retrieval , 2004, MULTIMEDIA '04.

[21]  Ryutarou Ohbuchi,et al.  Ranking on semantic manifold for shape-based 3d model retrieval , 2008, MIR '08.

[22]  Ricardo A. Baeza-Yates,et al.  Extracting semantic relations from query logs , 2007, KDD '07.

[23]  Kenneth Ward Church,et al.  Query suggestion using hitting time , 2008, CIKM '08.

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

[25]  Francesco Bonchi,et al.  Query suggestions using query-flow graphs , 2009, WSCD '09.

[26]  Bernhard Schölkopf,et al.  Learning with Local and Global Consistency , 2003, NIPS.

[27]  Dragomir R. Radev,et al.  DivRank: the interplay of prestige and diversity in information networks , 2010, KDD.

[28]  Wei-Ying Ma,et al.  Probabilistic query expansion using query logs , 2002, WWW '02.