Predicting Failing Queries in Video Search

The ability to predict when a video search query is not likely to deliver satisfying search results is expected to enable more effective search results optimizations and improved search experience for users. In this paper, we propose a novel context-aware query failure prediction approach that predicts whether a particular query submitted in a user's search session is likely to fail. The approach builds on the well-known concept of query performance prediction introduced in conventional text-based Web search to estimate the query's retrieval performance, but extends this concept with two novel characteristics, user indicators and engine indicators. User indicators are derived from transaction logs, capture the patterns of user interactions with the video search engine, and exploit the context in which a particular query was submitted. Engine indicators are derived from the search results list and measure the consistency of visual search results at the level of visual concepts and textual metadata associated with videos. Extensive evaluation of the approach on a test set containing over one million video search queries shows its effectiveness and demonstrates a significant improvement over traditional and state-of-the-art baseline approaches.

[1]  Bo Geng,et al.  Query difficulty estimation for image retrieval , 2012, Neurocomputing.

[2]  Elad Yom-Tov,et al.  Learning to estimate query difficulty: including applications to missing content detection and distributed information retrieval , 2005, SIGIR '05.

[3]  Steve Fox,et al.  Evaluating implicit measures to improve web search , 2005, TOIS.

[4]  Chong-Wah Ngo,et al.  Towards optimal bag-of-features for object categorization and semantic video retrieval , 2007, CIVR '07.

[5]  Amanda Spink,et al.  A study and comparison of multimedia Web searching: 1997-2006 , 2009, J. Assoc. Inf. Sci. Technol..

[6]  Falk Scholer,et al.  Effective Pre-retrieval Query Performance Prediction Using Similarity and Variability Evidence , 2008, ECIR.

[7]  John R. Smith,et al.  Large-scale concept ontology for multimedia , 2006, IEEE MultiMedia.

[8]  Sarantos Kapidakis,et al.  Failed Queries: a Morpho-Syntactic Analysis Based on Transaction Log Files , 2011 .

[9]  Thorsten Joachims,et al.  Optimizing search engines using clickthrough data , 2002, KDD.

[10]  Marcel Worring,et al.  Concept-Based Video Retrieval , 2009, Found. Trends Inf. Retr..

[11]  Ahmet Can,et al.  Characterizing Queries in Different Search Tasks , 2012, 2012 45th Hawaii International Conference on System Sciences.

[12]  Ryen W. White,et al.  Modeling and analysis of cross-session search tasks , 2011, SIGIR.

[13]  Martha Larson,et al.  To Seek, Perchance to Fail: Expressions of User Needs in Internet Video Search , 2011, ECIR.

[14]  Yaşar Tonta Analysis of Search Failures in Document Retrieval Systems: A Review. , 1992 .

[15]  Amanda Spink,et al.  The Effect of Specialized Multimedia Collections on Web Searching , 2004, J. Web Eng..

[16]  Iadh Ounis,et al.  Inferring Query Performance Using Pre-retrieval Predictors , 2004, SPIRE.

[17]  Stevan Rudinac,et al.  Leveraging visual concepts and query performance prediction for semantic-theme-based video retrieval , 2012, International Journal of Multimedia Information Retrieval.

[18]  Marcel Worring,et al.  Content-Based Image Retrieval at the End of the Early Years , 2000, IEEE Trans. Pattern Anal. Mach. Intell..

[19]  Ryen W. White,et al.  Modeling dwell time to predict click-level satisfaction , 2014, WSDM.

[20]  Yi Zhang,et al.  Query Difficulty Prediction for Contextual Image Retrieval , 2010, ECIR.

[21]  Ian H. Witten,et al.  The WEKA data mining software: an update , 2009, SKDD.

[22]  Aditi Sharan,et al.  Co-occurrence based predictors for estimating query difficulty , 2010, 2010 IEEE International Conference on Data Mining Workshops.

[23]  Amanda Spink,et al.  Patterns of query reformulation during Web searching , 2009, J. Assoc. Inf. Sci. Technol..

[24]  Arjen P. de Vries,et al.  Towards an automated query modification assistant , 2011, ArXiv.

[25]  Chong-Wah Ngo,et al.  Representations of Keypoint-Based Semantic Concept Detection: A Comprehensive Study , 2010, IEEE Transactions on Multimedia.

[26]  Ryen W. White,et al.  Predicting query performance using query, result, and user interaction features , 2010, RIAO.

[27]  Martha Larson,et al.  Intent and its discontents: the user at the wheel of the online video search engine , 2012, ACM Multimedia.

[28]  Tao Mei,et al.  When video search goes wrong: predicting query failure using search engine logs and visual search results , 2012, ACM Multimedia.

[29]  Efthimis N. Efthimiadis,et al.  Analyzing and evaluating query reformulation strategies in web search logs , 2009, CIKM.

[30]  Ricardo Baeza-Yates,et al.  Improved query difficulty prediction for the web , 2008, CIKM '08.

[31]  Enhong Chen,et al.  Context-aware ranking in web search , 2010, SIGIR '10.

[32]  W. Bruce Croft,et al.  Predicting query performance , 2002, SIGIR '02.

[33]  Hsiao-Tieh Pu,et al.  An analysis of failed queries for web image retrieval , 2008, J. Inf. Sci..

[34]  Ahmed Hassan Awadallah,et al.  Beyond DCG: user behavior as a predictor of a successful search , 2010, WSDM '10.

[35]  Daniel E. Rose,et al.  Understanding user goals in web search , 2004, WWW '04.

[36]  Meng Wang,et al.  Visual query suggestion , 2010, ACM Trans. Multim. Comput. Commun. Appl..

[37]  Qi Tian,et al.  Multimedia search reranking: A literature survey , 2014, CSUR.