We present a framework for discovering sets of web queries having similar latent needs, called search tasks, from user queries stored in a search engine log. The framework is made of two main modules: Query Similarity Learning (QSL) and Graph-based Query Clustering (GQC). The former is devoted to learning a query similarity function from a ground truth of manually-labeled search tasks. The latter represents each user search log as a graph whose nodes are queries, and uses the learned similarity function to weight edges between query pairs. Finally, search tasks are detected by clustering those queries in the graph which are connected by the strongest links, in fact by detecting the strongest connected components of the graph. To discriminat...
In this paper we suggest a method that, given a query presented to a search engine, proposes a list ...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
IEEEIn this digital age, there is an abundance of online educational materials in public and proprie...
We present a framework for discovering sets of web queries having similar latent needs, called searc...
We present a framework for discovering sets of web queries having similar latent needs, called searc...
Although Web search engines still answer user queries with lists of ten blue links to webpages, peop...
International audienceUsers fulfill their information needs by expressing them using search queries ...
A new method for discovering high-quality related Web queries was presented. First some statistical ...
Journal articleFor a given query raised by a specific user, the Query Suggestion technique aims to r...
Abstract—Clustering of search engine queries has attracted significant attention in recent years. Ma...
Web search engines answer user needs on a query-by-query fashion, namely they retrieve the set of th...
In this work we propose a method that retrieves a list of related queries given an initial input que...
This paper describes a novel approach to re-ranking search engine result pages (SERP): Its fundament...
Abstract. In this paper we propose a method that, given a query submitted to a search engine, sugges...
Clustering is important task for any recommendation system. Clustering method suggested by many rese...
In this paper we suggest a method that, given a query presented to a search engine, proposes a list ...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
IEEEIn this digital age, there is an abundance of online educational materials in public and proprie...
We present a framework for discovering sets of web queries having similar latent needs, called searc...
We present a framework for discovering sets of web queries having similar latent needs, called searc...
Although Web search engines still answer user queries with lists of ten blue links to webpages, peop...
International audienceUsers fulfill their information needs by expressing them using search queries ...
A new method for discovering high-quality related Web queries was presented. First some statistical ...
Journal articleFor a given query raised by a specific user, the Query Suggestion technique aims to r...
Abstract—Clustering of search engine queries has attracted significant attention in recent years. Ma...
Web search engines answer user needs on a query-by-query fashion, namely they retrieve the set of th...
In this work we propose a method that retrieves a list of related queries given an initial input que...
This paper describes a novel approach to re-ranking search engine result pages (SERP): Its fundament...
Abstract. In this paper we propose a method that, given a query submitted to a search engine, sugges...
Clustering is important task for any recommendation system. Clustering method suggested by many rese...
In this paper we suggest a method that, given a query presented to a search engine, proposes a list ...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
IEEEIn this digital age, there is an abundance of online educational materials in public and proprie...