Many but not all popular queries are related to ongoing or recent events. In this paper, we identify 20 features including both contextual and temporal features from a small set of search results of a query and predict its event-relatedness. Search results from news and blog search engines are evaluated. Our analysis shows that the number of named entities in search results and their appearances in Wikipedia are among the most discriminating features for query event-relatedness prediction. Our study also shows that contextual features are more effective than temporal features. Evaluated with four classifiers (i.e., Support Vector Machine, Naive Bayes, Multinomial Logistic Regression, and Bayesian Logistic Regression) on two datasets, our e...
Current prediction techniques, which are generally designed for content-based queries and are typica...
Traditional search focuses on keyword matching and document ranking, thus users will only get a over...
Web search engines are well known for aggregating news vertical content into their result rankings i...
Purpose: Existing researches of predicting queries with news intents have tried to extract the class...
We investigate a representative case of sudden information need change of Web users. By analyzing se...
We estimate that nearly one third of news articles contain references to future events. While this i...
The novel task we aim at in this work is to predict top terms that will prominently appear in the fu...
International audienceIn this paper, we present an efficient and accurate method to represent events...
In this paper, we study a new problem of mining causal relation of queries in search engine query lo...
International audienceRecently, social bookmarking systems have received surging attention in academ...
In this paper, we study a new problem of mining causal relation of queries in search engine query lo...
The analysis of query logs from blog search engines show that news-related queries occupy a signific...
We investigate the idea of finding semantically related search engine queries based on their tempora...
Time has strong influence on web search. The temporal intent of the searcher adds an important dimen...
Previous efforts on event detection from the web have fo-cused primarily on web content and structur...
Current prediction techniques, which are generally designed for content-based queries and are typica...
Traditional search focuses on keyword matching and document ranking, thus users will only get a over...
Web search engines are well known for aggregating news vertical content into their result rankings i...
Purpose: Existing researches of predicting queries with news intents have tried to extract the class...
We investigate a representative case of sudden information need change of Web users. By analyzing se...
We estimate that nearly one third of news articles contain references to future events. While this i...
The novel task we aim at in this work is to predict top terms that will prominently appear in the fu...
International audienceIn this paper, we present an efficient and accurate method to represent events...
In this paper, we study a new problem of mining causal relation of queries in search engine query lo...
International audienceRecently, social bookmarking systems have received surging attention in academ...
In this paper, we study a new problem of mining causal relation of queries in search engine query lo...
The analysis of query logs from blog search engines show that news-related queries occupy a signific...
We investigate the idea of finding semantically related search engine queries based on their tempora...
Time has strong influence on web search. The temporal intent of the searcher adds an important dimen...
Previous efforts on event detection from the web have fo-cused primarily on web content and structur...
Current prediction techniques, which are generally designed for content-based queries and are typica...
Traditional search focuses on keyword matching and document ranking, thus users will only get a over...
Web search engines are well known for aggregating news vertical content into their result rankings i...