In this paper, we study a new problem of mining causal relation of queries in search engine query logs. Causal relation between two queries means event on one query is the causation of some event on the other. We first detect events in query logs by efficient statistical frequency threshold. Then the causal relation of queries is mined by the geometric features of the events. Finally the Granger Causality Test (GCT) is utilized to further re-rank the causal relation of queries according to their GCT coefficients. In addition, we develop a 2-dimensional visualization tool to display the detected relationship of events in a more intuitive way. The experimental results on the MSN search engine query logs demonstrate that our approach can accur...
Multiple metrics have been developed to detect causality relations between data describing the eleme...
Abstract. Detecting events from web resources is a challenging task, attracting many attentions in r...
One aspect of ontology learning methods is the discovery of relations in textual data. One kind of s...
In this paper, we study a new problem of mining causal relation of queries in search engine query lo...
We investigate the idea of finding semantically related search engine queries based on their tempora...
In this work we propose a method that retrieves a list of related queries given an initial input que...
This study represents one attempt to make use of relations expressed in text to improve information ...
In this paper we study a large query log of more than twenty million queries with the goal of extrac...
A causal rule between two variables, X! Y, captures the relationship that the presence of X causes t...
We present several methods for mining knowledge from the query logs of the MSN search engine. Using ...
Previous efforts on event detection from the web have fo-cused primarily on web content and structur...
This paper presents a simple and very effective collaborative approach to generate semantically rela...
Many but not all popular queries are related to ongoing or recent events. In this paper, we identify...
A notably challenging problem related to event processing is recognizing the relations holding betwe...
In this thesis we propose a novel approach were 3 days of raw Yahoo! News search query logs are anal...
Multiple metrics have been developed to detect causality relations between data describing the eleme...
Abstract. Detecting events from web resources is a challenging task, attracting many attentions in r...
One aspect of ontology learning methods is the discovery of relations in textual data. One kind of s...
In this paper, we study a new problem of mining causal relation of queries in search engine query lo...
We investigate the idea of finding semantically related search engine queries based on their tempora...
In this work we propose a method that retrieves a list of related queries given an initial input que...
This study represents one attempt to make use of relations expressed in text to improve information ...
In this paper we study a large query log of more than twenty million queries with the goal of extrac...
A causal rule between two variables, X! Y, captures the relationship that the presence of X causes t...
We present several methods for mining knowledge from the query logs of the MSN search engine. Using ...
Previous efforts on event detection from the web have fo-cused primarily on web content and structur...
This paper presents a simple and very effective collaborative approach to generate semantically rela...
Many but not all popular queries are related to ongoing or recent events. In this paper, we identify...
A notably challenging problem related to event processing is recognizing the relations holding betwe...
In this thesis we propose a novel approach were 3 days of raw Yahoo! News search query logs are anal...
Multiple metrics have been developed to detect causality relations between data describing the eleme...
Abstract. Detecting events from web resources is a challenging task, attracting many attentions in r...
One aspect of ontology learning methods is the discovery of relations in textual data. One kind of s...