This paper describes a novel approach to re-ranking search engine result pages (SERP): Its fundamental principle is to re-rank results to a given query, based on exploiting evidence gathered from past similar search queries. Our approach is inspired by collaborative filtering, with the main challenge being to find the set of similar queries, while also taking efficiency into account. In particular, our approach aims to address this challenge by proposing a combination of a similarity graph and a locality sensitive hashing scheme. We construct a set of features from our similarity graph and build a prediction model using the Hoeffding decision tree algorithm. We have evaluated the effectiveness of our model in terms of P@1, MAP@10, and nDCG@...
Journal articleFor a given query raised by a specific user, the Query Suggestion technique aims to r...
In this work we propose a method that retrieves a list of related queries given an initial input que...
Abstract. In order to make search results better fit users ’ current search interest, this paper pro...
In this paper, we propose a re-ranking method which employs semantic similarity to improve the quali...
We present a framework for discovering sets of web queries having similar latent needs, called searc...
Abstract. Even though search engines cover billions of pages and per-form quite well, it is still di...
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...
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...
We present a framework for discovering sets of web queries having similar latent needs, called searc...
Abstract. Search engines are the primary means by which people locate information on the Web. Unfort...
This work addresses two common problems in search, frequently occurring with underspecified user que...
Web search has become a part of everyday life for hundreds of millions of users around the world. Ho...
In this paper, we propose a novel ranking scheme named Affinity Ranking (AR) to re-rank search resul...
Journal articleFor a given query raised by a specific user, the Query Suggestion technique aims to r...
In this work we propose a method that retrieves a list of related queries given an initial input que...
Abstract. In order to make search results better fit users ’ current search interest, this paper pro...
In this paper, we propose a re-ranking method which employs semantic similarity to improve the quali...
We present a framework for discovering sets of web queries having similar latent needs, called searc...
Abstract. Even though search engines cover billions of pages and per-form quite well, it is still di...
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...
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...
We present a framework for discovering sets of web queries having similar latent needs, called searc...
Abstract. Search engines are the primary means by which people locate information on the Web. Unfort...
This work addresses two common problems in search, frequently occurring with underspecified user que...
Web search has become a part of everyday life for hundreds of millions of users around the world. Ho...
In this paper, we propose a novel ranking scheme named Affinity Ranking (AR) to re-rank search resul...
Journal articleFor a given query raised by a specific user, the Query Suggestion technique aims to r...
In this work we propose a method that retrieves a list of related queries given an initial input que...
Abstract. In order to make search results better fit users ’ current search interest, this paper pro...