In this paper we explore the benefits of latent variable modelling of clickthrough data in the domain of image retrieval. Clicks in image search logs are regarded as implicit relevance judgements that express both user intent and important relations between selected documents. We posit that clickthrough data contains hidden topics and can be used to infer a lower dimensional latent space that can be subsequently employed to improve various aspects of the retrieval system. We use a subset of a clickthrough corpus from the image search portal of a news agency to evaluate several popular latent variable models in terms of their ability to model topics underlying queries. We demonstrate that latent variable modelling reveals underlying structur...
textabstractCWI's experiments investigate the usefulness of clickthrough data for improving the dive...
Journal articleFor a given query raised by a specific user, the Query Suggestion technique aims to r...
The performance of search personalisation largely depends on how to build user profiles effectively....
In this paper we explore the benefits of latent variable modelling of clickthrough data in the domai...
The interactions of users with search engines can be seen as implicit relevance feedback by the user...
We evaluate the use of clickthrough information as implicit relevance feedback in sessions. We emplo...
The semantic gap between low-level visual features and high-level semantics has been investigated fo...
The semantic gap between low-level visual features and high-level semantics has been investigated fo...
This paper presents an approach to automatically optimiz-ing the retrieval quality of search engines...
In this thesis, we aim at improving the search result quality by utilizing the search intelligence (...
International audienceThis paper presents a novel document relevance model based on clickthrough inf...
The present disclosure describes computer-implemented systems and methods for improving image-based ...
Search sessions consist of a person presenting a query to a search engine, followed by that person e...
This paper presents a novel Content-Based Video Retrieval approach in order to cope with the semanti...
Search context is a crucial factor that helps to understand a user’s information need in ad-hoc Web ...
textabstractCWI's experiments investigate the usefulness of clickthrough data for improving the dive...
Journal articleFor a given query raised by a specific user, the Query Suggestion technique aims to r...
The performance of search personalisation largely depends on how to build user profiles effectively....
In this paper we explore the benefits of latent variable modelling of clickthrough data in the domai...
The interactions of users with search engines can be seen as implicit relevance feedback by the user...
We evaluate the use of clickthrough information as implicit relevance feedback in sessions. We emplo...
The semantic gap between low-level visual features and high-level semantics has been investigated fo...
The semantic gap between low-level visual features and high-level semantics has been investigated fo...
This paper presents an approach to automatically optimiz-ing the retrieval quality of search engines...
In this thesis, we aim at improving the search result quality by utilizing the search intelligence (...
International audienceThis paper presents a novel document relevance model based on clickthrough inf...
The present disclosure describes computer-implemented systems and methods for improving image-based ...
Search sessions consist of a person presenting a query to a search engine, followed by that person e...
This paper presents a novel Content-Based Video Retrieval approach in order to cope with the semanti...
Search context is a crucial factor that helps to understand a user’s information need in ad-hoc Web ...
textabstractCWI's experiments investigate the usefulness of clickthrough data for improving the dive...
Journal articleFor a given query raised by a specific user, the Query Suggestion technique aims to r...
The performance of search personalisation largely depends on how to build user profiles effectively....