Redirigiendo al acceso original de articulo en 16 segundos...
Inicio  /  Future Internet  /  Vol: 2 Par: 4 (2010)  /  Artículo
ARTÍCULO
TITULO

Ontology-Based Information Behaviour to Improve Web Search

Silvia Calegari and Gabriella Pasi    

Resumen

Web Search Engines provide a huge number of answers in response to a user query, many of which are not relevant, whereas some of the most relevant ones may not be found. In the literature several approaches have been proposed in order to help a user to find the information relevant to his/her real needs on the Web. To achieve this goal the individual Information Behavior can been analyzed to ?keep? track of the user?s interests. Keeping information is a type of Information Behavior, and in several works researchers have referred to it as the study on what people do during a search on the Web. Generally, the user?s actions (e.g., how the user moves from one Web page to another, or her/his download of a document, etc.) are recorded in Web logs. This paper reports on research activities which aim to exploit the information extracted from Web logs (or query logs) in personalized user ontologies, with the objective to support the user in the process of discovering Web information relevant to her/his information needs. Personalized ontologies are used to improve the quality of Web search by applying two main techniques: query reformulation and re-ranking of query evaluation results. In this paper we analyze various methodologies presented in the literature aimed at using personalized ontologies, defined on the basis of the observation of Information Behaviour to help the user in finding relevant information.

 Artículos similares

       
 
Xiaolei Sun, Yu Zhang and Jing Chen    
The search and rescue (SAR) scenario is complex and uncertain where a robot needs to understand the scenario to make smart decisions. Aiming at the knowledge representation (KR) in the field of SAR, this paper builds an ontology model that enables a robo... ver más
Revista: Future Internet

 
Paul Sheridan, Mikael Onsjö, Claudia Becerra, Sergio Jimenez and George Dueñas    
Collaborative filtering based recommender systems have proven to be extremely successful in settings where user preference data on items is abundant. However, collaborative filtering algorithms are hindered by their weakness against the item cold-start p... ver más
Revista: Future Internet

 
Ahmed R. Sadik and Bodo Urban    
There is no doubt that the rapid development in robotics technology has dramatically changed the interaction model between the Industrial Robot (IR) and the worker. As the current robotic technology has afforded very reliable means to guarantee the physi... ver más
Revista: Future Internet

 
Silvia Calegari and Gabriella Pasi    
Revista: Future Internet