Caracterizaci\'on Formal y An\'alisis Emp\'irico de Mecanismos Incrementales de B\'usqueda basados en Contexto
Carlos M. Lorenzetti

TL;DR
This paper introduces a semisupervised information retrieval method that enhances web search relevance by learning thematic terms and evaluating search mechanisms with a novel framework, improving user-context matching.
Contribution
It presents a new semisupervised technique for learning thematic descriptors and a comprehensive evaluation framework with novel metrics for search mechanism assessment.
Findings
Proposed methods significantly outperform previous techniques.
Evaluation framework includes new metrics for semantic relationship assessment.
Algorithms generate high-quality, context-relevant queries.
Abstract
The Web has become a potentially infinite information resource, turning into an essential tool for many daily activities. This resulted in an increase in the amount of information available in users' contexts that is not taken into account by current information retrieval systems. This thesis proposes a semisupervised information retrieval technique that helps users to recover context relevant information. The objective of the proposed technique is to reduce the vocabulary gap existing between the knowledge a user has about a specific topic and the relevant documents available in the Web. This thesis presents a method for learning novel terms associated with a thematic context. This is achieved by identifying those terms that are good descriptors and good discriminators of the user's current thematic context. In order to evaluate the proposed method, a theoretical framework for the…
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Taxonomy
TopicsInnovations in Concrete and Construction Materials
