We describe a method for probabilistic document indexing using relevance feedback data that has been collected from a set of queries. Our approach is based on three new concepts: (1) Abstraction from specific terms and documents, which overcomes the restriction of limited relevance information for parameter estimation. (2) Flexibility of the representation, which allows the integration of new text analysis and knowledge-based methods in our approach as well as the consideration of document structures or different types of terms. (3) Probabilistic learning or classification methods for the estimation of the indexing weights making better use of the available relevance information, Our approach can be applied under restrictions that hold for ...
In this paper we propose a new method for data organisation in a (multimedia) collection. We use pro...
This paper presents a new probabilistic model of information retrieval. The most important modeling ...
This paper presents a development and an implementation of probabilistic methods of information retr...
This study was supported in part by the National Science Foundation under grant IRI 87-02735SIGLEAva...
A central idea of Language Models is that documents (and perhaps queries) are random variables, gene...
This paper proposes a novel statistical approach to intelligent document re-trieval. It seeks to off...
We apply a well-known Bayesian probabilistic model to textual information retrieval: the classificat...
The paper provides an introduction to and survey of probabilistic approaches to modelling Informatio...
This research project consists of a system, which attempts to combine two methods of indexing docume...
Document fields, such as the title or the headings of a document, offer a way to consider the struct...
In this paper, an introduction over probabilistic model for information retrieval system is given. F...
Having focused in earlier chapters on the general structure of the Web, in this chapter we will disc...
Results from research in information retrieval suggest that significant improvements in retrieval ef...
Results from research in information retrieval suggest that significant improvements in retrieval ef...
In this paper we describe and evaluate a learning model for information ltering which is an adaptati...
In this paper we propose a new method for data organisation in a (multimedia) collection. We use pro...
This paper presents a new probabilistic model of information retrieval. The most important modeling ...
This paper presents a development and an implementation of probabilistic methods of information retr...
This study was supported in part by the National Science Foundation under grant IRI 87-02735SIGLEAva...
A central idea of Language Models is that documents (and perhaps queries) are random variables, gene...
This paper proposes a novel statistical approach to intelligent document re-trieval. It seeks to off...
We apply a well-known Bayesian probabilistic model to textual information retrieval: the classificat...
The paper provides an introduction to and survey of probabilistic approaches to modelling Informatio...
This research project consists of a system, which attempts to combine two methods of indexing docume...
Document fields, such as the title or the headings of a document, offer a way to consider the struct...
In this paper, an introduction over probabilistic model for information retrieval system is given. F...
Having focused in earlier chapters on the general structure of the Web, in this chapter we will disc...
Results from research in information retrieval suggest that significant improvements in retrieval ef...
Results from research in information retrieval suggest that significant improvements in retrieval ef...
In this paper we describe and evaluate a learning model for information ltering which is an adaptati...
In this paper we propose a new method for data organisation in a (multimedia) collection. We use pro...
This paper presents a new probabilistic model of information retrieval. The most important modeling ...
This paper presents a development and an implementation of probabilistic methods of information retr...