Lexical relationships allow a textual CBR system to establish case similarity beyond the exact correspondence of words. In this paper, we explore statistical models to insert associations between problems and solutions in the retrieval process. We study two types of models: word co-occurrences and translation alignments. These approaches offer the potential to capture relationships arising between a problem description and its corresponding textual solution. We present some experimental results and evaluate these with respect to a tf*idf approach
Many memory models assume that the semantic and physical features of words can be represented by col...
We present an automated system that computes multi-cue associations and generates associated-word su...
Abstract. We propose a method to mine novel, document-specific as-sociations between terms in a coll...
Previous research has shown that using term associations could improve the effectiveness of informat...
Case-Based Reasoning (CBR) is a widely researched technology for developing knowledge-based systems ...
The aim of this paper was to perform an extension of (CBRAR) strategy, Case-Based Reasoning using As...
Most of the recent literature on complexity measures in textual case-based reasoning examined alignm...
Textual CBR systems solve problems by reusing experiences that are in textual form. Knowledge-rich c...
A recurring question in information retrieval is whether term associations can be properly integrate...
For UFRGS’s participation on the TEL task at CLEF2008, our aim was to assess the validity of using a...
Concepts are often related to short sequences of words that occur frequently together across the tex...
Abstract. In this paper, we propose a reuse approach for investigation reports. Air investigation re...
Abstract Many existing information retrieval models do not explicitly take into account information ...
In cross-language information retrieval it is often important to align words that are similar in mea...
Most approaches to information retrieval have focused primarily on word co-occurrence, or what is ty...
Many memory models assume that the semantic and physical features of words can be represented by col...
We present an automated system that computes multi-cue associations and generates associated-word su...
Abstract. We propose a method to mine novel, document-specific as-sociations between terms in a coll...
Previous research has shown that using term associations could improve the effectiveness of informat...
Case-Based Reasoning (CBR) is a widely researched technology for developing knowledge-based systems ...
The aim of this paper was to perform an extension of (CBRAR) strategy, Case-Based Reasoning using As...
Most of the recent literature on complexity measures in textual case-based reasoning examined alignm...
Textual CBR systems solve problems by reusing experiences that are in textual form. Knowledge-rich c...
A recurring question in information retrieval is whether term associations can be properly integrate...
For UFRGS’s participation on the TEL task at CLEF2008, our aim was to assess the validity of using a...
Concepts are often related to short sequences of words that occur frequently together across the tex...
Abstract. In this paper, we propose a reuse approach for investigation reports. Air investigation re...
Abstract Many existing information retrieval models do not explicitly take into account information ...
In cross-language information retrieval it is often important to align words that are similar in mea...
Most approaches to information retrieval have focused primarily on word co-occurrence, or what is ty...
Many memory models assume that the semantic and physical features of words can be represented by col...
We present an automated system that computes multi-cue associations and generates associated-word su...
Abstract. We propose a method to mine novel, document-specific as-sociations between terms in a coll...