This paper presents an extension of prior work by Michael D. Lee on psychologically plausible text categorisation. Our approach utilises Lee s model as a pre-processing filter to generate a dense representation for a given text document (a document profile) and passes that on to an arbitrary standard propositional learning algorithm. Similarly to standard feature selection for text classification, the dimensionality of instances is drastically reduced this way, which in turn greatly lowers the computational load for the subsequent learning algorithm. The filter itself is very fast as well, as it basically is just an interesting variant of Naive Bayes. We present different variations of the filter and conduct an evaluation against the Reuter...
In order to gain information from huge amount of text more efficiently and accurately, readers may u...
This paper proposes an efficient algorithm for the generation of new features that enrich the known ...
Modern information society is facing the challenge of handling massive volume of online documents, n...
This paper presents an extension of prior work by Michael D. Lee on psychologically plausible text c...
This paper presents an extension of prior work by Michael D. Lee on psychologically plausible text c...
We present an approach to text categorization using machine learning techniques. The approach is dev...
This paper proposes a new approach for text categorization, based on a feature projection technique....
A wide variety of text analysis applications are based on statistical machine learning techniques. T...
This paper describes automatic document categorization based on large text hierarchy. We handle the...
This paper examines the use of inductive learning to categorize natural language documents into pred...
Text Categorization is the task of assigning predefined labels to textual documents. Current researc...
Text categorization is the task of discovering the category or class text documents belongs to, or i...
This dissertation introduces a new theoretical model for text classification systems, including syst...
This paper proposes a new approach for text categorization, based on a feature projection technique....
Text categorization is an important application of machine learning to the field of document informa...
In order to gain information from huge amount of text more efficiently and accurately, readers may u...
This paper proposes an efficient algorithm for the generation of new features that enrich the known ...
Modern information society is facing the challenge of handling massive volume of online documents, n...
This paper presents an extension of prior work by Michael D. Lee on psychologically plausible text c...
This paper presents an extension of prior work by Michael D. Lee on psychologically plausible text c...
We present an approach to text categorization using machine learning techniques. The approach is dev...
This paper proposes a new approach for text categorization, based on a feature projection technique....
A wide variety of text analysis applications are based on statistical machine learning techniques. T...
This paper describes automatic document categorization based on large text hierarchy. We handle the...
This paper examines the use of inductive learning to categorize natural language documents into pred...
Text Categorization is the task of assigning predefined labels to textual documents. Current researc...
Text categorization is the task of discovering the category or class text documents belongs to, or i...
This dissertation introduces a new theoretical model for text classification systems, including syst...
This paper proposes a new approach for text categorization, based on a feature projection technique....
Text categorization is an important application of machine learning to the field of document informa...
In order to gain information from huge amount of text more efficiently and accurately, readers may u...
This paper proposes an efficient algorithm for the generation of new features that enrich the known ...
Modern information society is facing the challenge of handling massive volume of online documents, n...