In this paper, we propose a new classification method that addresses classification in multiple categories of textual documents. We call it Matrix Regression (MR) due to its resemblance to regression in a high dimensional space. Experiences on a medical corpus of hospital records to be classified by ICD (International Classification of Diseases) code demonstrate the validity of the MR approach. We compared MR with three frequently used algorithms in text categorization that are k-Nearest Neighbors, Centroide and Support Vector Machine. The experimental results show that our method outperforms them in both precision and time of classification. 1
Description of a patient's injuries is recorded in narrative text form by hospital emergency departm...
In the present article we introduce and validate an approach for single-label multi-class document c...
Text categorization (also known as text classification) is the task of automatically assigning docum...
The master's thesis deals with automatic classifi cation of text document. It explains basic terms a...
This paper addresses a real world problem: the classification of text documents in the medical domai...
This paper addresses a real world problem: the classification of text documents in the medical domai...
Modern information society is facing the challenge of handling massive volume of online documents, n...
Because of the explosion of digital and online text information, automatic organization of documents...
Recent advancements in machine learning-based multi-label medical text classification techniques hav...
Recent advancements in machine learning-based multi-label medical text classification techniques hav...
There are a number of approaches to classify text documents. Here, we use Partially Supervised Class...
Recent advancements in machine learning-based multi-label medical text classification techniques hav...
We report on the design and evaluation of an original system to help assignment ICD (International C...
We report on the design and evaluation of an original system to help assignment ICD (International C...
Abstract. A number of linear classification methods such as the linear least squares fit (LLSF), log...
Description of a patient's injuries is recorded in narrative text form by hospital emergency departm...
In the present article we introduce and validate an approach for single-label multi-class document c...
Text categorization (also known as text classification) is the task of automatically assigning docum...
The master's thesis deals with automatic classifi cation of text document. It explains basic terms a...
This paper addresses a real world problem: the classification of text documents in the medical domai...
This paper addresses a real world problem: the classification of text documents in the medical domai...
Modern information society is facing the challenge of handling massive volume of online documents, n...
Because of the explosion of digital and online text information, automatic organization of documents...
Recent advancements in machine learning-based multi-label medical text classification techniques hav...
Recent advancements in machine learning-based multi-label medical text classification techniques hav...
There are a number of approaches to classify text documents. Here, we use Partially Supervised Class...
Recent advancements in machine learning-based multi-label medical text classification techniques hav...
We report on the design and evaluation of an original system to help assignment ICD (International C...
We report on the design and evaluation of an original system to help assignment ICD (International C...
Abstract. A number of linear classification methods such as the linear least squares fit (LLSF), log...
Description of a patient's injuries is recorded in narrative text form by hospital emergency departm...
In the present article we introduce and validate an approach for single-label multi-class document c...
Text categorization (also known as text classification) is the task of automatically assigning docum...