This paper addresses a real world problem: the classification of text documents in the medical domain. There are a number of approaches to classifying text documents. Here, we use a partially supervised classification approach and argue that it is effective and computationally efficient for real-world problems. The approach uses a two-step strategy to cut down on the effort required to label each document for classification. Only a small set of positive documents are labeled initially, with others being labeled automatically as a result of the first step. The second step builds the actual text classifier. There are a number of methods that have been proposed for each step. A comprehensive evaluation of various combinations of methods is con...
This project consists of two parts. In the first part we apply techniques from the field of text min...
Extracting meaningful features from unstructured text is one of the most challenging tasks in medica...
Title from first page of PDF file (viewed July 28, 2011)Committee members: Rocio Guillen (chair), Ri...
This paper addresses a real world problem: the classification of text documents in the medical domai...
There are a number of approaches to classify text documents. Here, we use Partially Supervised Class...
Text classification in the medical domain is a real world problem with wide applicability. This pape...
Text classification in the medical domain is a real world problem with wide applicability. This pape...
Document Classification Abstract — Text classification in the medical domain is a real world problem...
Healthcare domain is characterized by a huge amount of data, contained in medical records, reports, ...
Healthcare domain is characterized by a huge amount of data, contained in medical records, reports, ...
Healthcare domain is characterized by a huge amount of data, contained in medical records, reports, ...
The classification of biomedical literature is engaged in a number of critical issues that physician...
(Automatic) document classification is generally defined as content-based assignment of one or more ...
Abstract. The clinical documents stored in a textual and unstructured manner represent a precious so...
(Automatic) document classification is generally defined as content-based assignment of one or more ...
This project consists of two parts. In the first part we apply techniques from the field of text min...
Extracting meaningful features from unstructured text is one of the most challenging tasks in medica...
Title from first page of PDF file (viewed July 28, 2011)Committee members: Rocio Guillen (chair), Ri...
This paper addresses a real world problem: the classification of text documents in the medical domai...
There are a number of approaches to classify text documents. Here, we use Partially Supervised Class...
Text classification in the medical domain is a real world problem with wide applicability. This pape...
Text classification in the medical domain is a real world problem with wide applicability. This pape...
Document Classification Abstract — Text classification in the medical domain is a real world problem...
Healthcare domain is characterized by a huge amount of data, contained in medical records, reports, ...
Healthcare domain is characterized by a huge amount of data, contained in medical records, reports, ...
Healthcare domain is characterized by a huge amount of data, contained in medical records, reports, ...
The classification of biomedical literature is engaged in a number of critical issues that physician...
(Automatic) document classification is generally defined as content-based assignment of one or more ...
Abstract. The clinical documents stored in a textual and unstructured manner represent a precious so...
(Automatic) document classification is generally defined as content-based assignment of one or more ...
This project consists of two parts. In the first part we apply techniques from the field of text min...
Extracting meaningful features from unstructured text is one of the most challenging tasks in medica...
Title from first page of PDF file (viewed July 28, 2011)Committee members: Rocio Guillen (chair), Ri...