Document Classification Abstract — Text classification in the medical domain is a real world problem with wide applicability. This paper investigates extensively the effect of text representation approaches on the performance of medical document classification. To accomplish this objective, we evaluated seven different approaches to represent real word medical documents. The text representation approaches investigated in this paper are basic word representation (bag-of-words), key-phrases, collocation extracted from preprocessed text, collocation extracted from postprocessed text, single-word-nouns, combination of singleword-noun and adjectives and combination of single-wordnoun, adjective and verbs. A set of experiments was conducted to ma...
Text representations ar one of the main inputs to various Natural Language Processing (NLP) methods....
A significant part of medical data remains stored as unstructured texts. Semantic search requires in...
In this paper we perform a comparative analysis of three models for a feature representation of text...
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...
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...
Text classification has become a standard component of automated systematic literature review (SLR) ...
Abstract. The clinical documents stored in a textual and unstructured manner represent a precious so...
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, ...
ABSTRACTIn this paper, medical objects are used as featuresto classify clinical records. Medical obj...
AbstractThis research proposes a novel lexical approach to text categorization in the bio-medical do...
Extracting meaningful features from unstructured text is one of the most challenging tasks in medica...
Text representations ar one of the main inputs to various Natural Language Processing (NLP) methods....
A significant part of medical data remains stored as unstructured texts. Semantic search requires in...
In this paper we perform a comparative analysis of three models for a feature representation of text...
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...
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...
Text classification has become a standard component of automated systematic literature review (SLR) ...
Abstract. The clinical documents stored in a textual and unstructured manner represent a precious so...
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, ...
ABSTRACTIn this paper, medical objects are used as featuresto classify clinical records. Medical obj...
AbstractThis research proposes a novel lexical approach to text categorization in the bio-medical do...
Extracting meaningful features from unstructured text is one of the most challenging tasks in medica...
Text representations ar one of the main inputs to various Natural Language Processing (NLP) methods....
A significant part of medical data remains stored as unstructured texts. Semantic search requires in...
In this paper we perform a comparative analysis of three models for a feature representation of text...