This paper presents an approach for performing knowledge discovery in texts through qualitative and quantitative analyses of high‐level textual characteristics. Instead of applying mining techniques on attribute values, terms or keywords extracted from texts, the discovery process works over conceptss identified in texts. Concepts represent real world events and objects, and they help the user to understand ideas, trends, thoughts, opinions and intentions present in texts. The approach combines a quasi‐automatic categorisation task (for qualitative analysis) with a mining process (for quantitative analysis). The goal is to find new and useful knowledge inside a textual collection through the use of mining techniques applied over concepts (representing text content). In this paper, an application of the approach to medical records of a psychiatric hospital is presented. The approach helps physicians to extract knowledge about patients and diseases. This knowledge may be used for epidemiological studies, for training professionals and it may be also used to support physicians to diagnose and evaluate diseases.
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1 October 2001
Conceptual Paper|
October 01 2001
Knowledge discovery in textual documentation: qualitative and quantitative analyses Available to Purchase
Stanley Loh;
Stanley Loh
Institute of Computer Science, Federal University of Rio Grande do Sul, Porto Alegre, Brazil
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José Palazzo M. de Oliveira;
José Palazzo M. de Oliveira
Institute of Computer Science, Federal University of Rio Grande do Sul, Porto Alegre, Brazil
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Fábio Leite Gastal
Fábio Leite Gastal
Olivé Leite Hospital, Pelotas, Brazil
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Publisher: Emerald Publishing
Online ISSN: 1758-7379
Print ISSN: 0022-0418
© MCB UP Limited
2001
Journal of Documentation (2001) 57 (5): 577–590.
Citation
Loh S, Palazzo M. de Oliveira J, Leite Gastal F (2001), "Knowledge discovery in textual documentation: qualitative and quantitative analyses". Journal of Documentation, Vol. 57 No. 5 pp. 577–590, doi: https://doi.org/10.1108/EUM0000000007094
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