A Multinomial Logistic Regression Approach for Arrhythmia Detection
Cardiovascular diseases are the leading causes on mortality in the world. Consequently, tools and methods providing useful and applicable insights into their assessment play a crucial role in the prediction and managements of specific heart conditions. In this article, we introduce a method based on multi-class Logistic Regression as a classifier to provide a powerful and accurate insight into cardiac arrhythmia, which is one of the predictors of serious vascular diseases. As suggested by our evaluation, this provides a robust, scalable, and accurate system, which can successfully tackle the challenges posed by the utilisation of big data in the medical sector.
| Year of publication: |
2017
|
|---|---|
| Authors: | Behadada, Omar ; Trovati, Marcello ; Kontonatsios, Georgios ; Korkontzelos, Yannis |
| Published in: |
International Journal of Distributed Systems and Technologies (IJDST). - IGI Global, ISSN 1947-3540, ZDB-ID 2703236-X. - Vol. 8.2017, 4 (01.10.), p. 17-33
|
| Publisher: |
IGI Global |
| Subject: | Big Data | Knowledge Extraction | Multinomial Logistic Regression | Text Mining |
Saved in:
Saved in favorites
Similar items by subject
-
Speer, Andrew B., (2021)
-
When big data made the headlines : mining the text of big data coverage in the news media
Haider, Murtaza, (2021)
-
Yıldız, Birol, (2023)
- More ...