Sentiment Analysis in the Bio-Medical Domain [electronic resource] : Techniques, Tools, and Applications için kapak resmi
Sentiment Analysis in the Bio-Medical Domain [electronic resource] : Techniques, Tools, and Applications
Başlık:
Sentiment Analysis in the Bio-Medical Domain [electronic resource] : Techniques, Tools, and Applications
ISBN:
9783319684680
Fiziksel Açıklamalar:
XXIV, 134 p. 45 illus., 33 illus. in color. online resource.
Dizi Bildirim:
Socio-Affective Computing, 7
Genel Not:
The abundance of text available in social media and health-related forums and blogs have recently attracted the interest of the public health community to use these sources for opinion mining. This book presents a lexicon-based approach to sentiment analysis in the bio-medical domain, i.e., WordNet for Medical Events (WME). This book gives an insight in handling unstructured textual data and converting it to structured machine-processable data in the bio-medical domain. The readers will discover the following key novelties: 1) development of a bio-medical lexicon: WME expansion and WME enrichment with additional features.; 2) ensemble of machine learning and computational creativity; 3) development of microtext analysis techniques to overcome the inconsistency in social communication. It will be of interest to researchers in the fields of socially-intelligent human-machine interaction and biomedical text mining.
Özet:
The abundance of text available in social media and health-related forums and blogs have recently attracted the interest of the public health community to use these sources for opinion mining. This book presents a lexicon-based approach to sentiment analysis in the bio-medical domain, i.e., WordNet for Medical Events (WME). This book gives an insight in handling unstructured textual data and converting it to structured machine-processable data in the bio-medical domain. The readers will discover the following key novelties: 1) development of a bio-medical lexicon: WME expansion and WME enrichment with additional features.; 2) ensemble of machine learning and computational creativity; 3) development of microtext analysis techniques to overcome the inconsistency in social communication. It will be of interest to researchers in the fields of socially-intelligent human-machine interaction and biomedical text mining.