Strategy based on machine learning to deal with untagged data sets using rough sets and/or information gain

 

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Detaylı Bibliyografya
Yazar: Calvo-Valverde, Luis Alexánder
Materyal Türü: artículo original
Durum:Versión publicada
Yayın Tarihi:2016
Diğer Bilgiler:As had been seen in the history of humanity, today data of various kinds and cheaply collected, for example sensors that record information every minute, web pages that store all the actions performed by the user on the page supermarkets that keep everything their customers buy and when to do it and many more examples like these. But these large databases have presented a challenge to their owners How to take advantage of them? How to turn data into information for decision making? This paper presents a strategy based on machine learning to deal with unlabeled datasets using rough sets and/or information gain. A method is proposed to cluster the data using k-means considering how much information provides an attribute (information gain); besides being able to select which attributes are really essential to classify new data and which are dispensable (rough sets), which is very beneficial as it allows decisions in less time. 
Ülke:Portal de Revistas TEC
Kurum:Instituto Tecnológico de Costa Rica
Repositorio:Portal de Revistas TEC
Dil:Español
OAI Identifier:oai:ojs.pkp.sfu.ca:article/2581
Online Erişim:https://revistas.tec.ac.cr/index.php/tec_marcha/article/view/2581
Anahtar Kelime:Aprendizaje de máquina
minería de datos
conjuntos aproximados
entropía
ganancia de información
reducción de atributos
Machine Learning
Data Mining
Rough Sets
Entropy
Information Gain
Feature Reduction