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Banca de QUALIFICAÇÃO: CARINE AZEVEDO DANTAS

Uma banca de QUALIFICAÇÃO de MESTRADO foi cadastrada pelo programa.
DISCENTE : CARINE AZEVEDO DANTAS
DATA : 07/10/2016
HORA: 08:30
LOCAL: Auditório do CCET
TÍTULO:

An Unsupervised-based Dynamic Feature Selection for Classication tasks


PALAVRAS-CHAVES:

Feature Selection, Classication, Clustering Algorithms


PÁGINAS: 53
GRANDE ÁREA: Ciências Exatas e da Terra
ÁREA: Ciência da Computação
SUBÁREA: Metodologia e Técnicas da Computação
ESPECIALIDADE: Sistemas de Informação
RESUMO:

With the increase of the size on the data sets used in classication systems, selecting
the most relevant attribute has become one of the main tasks in pre-processing phase.
In a data set, it is expected that all attributes are relevant. However, this is not always
veried. Selecting a set of attributes of more relevance aids decreasing the size of the data
without aecting the performance, or even increase it, this way achieving better results
when used in the data classication. The existing characteristics selection methods elect
the best attributes in the database as a whole, without considering the particularities of
each instance. The Dynamic Features Selection, proposed method, selects the relevant
attributes for each instance individually, using clustering algorithms to group them accordingly
with their similarities. This work performs an experimental analysis of dierent
clustering techniques applied to this new feature selection approach. The clustering algorithms
k-Means, DBSCAN and Expectation-Maximization (EM) were used as selection
method. Analyzes are performed to verify which of these clustering algorithms best ts
to Dynamic Feature Selection. Thus, the contribution of this study is to present a new
approach for attribute selection, the Dynamic Feature Selection, and determine which
of the clustering methods performs better selection and get a better performance in the
construction of more accurate classiers.


MEMBROS DA BANCA:
Presidente - 1350250 - ANNE MAGALY DE PAULA CANUTO
Interno - 2177445 - BRUNO MOTTA DE CARVALHO
Externo ao Programa - 1669545 - DANIEL SABINO AMORIM DE ARAUJO
Externo ao Programa - 4351681 - JOAO CARLOS XAVIER JUNIOR
Notícia cadastrada em: 07/10/2016 15:29
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