Adaptacao de algoritmos hibridos baseados em aprendizagem de maquinas para aplicacao em problemas na area de Saude com bases de dados desbalanceadas
Created by W.Langdon from
gp-bibliography.bib Revision:1.8129
- @PhdThesis{Santos:thesis,
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author = "Laercio Ives Santos",
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title = "Adaptacao de algoritmos hibridos baseados em
aprendizagem de maquinas para aplicacao em problemas na
area de Saude com bases de dados desbalanceadas",
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school = "PPGCS, Universidade Estadual de Montes Claros,
Unimontes",
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year = "2021",
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address = "Brazil",
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keywords = "genetic algorithms, genetic programming, Saude
publica, Aprendizado de Maquina, Inteligencia
Artificial, Prevencao de quedas em idosos, Acidente
vascular cerebral, Machine Learning, Healthcare,
Artificial Intelligence, Prevention of falls in the
elderly, Stroke",
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URL = "https://repositorio.unimontes.br/handle/1/599",
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URL = "https://repositorio.unimontes.br/jspui/bitstream/1/599/1/Santos%2c%20La%c3%a9rcio%20Ives_Adapta%c3%a7%c3%a3o%20de%20algoritmos%20h%c3%adbridos%20baseados%20em%20aprendizagem_2021.pdf",
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size = "59 pages",
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abstract = "Recently, several researchers have used models
developed from Machine Learning algorithms as
computational tools to help solve problems in medicine
and public health. These models can help specialists in
decision making regarding events related to healthcare,
improving the quality of care and enabling cost
reduction. However, these researchers also face some
challenges and three of them are addressed: class
imbalancing problem; interpretability of models; and
classification uncertainties. The first approach deals
with data imbalance and classification uncertainties
and is applied in monitoring and preventing falls in
the elderly. This approach uses a Swarm Intelligence
algorithm with membership windows formed from signals
captured by Radio Frequency Identification (RFID)
devices to monitor and detect the movement of elderly
participants out of bed. The second approach is used to
predict Stroke on a highly unbalanced dataset. In the
approach, an Artificial Immune System handles data
imbalance and a Decision Tree provides an
easy-to-understand classification model. Both
approaches have better results when compared to
state-of-the-art approaches, and this is an important
step towards the development of Machine Learning-based
technologies applied in health care.",
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notes = "In English and Portuguese
p43 Section 2.4 Decision trees generated by genetic
programming
Supervisor Mauricio Batista de Paula and Renato Sobral
Monteiro Junior",
- }
Genetic Programming entries for
Laercio Ives Santos
Citations