seMLP: Self-Evolving Multi-Layer Perceptron in Stock Trading Decision Making
Permanent lenke
https://hdl.handle.net/10037/24181Dato
2021-02-24Type
Journal articleTidsskriftartikkel
Peer reviewed
Sammendrag
There is a growing interest in automatic crafting of neural network architectures as opposed to expert tuning to fnd the best
architecture. On the other hand, the problem of stock trading is considered one of the most dynamic systems that heavily
depends on complex trends of the individual company. This paper proposes a novel self-evolving neural network system
called self-evolving Multi-Layer Perceptron (seMLP) which can abstract the data and produce an optimum neural network
architecture without expert tuning. seMLP incorporates the human cognitive ability of concept abstraction into the architecture of the neural network. Genetic algorithm (GA) is used to determine the best neural network architecture that is capable
of knowledge abstraction of the data. After determining the architecture of the neural network with the minimum width,
seMLP prunes the network to remove the redundant neurons in the network, thus decreasing the density of the network and
achieving conciseness. seMLP is evaluated on three stock market data sets. The optimized models obtained from seMLP
are compared and benchmarked against state-of-the-art methods. The results show that seMLP can automatically choose
best performing models.
Forlag
SpringerSitering
Jun, Sekh AA, Quek C, Prasad DK. seMLP: Self-Evolving Multi-Layer Perceptron in Stock Trading Decision Making. SN Computer Science. 2021;2Metadata
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