2017
DOI: 10.1371/journal.pone.0173516
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An improved chaotic fruit fly optimization based on a mutation strategy for simultaneous feature selection and parameter optimization for SVM and its applications

Abstract: This paper proposes a new support vector machine (SVM) optimization scheme based on an improved chaotic fly optimization algorithm (FOA) with a mutation strategy to simultaneously perform parameter setting turning for the SVM and feature selection. In the improved FOA, the chaotic particle initializes the fruit fly swarm location and replaces the expression of distance for the fruit fly to find the food source. However, the proposed mutation strategy uses two distinct generative mechanisms for new food sources… Show more

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Cited by 32 publications
(21 citation statements)
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“…The results of each iteration are recorded. When the algorithm is locally optimal, represents the best individual [13,14], and represents the worst individual in each iteration. The size of the Drosophila population is represented by .…”
Section: Fruit Fly Optimization Algorithm (Foa)mentioning
confidence: 99%
See 2 more Smart Citations
“…The results of each iteration are recorded. When the algorithm is locally optimal, represents the best individual [13,14], and represents the worst individual in each iteration. The size of the Drosophila population is represented by .…”
Section: Fruit Fly Optimization Algorithm (Foa)mentioning
confidence: 99%
“…In formula (14), ∈ is expressed as the weight value of the vector, ∈ represents the threshold calculated for the data, and (⋅) is expressed as the inner product operation of the data. The value of and is finally obtained.…”
Section: Support Vector Machine (Svm)mentioning
confidence: 99%
See 1 more Smart Citation
“…T max t−i , i = 1, · · · , 7 represents the t − ith day's maximum temperature C 8 , · · · , C 14 T avg t−i , i = 1, · · · 7 represents the t − ith day's average temperature C 15 , · · · , C 21 T min t−i , i = 1, · · · 7 represents the t − ith day's minimum temperature C 22 R t represents the tth day's precipitation C 23 W t represents the wind speed on day t C 24 H t represents the humidity on day t C 25 Cld t represents the cloud situation on day t C 26 M t represents the month in which day t is located C 27 Sea t represents the season in which day t is located C 28 Hol t represent whether day t is holiday, 0 is holiday, 1 is not holiday. C 29 Wk t represent whether day t is weekend, 0 is weekend, 1 is not weekend.…”
Section: Forecasting System With W-lssvm-swa and Dwt-irmentioning
confidence: 99%
“…Through the above analysis, we can find that some researchers usually apply optimization algorithms to optimize the parameters of LSSVM, so as to solve the blind selection problems of the penalty coefficient and kernel parameters. There are various optimization algorithms that used to optimize the parameters of SVM in terms of overcoming local optimal problem, such as particle swarm optimization algorithm (PSO) [21], genetic algorithm (GA) [14,22], artificial bee colony algorithm (ABC) [23], fruit fly optimization algorithm (FOA) [17,18,23], ant colony optimization algorithm (ACO) [24], imperialist competitive algorithm (ICA) [19], cuckoo search algorithm (CS) [20], etc.…”
mentioning
confidence: 99%