2018
DOI: 10.11591/ijeecs.v11.i3.pp1015-1026
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The Fuzzy Inference System with Least Square Optimization for Time Series Forecasting

Abstract: The rule base on the fuzzy inference system (FIS) has a major role since the output generated by the system is highly dependent on it. The rule base is usually obtained from an expert but in this study proposed the rule base generated based on input-output data pairs with generating rule bases using lookup table scheme, then consequent part of each rule optimized with ordinary least square(OLS), so finally formed rule base from model FIS Takagi-Sugeno orde zero. The exchange rate dataset of EURO to USD is used… Show more

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Cited by 10 publications
(11 citation statements)
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“…At then ncl = 3 and ncl = 5 visually can still be recognized the Gaussian curves of each cluster. The result is supported by the FIS implementation carried out by Handoyo and Marji [9] that the best-performing FIS is on ncl = 3 or 5.…”
Section: Establishment Of Fuzzy Rule Bases Using Fcmmentioning
confidence: 58%
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“…At then ncl = 3 and ncl = 5 visually can still be recognized the Gaussian curves of each cluster. The result is supported by the FIS implementation carried out by Handoyo and Marji [9] that the best-performing FIS is on ncl = 3 or 5.…”
Section: Establishment Of Fuzzy Rule Bases Using Fcmmentioning
confidence: 58%
“…The bell-shaped Gaussian curve is characterized by two parameters, namely the center of the curve and spread (standard of deviation). In some FIS implementations such as in Handoyo and Marji [9], Handoyo et al [10], Arief et al [15] and Wang [1], the two parameters are determined in a simple way. The spread parameter is a constant which amount is calculated that divides range by (n-1), where n is the number of fuzzy sets, while the curve centers are obtained through the minimum value plus k * the spread value, for k = 0,1,2,3, ...., (n-1), in this case, the minimum value automatically becomes the center of the lowest curve, and the maximum value automatically becomes the center of the highest one.…”
Section: B Parameters Setting Of the Gaussian Membership Functionmentioning
confidence: 99%
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