An Immense Approach of High Order Fuzzy Time Series Forecasting of Household Consumption Expenditures with High Precision

Fuzzy Time Series (Fts) models are experiencing an increase in popularity due to their effectiveness in forecasting and modelling diverse and intricate time series data sets. Essentially these models use membership functions and fuzzy logic relation functions to produce predicted outputs through a d...

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Veröffentlicht in:Applied Computer Systems (Online) 2024-06, Vol.29 (1), p.1-7
Hauptverfasser: Burney, Syed Muhammad Aqil, Khan, Muhammad Shahbaz, Alim, Affan, Efendi, Riswan
Format: Artikel
Sprache:eng
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Zusammenfassung:Fuzzy Time Series (Fts) models are experiencing an increase in popularity due to their effectiveness in forecasting and modelling diverse and intricate time series data sets. Essentially these models use membership functions and fuzzy logic relation functions to produce predicted outputs through a defuzzification process. In this study, we suggested using a Second Order Type-1 fts (S-O T-1 F-T-S) forecasting model for the analysis of time series data sets. The suggested method was compared to the state-of-theart First Order Type 1 Fts method. The suggested approach demonstrated superior performance compared to the First Order Type 1 Fts method when applied to household consumption data from the Magene Regency in Indonesia, as measured by absolute percentage error rate (APER).
ISSN:2255-8691
2255-8691
DOI:10.2478/acss-2024-0001