Fuzzy Time Series Saxena-Easo Pada Peramalan Laju Inflasi Indonesia (Saxena-Easo Fuzzy Time Series on Indonesia’s Inflation Rate Forecasting)
Date
2019-01-02Author
RAMADHANI, Lutvia Citra
ANGGRAENI, Dian
KAMSYAKAWUNI, Ahmad
Metadata
Show full item recordAbstract
Saxena-Easo Fuzzy Time Series
(FTS
) is a softcomputing method for forecasting using fuzzy
concept. It doesn’t need any assumption like conventional forecasting method. Generally it’s
focused on three important steps like percentage change as the universe of discourse, interval
partition, and defuzzification. In this research, this method is applied to Indonesia’s inflation rate
data. The aim of this research is to forecast Indonesia’s inflation rate in 2017 by using input from
Autoregressive Integrated Moving Average
(ARIMA
) process, Saxena-Easo FTS, and actual data
from 1970-2016. ARIMA is focused on four steps like identifying, parameter estimation,
diagnostic checking, and forecasting. The result for Indonesia’s inflation rate forecasting in 2017
is about 5.9182 using Saxena-Easo FTS. Root Mean Square Error
(RMSE
) is also computed to
compare the accuracy rate from each method between Saxena-Easo FTS and ARIMA. RMSE from
Saxena-Easo FTS is about 0.9743 while ARIMA is about 6.3046.
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- LSP-Jurnal Ilmiah Dosen [7356]