Journal of applied statistics and data mining
Vol. 1 No. 2 (2020): Journal Applied Statistics and Data Mining

ARIMA MODELS UNTUK MEMPREDIKSI TINGKAT PERCERAIAN DI LOMBOK TIMUR

Lina Septia Hultafiana Maziyyah (Unknown)
Wiwit Purwa Nurmayanti (Unknown)
Muhammad Malthuf (Unknown)



Article Info

Publish Date
30 Dec 2020

Abstract

Selong Religious Court Office is one office whose duties take care of various cases, one of which is divorce cases. Divorce inEast Lombok changes every year. Based on data from Selong Religious Court, divorce annually in East Lombok increased. Tofind out whether divorce matters in two the coming year will experience an increase as well or rather has decreased then ananalysis of time series (forecasting) with using the ARIMA (Autoregressive Integrated Moving Average) method. The aim is tofind out which time series model is right for forecasting divorce rates and also to find out how many results from divorceforecasting in East Lombok Regency 2020-2021. Based on the analysis results got that the best model is ARIMA (3,1,3) with anMSE value of 220.6. From the forecasting results it is known that the total number of divorce predictions for 2020 are January(124), February (984), March (100), April (123), May (96), June (104), July (122), August (93), September (107), October (120),November (92), December (111). Whereas forecasting for 2021 is January (118), February (91) March (114), April (115), May(91), June (117), July (112), August (91), September (119) , October (108), November (93), December (121).

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Journal Info

Abbrev

jasdm

Publisher

Subject

Computer Science & IT Decision Sciences, Operations Research & Management Economics, Econometrics & Finance Social Sciences

Description

Journal of applied statistics and data mining provide open access, which in principle makes research open and freely available to the public so that it becomes a means of global knowledge exchange. Published twice a year, in June and December. This journal publishes scientific articles as research ...