TY - CONF ID - scholars10214 TI - The effect of interval length in weighted subsethood fuzzy time series N2 - Fuzzy time series has received increasing intentions since the first definition of fuzzy time series was introduced in 1993 by Song and Chissom. Then many studies proposed new fuzzy time series models. One of the steps in developing fuzzy time series model is partitioning the universe of discourse into different lengths of intervals. However, the performance of fuzzy time series model can be affected by interval length factor. Therefore, the objective of this study is to investigate the performance of Weighted Subsethood fuzzy time series model with different lengths of interval. By using the familiar data in fuzzy time series study, the historical enrollments of University of Alabama data, seven different number of interval cases were generated. The results show that partitioning the data into four intervals has the minimum forecasting error. © 2018 Author(s). N1 - cited By 4; Conference of 25th National Symposium on Mathematical Sciences: Mathematical Sciences as the Core of Intellectual Excellence, SKSM 2017 ; Conference Date: 27 August 2017 Through 29 August 2017; Conference Code:137617 AV - none VL - 1974 UR - https://www.scopus.com/inward/record.uri?eid=2-s2.0-85049784637&doi=10.1063%2f1.5041691&partnerID=40&md5=83427ee2ac27088f28d2764187ce285f A1 - Mansor, R. A1 - Zaini, B.J. A1 - Othman, M. A1 - Kasim, M.M. SN - 0094243X PB - American Institute of Physics Inc. Y1 - 2018/// ER -