DDC
| 006 |
Tác giả CN
| Pham, Dinh Phong |
Tác giả TT
| |
Nhan đề
| A time series forecasting model based on linguistic forecasting rules / Pham, Dinh Phong |
Tóm tắt
| The fuzzy time series (FTS) forecasting models have been sturlied intesively over the pizza-nabpast few years. The existing FTS forecasting models partition the historical data into and assign the fuzzy sets to them by the human expert‘s experience. Hieu et al. propo time series by utilizing the hedge algebras quantification to converse the numerical . Data to the linguistic time series. Similar to the FTS forecasting models, the obtained Ii:- time series can define the linguistic, logical relationships which are used to establish the 32,1; legit relationship groups and form a linguistic forecasting model. In this paper. we propose a 5;- fistu- time series forecasting model based on the linguistic forecasting rules induced from the ; logical relationships instead of the linguistic, logical relationship groups proposed by Hieu. T1»:— experimental studies using the historical data of the enrollments of University of Alabama and the iii; average temperature data in Taipei Show the outperformance of the proposed forecasting Elsi-1‘ over thecounterpart ones. Then, to realize the proposed models in Viet Nam. they are sis; apple-d to thefei'eeasliug problem of the historical data of the average rice production of Viet .from 1990 to
2010.
|
Từ khóa tự do
| Defuzzification |
Từ khóa tự do
| Linguistic logical relationship |
Từ khóa tự do
| Linguistic time series |
Từ khóa tự do
| Hedge algebras |
Nguồn trích
| Tạp chí Tin học và Điều khiển học = Journal of Computer Science And Cybernetics 2021tr. 25-44
Số: 01 |
|
000
| 00000nab#a2200000ui#4500 |
---|
001 | 52399 |
---|
002 | 9 |
---|
004 | 16ABFEB3-6EA6-4BAF-9846-49FB0AF8F12B |
---|
005 | 202409181447 |
---|
008 | 081223s VN| vie |
---|
009 | 1 0 |
---|
039 | |y20240918145120|ztainguyendientu |
---|
040 | |aACTVN |
---|
041 | |avie |
---|
044 | |avm |
---|
082 | |a006 |
---|
100 | 10|aPham, Dinh Phong |
---|
110 | |bVietnam Academy Of Science And Technology |
---|
245 | |aA time series forecasting model based on linguistic forecasting rules / |cPham, Dinh Phong |
---|
520 | |a The fuzzy time series (FTS) forecasting models have been sturlied intesively over the pizza-nabpast few years. The existing FTS forecasting models partition the historical data into and assign the fuzzy sets to them by the human expert‘s experience. Hieu et al. propo time series by utilizing the hedge algebras quantification to converse the numerical . Data to the linguistic time series. Similar to the FTS forecasting models, the obtained Ii:- time series can define the linguistic, logical relationships which are used to establish the 32,1; legit relationship groups and form a linguistic forecasting model. In this paper. we propose a 5;- fistu- time series forecasting model based on the linguistic forecasting rules induced from the ; logical relationships instead of the linguistic, logical relationship groups proposed by Hieu. T1»:— experimental studies using the historical data of the enrollments of University of Alabama and the iii; average temperature data in Taipei Show the outperformance of the proposed forecasting Elsi-1‘ over thecounterpart ones. Then, to realize the proposed models in Viet Nam. they are sis; apple-d to thefei'eeasliug problem of the historical data of the average rice production of Viet .from 1990 to
2010.
|
---|
653 | |aDefuzzification |
---|
653 | |aLinguistic logical relationship |
---|
653 | |aLinguistic time series |
---|
653 | |aHedge algebras |
---|
773 | 0 |tTạp chí Tin học và Điều khiển học = Journal of Computer Science And Cybernetics |d2021|gtr. 25-44|x1813-9663|i01 |
---|
890 | |a0|b0|c1|d0 |
---|
| |
Không tìm thấy biểu ghi nào
|
|
|
|