scholarly journals EXCHANGE RATE FORECASTING USING FUZZY TIME SERIES-MARKOV CHAIN

Author(s):  
LIM XIN HUI ◽  
◽  
BINYAMIN YUSOFF ◽  
Symmetry ◽  
2020 ◽  
Vol 12 (9) ◽  
pp. 1553
Author(s):  
Harun Yasar ◽  
Zeynep Hilal Kilimci

Exchange rate forecasting has been an important topic for investors, researchers, and analysts. In this study, financial sentiment analysis (FSA) and time series analysis (TSA) are proposed to form a predicting model for US Dollar/Turkish Lira exchange rate. For this purpose, the proposed hybrid model is constructed in three stages: obtaining and modeling text data for FSA, obtaining and modeling numerical data for TSA, and blending two models like a symmetry. To our knowledge, this is the first study in the literature that uses social media platforms as a source for FSA and blends them with TSA methods. To perform FSA, word embedding methods Word2vec, GloVe, fastText, and deep learning models such as CNN, RNN, LSTM are used. To the best of our knowledge, this study is the first attempt in terms of performing the FSA by using the combinations of deep learning models with word embedding methods for both Turkish and English texts. For TSA, simple exponential smoothing, Holt–Winters, Holt’s linear, and ARIMA models are employed. Finally, with the usage of the proposed model, any user who wants to make a US Dollar/Turkish Lira exchange rate forecast will be able to make a more consistent and strong exchange rate forecast.


2014 ◽  
Vol 3 (3) ◽  
pp. 116
Author(s):  
I MADE ARYA ANTARA ◽  
I PUTU EKA N. KENCANA ◽  
I KOMANG GDE SUKARSA

This paper aimed to elaborates and compares the performance of Fuzzy Time Series (FTS) model with Markov Chain (MC) model in forecasting the Gross Regional Domestic Product (GDRP) of Bali Province.  Both methods were considered as forecasting methods in soft modeling domain.  The data used was quarterly data of Bali’s GDRP for year 1992 through 2013 from Indonesian Bureau of Statistic at Denpasar Office.  Inspite of using the original data, rate of change from two consecutive quarters was used to model. From the in-sample forecasting conducted, we got the Average Forecas­ting Error Rate (AFER) for FTS dan MC models as much as 0,78 percent and 2,74 percent, respec­tively.  Based-on these findings, FTS outperformed MC in in-sample forecasting for GDRP of Bali’s data.


2019 ◽  
Author(s):  
Rahmad Syah

The concept of Fuzzy Time Series to predict things that will happen based on the data in the past, while Markov Chain assist in estimating the changes that may occur in the future. With methods are used to predict the incidence of natural disasters in the future. From the research that has been done, it appears the change, an increase of each disaster, like a tornado reaches 3%, floods reaches 16%, landslides reaches 7%, transport accidents reached 25% and volcanic eruptions as high as 50%.


2021 ◽  
Vol 4 (1) ◽  
pp. 49-54
Author(s):  
Danung Nur Adli

Penelitian ini dilakukan dengan tujuan memprediksi harga pakan jagung menggunakan salah satu model matematika yang disebut fuzzy time series. Data yang didapatkan yaitu data historis atau rentan waktu dari berbagai literasi seperti hargaweb.id, jagungbisi.com, dan BPS dari tahun 2020-2021, kuarter pertama. Data tersebut nantinya akan dijadikan bahan perhitungan. Data dianalisa menggunakan R Studio. Kemudian algoritma fuzzy time series. hasil penelitian fuzzy time series menghasilkan prediksi harga pada jagung menggunakan time series. Memprediksi harga akan cenderung berubah dari kisaran Rp/ 4.000-4.400,- yang mana tingkat error hanya ada di level 8,23.Logika fuzzy atau time series mampu menyajikan prediksi harga jagung pada tahun 2020-2021 dengan keakuratan dengan tingkat error 8.23% artinya tidak berbeda jauh. Kedepannya banyak model matematika yang bisa digunakan untuk memprediksi dari harga bahan baku atau aspek lainnya pada industri peternakan.


2022 ◽  
Vol 335 ◽  
pp. 00016
Author(s):  
Osfar Sjofjan ◽  
Danung Nur Adli

Edible bird nest (EBN) were traditional medicine consumed by the Tiongkok. This study compared two-algorithm method. Fuzzy time series and Markov chain as forecast method the number of bird nest exported from Indonesia. The secondary data between 2012 and 2018 were from Bureau Central Statistic (BPS). The scope using in this study were bird nest between 2012 until 2018, with a unit of volume kilograms (Kg). Used secondary export data, collected from BPS of Indonesia. Data were analysed using Fuzzy Time Series with and without Markov Chain using R Studio. The result showed that Fuzzy Time Series with and without Markov Chain method performs better in the forecasting ability in short-term period prediction and the values of Mean Absolute Percentage Error (MAPE) and Mean Square Error (MSE) tends to be smaller than the Fuzzy Time Series without Markov Chain. It can be concluded the number of exported can be used Fuzzy time series.


2016 ◽  
Vol 100 (5) ◽  
pp. 661-669
Author(s):  
Ro’fah Nur Rachmawati ◽  
Johari ◽  
Ashadi Salim

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