MULTIVARIATE TIME SERIES FORECASTING ON FINANCIAL DOMAIN USING SPECTRAL TEMPORAL GRAPH NEURAL NETWORK
Multivariate time series prediction method utilizes information from various time series to generate predictions. Financial domain time series data has characteristics and forms that are influenced by the structure of financial markets and various other attributes. Based on these two statements,...
Saved in:
Main Author: | |
---|---|
Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/63734 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Multivariate time series prediction method utilizes information from various time
series to generate predictions. Financial domain time series data has
characteristics and forms that are influenced by the structure of financial markets
and various other attributes. Based on these two statements, multivariate time
series prediction was chosen as the method of predicting multivariate time series
data in the financial domain by including other attributes that affect price
movements of financial data into the prediction algorithm. Financial time series
data also influenced by past value of these series. So that by combining prediction
methods that can utilize advantages of interrelationships between variables and
also recognize temporal patterns in each time series, it is expected to produce more
accurate predictions. The characteristics of the financial domain time series data
are appropriate with StemGNN architecture (Cao et al., 2021) which integrates
graph convolutions in the spectral domain, and temporal convolutions in the
temporal domain using Discrete Fourier Transform (DFT). So that in this study an
experiment of this method will be carried out in the financial domain. Latent
correlation layer (LCL) of StemGNN is the sub-module with the smallest
performance contribution, so a trial will be carried out to improve the performance
of StemGNN using graph structure formation module from the Multivariate Time
Series Graph Neural Network (MTGNN), namely Node Embedding (NE), and
comparing it with the graph structure. using the Granger Causality Test (GCT).
From the experiments carried out, NE produces better predictive performance than
LCL and GCT with an increase in average performance for the rice, commodity,
currency datasets of 7.93%, 9, respectively). 73%, and 16.06%.The performance of
NE is better when compared to the LCL which uses GRU as the basis for
constructing graph structures. |
---|