Identifying Stock Prices Using an Advanced Hybrid ARIMA-Based Model: A Case of Games Catalogs
Abstract
:1. Introduction
1.1. Background and Motivation of the Research Problem
1.2. Research Priorities and Objectives
- (1)
- Construct the advanced hybrid ARIMA-based models to compare the stock prices predicted in the long, medium, and short term with the actual stock prices, and determine the optimal model. At the same time, use the optimal model to predict the next n days, and use the predicted stock price of n days to form the judgment of an upward or downward trend, so as to provide a warning effect in advance.
- (2)
- Use the optimal model to form a trend judgment and basis for buying, not taking action, or not selling, and use a two-month period as experimental data to compare the rate of return of transactions.
- (3)
- Use the monitoring indicator inquiry system of UNCTAD for the scores of 10 years as the historical data to implement and compare the investment strategies.
2. Literature Review
2.1. The Stock Market and Its Applications
2.2. Games Catalog Stock and Its Applications
3. Methodological Preliminaries
3.1. ARIMA Algorithm
- (1)
- Basic composition of the algorithm
- (2)
- Model construction
3.2. ARIMA-Related Application Fields
3.3. Monitoring Indicators and Related Applications
4. The Proposed Advanced Hybrid ARIMA-Based Model
4.1. Research Structure and Algorithmic Flow of the Proposed Model
4.2. Investment Strategy Design Simulation and Example Illustration
- (1)
- Firstly, taking the stock of 6111 Softstar as an example, the optimal ARIMA prediction model (ARIMA (1,1,0)) was used to predict the number of days, and the predicted values fell within the 95% confidence interval for three days. Therefore, the prediction for the next three days was made every day as the basis for judging the trends of rise and fall.
- (2)
- In group A, a simulation was conducted to buy and hold at the closing price of 1 July 2020. Since the predicted value of ARIMA showed a rising stock price from 2 July 2020 to 7 July 2020, it continued to hold until selling at the closing price when the predicted value fell on 8 July 2020.
- (3)
- Group B bought on 1 July 2020 and sold on 31 July 2020.
- (4)
- Groups C and D referred to the historical 10-year economic monitoring indicators (from July 2010 to June 2020), and used ARIMA to predict the indicator scores of July and August 2020. Using the optimal ARIMA (0,1,0) model, BIC = 1.829 and p = 0.809, we found that the score for July 2020 was 18, while that for August 2020 was 22, and 95% of the predicted values fell within the actual data range, as shown in Table 2. Therefore, group C had no trade in July 2020, buying and holding at the beginning of August 2020 and then selling at the end of the month.
- (5)
- Group D had no trade in July 2020, and traded in August 2020 following the strategy of group A.
- (6)
- Finally, we calculate the actual effects of the whole simulated investment strategy.
Year–Month | Score of Monitoring Indicator | Forecasting Value | 95% Confidence Level |
---|---|---|---|
2020–06 | 19 | 19 | True |
2020–07 | 21 | 18 | True |
2020–08 | 26 | 22 | True |
5. Empirical Results and Performance Evaluation
5.1. Empirical Results: Establishment of Optimal Model and Accurate Days
5.2. Performance Evaluation of the ROR of the Models
6. Conclusions
6.1. Research Findings
6.2. Research Contributions
6.3. Research Limitations
6.4. Future Research Directions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. The Entire Simulated Trading Process of 6111 Stock
A | B | C | D | A | B | C | D | |||
---|---|---|---|---|---|---|---|---|---|---|
Date | A.V. | F.V. | Buy/Sell | Buy/Sell | Buy/Sell | Buy/Sell | RoR | RoR | RoR | RoR |
1 July 2020 | 80.8 | 81.55 | Buy | Buy | ||||||
82.33 | ||||||||||
82.86 | ||||||||||
8 July 2020 | 84.5 | 82.84 | Sell | 4.58% | ||||||
82.21 | ||||||||||
81.73 | ||||||||||
9 July 2020 | 82.9 | 84.98 | Buy | |||||||
85.25 | ||||||||||
85.37 | ||||||||||
10 July 2020 | 80.1 | 81.78 | Sell | −3.38% | ||||||
80.97 | ||||||||||
80.38 | ||||||||||
14 July 2020 | 82.8 | 84.97 | Buy | |||||||
85.38 | ||||||||||
85.62 | ||||||||||
15 July 2020 | 81.3 | 81.76 | Sell | −1.81% | ||||||
81.03 | ||||||||||
80.49 | ||||||||||
17 July 2020 | 82.1 | 81.74 | Buy | |||||||
81.78 | ||||||||||
81.75 | ||||||||||
21 July 2020 | 80.2 | 78.36 | Sell | −2.31% | ||||||
77.26 | ||||||||||
76.45 | ||||||||||
30 July 2020 | 80.2 | 80.78 | Buy | |||||||
81.76 | ||||||||||
82.36 | ||||||||||
31 July 2020 | 79.3 | 80.80 | Sell | Sell | −1.12% | −1.86% | ||||
81.15 | ||||||||||
81.33 | ||||||||||
3 August 2020 | 78.2 | 78.92 | Buy | Buy | ||||||
78.70 | ||||||||||
78.55 | ||||||||||
5 August 2020 | 80.9 | 80.51 | Buy | Buy | ||||||
80.60 | ||||||||||
80.55 | ||||||||||
6 August 2020 | 80.2 | 81.12 | Sell | Sell | −0.87% | −0.87% | ||||
81.12 | ||||||||||
81.04 | ||||||||||
24 August 2020 | 72.5 | 71.97 | Buy | Buy | ||||||
72.35 | ||||||||||
72.37 | ||||||||||
25 August 2020 | 74.8 | 73.06 | Sell | Sell | 3.17% | 3.17% | ||||
73.13 | ||||||||||
73.05 | ||||||||||
26 August 2020 | 75.8 | 75.44 | Buy | Buy | ||||||
75.55 | ||||||||||
75.50 | ||||||||||
27 August 2020 | 74.9 | 76.03 | Sell | Sell | −1.19% | −1.19% | ||||
76.01 | ||||||||||
75.92 | ||||||||||
31 August 2020 | 74.7 | 75.47 | Sell | Sell | −4.48% | −4.48% | ||||
75.40 | ||||||||||
75.28 | ||||||||||
Sum | −2.93% | −6.34% | −4.48% | 1.11% |
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Investment Strategy | Condition | |
---|---|---|
Buy | Sell | |
Group A: ARIMA strategy | Judge the trend by ARIMA: Rise -> buy | Rise -> hold |
Stable -> not buy | Stable -> hold | |
Fall -> not buy | Fall -> sell | |
Group B: strategy with fixed quotas at fixed periods | Buy at the beginning of the month | Sell at the end of the month |
Group C: strategy of monitoring indicators + fixed quotas at fixed periods | Buy at the beginning of the month when the indicator prediction reaches 22 or above | Sell at the end of the month |
Group D: strategy of monitoring indicators + ARIMA | Judge the trend by ARIMA when the indicator prediction reaches 22 or above: Rise -> buy Stable -> not buy Fall -> not buy | Rise -> hold Stable -> hold Fall -> sell |
Date | Actual Value | 7-Year ARIMA(0,1,3) | 3-Year ARIMA(0,1,1) | 1-Year ARIMA(1,1,0) | 0.5-Year ARIMA(0,1,0) | ||||
---|---|---|---|---|---|---|---|---|---|
F.V. | 95% | F.V. | 95% | F.V. | 95% | F.V. | 95% | ||
1 July 2020 | 93.0 | 90.65 | True | 90.56 | True | 90.48 | True | 90.70 | True |
2 July 2020 | 96.8 | 90.67 | True | 90.60 | True | 90.42 | True | 90.70 | True |
3 July 2020 | 95.1 | 90.66 | True | 90.64 | True | 90.41 | True | 90.70 | True |
Date | Actual Value | 7-Year ARIMA(1,1,0) | 3-Year ARIMA(0,1,3) | 1-Year ARIMA(1,1,1) | 0.5-Year ARIMA(0,1,0) | ||||
---|---|---|---|---|---|---|---|---|---|
F.V. | 95% | F.V. | 95% | F.V. | 95% | F.V. | 95% | ||
1 July 2020 | 18.30 | 18.70 | True | 18.52 | True | 18.61 | True | 18.42 | True |
2 July 2020 | 18.15 | 18.63 | True | 18.49 | True | 18.58 | True | 18.21 | True |
3 July 2020 | 18.70 | 18.71 | True | 18.52 | True | 18.56 | True | 17.99 | True |
Date | Actual Value | 7-Year ARIMA(0,1,0) | 3-Year ARIMA(0,1,0) | 1-Year ARIMA(0,1,0) | 0.5-Year ARIMA(0,1,0) | ||||
---|---|---|---|---|---|---|---|---|---|
F.V. | 95% | F.V. | 95% | F.V. | 95% | F.V. | 95% | ||
1 July 2020 | 750 | 733.3 | True | 733.2 | True | 736.2 | True | 733.0 | True |
2 July 2020 | 817 | 733.6 | True | 733.3 | True | 739.4 | True | 733.0 | True |
3 July 2020 | 805 | 733.9 | True | 733.5 | True | 742.6 | True | 733.0 | True |
Code | 7 Years | 3 Years | 1 Year | 0.5 Years | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
(p,d,q) | BIC | W.N. | (p,d,q) | BIC | W.N. | (p,d,q) | BIC | W.N. | (p,d,q) | BIC | W.N. | |
MAE | MSE | MAPE | MAE | MSE | MAPE | MAE | MSE | MAPE | MAE | MSE | MAPE | |
3083 | (0,1,3) | 0.728 | 0.566 | (0,1,1) | 0.863 | 0.286 | (1,1,0) | 1.499 | 0.619 | (0,1,0) * | 1.880 | 0.256 |
4.307 | 20.938 | 4.509 | 4.367 | 21.428 | 4.573 | 4.530 | 23.017 | 4.744 | 4.267 | 20.620 | 4.467 | |
3086 | (1,1,0) | 1.295 | 0.117 | (0,1,3) * | 0.874 | 0.051 | (1,1,1) | 1.012 | 0.061 | (0,1,0) | 0.183 | 0.789 |
0.297 | 0.130 | 1.628 | 0.247 | 0.065 | 1.346 | 0.293 | 0.100 | 1.604 | 0.297 | 0.174 | 1.594 | |
3293 | (0,1,0) | 4.105 | 0.113 | (0,1,0) | 4.140 | 0.171 | (0,1,0) * | 5.383 | 0.253 | (0,1,0) | 6.043 | 0.903 |
57.067 | 4096.550 | 7.089 | 57.367 | 4136.340 | 7.127 | 51.250 | 3366.470 | 6.361 | 57.667 | 4,176.330 | 7.164 | |
3546 | (0,1,3) | 1.417 | 0.216 | (1,1,1) | 1.462 | 0.186 | (0,1,3) | 1.771 | 0.366 | (3,1,3) * | 2.752 | 0.302 |
1.903 | 5.295 | 1.985 | 2.027 | 5.651 | 2.115 | 1.720 | 4.299 | 1.794 | 1.557 | 3.266 | 1.626 | |
3687 | (0,1,2) | 0.615 | 0.486 | (1,1,1) * | 0.095 | 0.172 | (0,1,1) | 0.815 | 0.368 | (0,1,0) | 1.356 | 0.538 |
0.697 | 1.272 | 0.011 | 0.650 | 1.155 | 0.010 | 0.683 | 1.027 | 0.011 | 0.713 | 0.960 | 0.011 | |
4946 | (0,1,6) | 0.535 | 0.675 | (0,1,3) | 0.503 | 0.326 | (0,1,2) * | 0.782 | 0.348 | (1,1,1) | −0.980 | 0.270 |
0.147 | 0.022 | 0.011 | 0.060 | 0.011 | 0.004 | 0.043 | 0.006 | 0.003 | 0.057 | 0.010 | 0.004 | |
4994 | (0,1,2) | 1.673 | 0.715 | (0,1,0) | 0.733 | 0.477 | (0,1,0) | 1.539 | 0.477 | (2,1,0) * | 1.256 | 0.276 |
2.440 | 6.590 | 0.035 | 2.317 | 5.853 | 0.033 | 2.317 | 5.853 | 0.033 | 2.032 | 4.400 | 0.029 | |
5478 | (0,1,0) | 0.994 | 0.163 | (0,1,0) | 0.716 | 0.990 | (0,1,0) * | 0.828 | 0.904 | (0,1,0) | 1.665 | 0.497 |
1.300 | 4.029 | 1.091 | 1.313 | 4.081 | 1.102 | 1.187 | 2.929 | 0.998 | 1.287 | 3.975 | 1.080 | |
6111 | (0,1,2) | 2.581 | 0.061 | (2,1,0) | 2.800 | 0.478 | (2,1,9) | 1.964 | 0.873 | (1,1,0) * | 1.213 | 0.371 |
2.810 | 11.476 | 3.308 | 2.673 | 10.530 | 3.146 | 3.117 | 12.137 | 3.685 | 1.853 | 4.080 | 2.195 | |
6169 | (0,1,1) * | 0.179 | 0.866 | (0,1,0) | 0.564 | 0.217 | (1,1,0) | 0.839 | 0.369 | (0,1,0) | 1.489 | 0.308 |
0.990 | 1.491 | 1.617 | 1.100 | 1.502 | 1.785 | 1.123 | 1.697 | 1.843 | 1.187 | 1.649 | 1.943 | |
6180 | (0,1,3) | 0.617 | 0.625 | (1,1,3) * | 1.190 | 0.060 | (2,1,1) | 0.032 | 0.694 | (0,1,2) | 0.791 | 0.212 |
1.410 | 2.544 | 0.019 | 0.980 | 1.352 | 0.013 | 1.233 | 2.147 | 0.016 | 1.423 | 2.329 | 0.019 |
Group A | Group B | Group C | Group D | |
---|---|---|---|---|
Number of samples | 10 | 10 | 10 | 10 |
Average rate of return | −8.92% | −21.96% | −6.97% | −4.77% |
Standard deviation | 5.70% | 7.93% | 5.31% | 17.58% |
Median | −5.48% | −18.83% | −3.95% | 0.00% |
Maximum value | 20.44% | 17.33% | 18.80% | 21.52% |
Minimum value | −44.89% | −74.61% | −45.53% | −43.72% |
Code | Data Range | Best-Fitting Model | A-RoR | B-RoR | C-RoR | D-RoR |
---|---|---|---|---|---|---|
3083 | 0.5 years | ARIMA(0,1,0) | −7.79% | −50.59% | −19.30% | 0.00% |
3293 | 1 year | ARIMA(0,1,0) | 20.44% | 17.33% | 18.80% | 21.52% |
3546 | 0.5 years | ARIMA(3,1,3) | 7.13% | −20.37% | −4.33% | 7.64% |
3687 | 3 years | ARIMA(1,1,1) | −20.69% | −19.60% | −3.57% | −19.25% |
4946 | 1 year | ARIMA(0,1,2) | −3.82% | −18.05% | 0.00% | 3.31% |
4994 | 0.5 years | ARIMA(2,1,0) | −5.44% | −10.86% | 2.07% | 0.00% |
5478 | 1 year | ARIMA(0,1,0) | −25.73% | −25.73% | −12.80% | −12.80% |
6111 | 0.5 years | ARIMA(1,1,0) | −2.93% | −6.33% | −4.48% | 1.11% |
6169 | 7 years | ARIMA(0,1,1) | −44.89% | −74.61% | −45.53% | −43.72% |
6180 | 3 years | ARIMA(1,1,3) | −5.52% | −10.83% | −0.59% | −5.57% |
Sum | −89.24% | −219.64% | −69.73% | −47.76% |
Groups | Degree of Freedom | t-Value | p-Value |
---|---|---|---|
A:B | 9 | 2.730 | 0.023 * |
A:C | 9 | −0.660 | 0.526 |
A:D | 9 | −3.137 | 0.012 * |
B:C | 9 | −4.843 | 0.001 ** |
B:D | 9 | −3.488 | 0.007 ** |
C:D | 9 | −0.739 | 0.479 |
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Chen, Y.-S.; Chou, C.-L.; Lee, Y.-J.; Chen, S.-F.; Hsiao, W.-J. Identifying Stock Prices Using an Advanced Hybrid ARIMA-Based Model: A Case of Games Catalogs. Axioms 2022, 11, 499. https://doi.org/10.3390/axioms11100499
Chen Y-S, Chou C-L, Lee Y-J, Chen S-F, Hsiao W-J. Identifying Stock Prices Using an Advanced Hybrid ARIMA-Based Model: A Case of Games Catalogs. Axioms. 2022; 11(10):499. https://doi.org/10.3390/axioms11100499
Chicago/Turabian StyleChen, You-Shyang, Chih-Lung (Jerome) Chou, Yau-Jung (Mike) Lee, Su-Fen Chen, and Wen-Ju Hsiao. 2022. "Identifying Stock Prices Using an Advanced Hybrid ARIMA-Based Model: A Case of Games Catalogs" Axioms 11, no. 10: 499. https://doi.org/10.3390/axioms11100499
APA StyleChen, Y. -S., Chou, C. -L., Lee, Y. -J., Chen, S. -F., & Hsiao, W. -J. (2022). Identifying Stock Prices Using an Advanced Hybrid ARIMA-Based Model: A Case of Games Catalogs. Axioms, 11(10), 499. https://doi.org/10.3390/axioms11100499