Journal of Computer Applications ›› 2026, Vol. 46 ›› Issue (2): 427-436.DOI: 10.11772/j.issn.1001-9081.2025080955
• Artificial intelligence • Previous Articles
Hanyue WEI, Chenjuan GUO(
), Jieyuan MEI, Jindong TIAN, Peng CHEN, Ronghui XU, Bin YANG
Received:2025-08-20
Revised:2025-09-11
Accepted:2025-10-10
Online:2026-03-02
Published:2026-02-10
Contact:
Chenjuan GUO
About author:WEI Hanyue, born in 1999, M. S. candidate. Her research interests include financial time series forecasting, multimodal forecasting.Supported by:
魏涵玥, 郭晨娟(
), 梅杰源, 田锦东, 陈鹏, 徐榕荟, 杨彬
通讯作者:
郭晨娟
作者简介:魏涵玥(1999—),女,江苏苏州人,硕士研究生,主要研究方向:金融时序预测、多模态预测基金资助:CLC Number:
Hanyue WEI, Chenjuan GUO, Jieyuan MEI, Jindong TIAN, Peng CHEN, Ronghui XU, Bin YANG. MATCH: multimodal stock prediction framework integrating time-frequency features and hybrid text[J]. Journal of Computer Applications, 2026, 46(2): 427-436.
魏涵玥, 郭晨娟, 梅杰源, 田锦东, 陈鹏, 徐榕荟, 杨彬. 融合时频特征与混合文本的多模态股票预测框架MATCH[J]. 《计算机应用》唯一官方网站, 2026, 46(2): 427-436.
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URL: https://www.joca.cn/EN/10.11772/j.issn.1001-9081.2025080955
| 数据集 | 股票数 | 数据源 | 数据时间区间 | |||
|---|---|---|---|---|---|---|
| 时序 | 文本 | 训练 | 推理 | 测试 | ||
| S&P 500 | 87 | Yahoo Finance | 2014-01-01 to 2014-12-31 | 2015-01-01 to 2015-10-01 | 2015-10-01 to 2015-12-31 | |
| CMIN-US | 110 | Google Finance | Yahoo | 2018-01-02 to 2020-10-15 | 2020-10-16 to 2021-03-11 | 2021-03-12 to 2021-12-31 |
Tab. 1 Statistical information of experimental datasets
| 数据集 | 股票数 | 数据源 | 数据时间区间 | |||
|---|---|---|---|---|---|---|
| 时序 | 文本 | 训练 | 推理 | 测试 | ||
| S&P 500 | 87 | Yahoo Finance | 2014-01-01 to 2014-12-31 | 2015-01-01 to 2015-10-01 | 2015-10-01 to 2015-12-31 | |
| CMIN-US | 110 | Google Finance | Yahoo | 2018-01-02 to 2020-10-15 | 2020-10-16 to 2021-03-11 | 2021-03-12 to 2021-12-31 |
| 模型 | S&P 500 | CMIN⁃US | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| IC(↑) | RIC(↑) | ICIR(↑) | RICIR(↑) | SR(↑) | IC(↑) | RIC(↑) | ICIR(↑) | RICIR(↑) | SR(↑) | |
| Autoformer | 0.072 2 | 0.059 7 | 0.788 5 | 0.351 5 | 0.038 7 | 0.717 3 | 0.609 1 | 0.284 3 | ||
| DLinear | 0.059 6 | 0.045 5 | 0.673 0 | 0.537 9 | 0.417 4 | 0.021 5 | 0.039 0 | 0.518 1 | 0.502 8 | 0.344 0 |
| PatchTST | 0.070 7 | 0.054 2 | 0.797 2 | 0.666 8 | 0.745 6 | 0.049 4 | 0.032 9 | 0.608 8 | 0.616 2 | 0.689 1 |
| iTransformer | 0.043 6 | 0.025 7 | 0.545 0 | 0.352 5 | 0.761 9 | 0.035 1 | 0.027 6 | 0.615 5 | 0.505 4 | 0.732 0 |
| Adv-ALSTM | 0.071 4 | 0.036 1 | 0.828 1 | 0.871 8 | 0.066 3 | 0.036 2 | 0.711 6 | |||
| ESTIMATE | 0.115 3 | 0.901 7 | 0.894 3 | 0.036 1 | 0.735 4 | 0.763 3 | ||||
| MATCH | 0.090 1 | 1.151 9 | 1.102 3 | 1.356 0 | 0.081 9 | 0.049 3 | 0.857 7 | 0.831 1 | 0.906 2 | |
Tab. 2 Comparison of experimental results on CMIN-US and S&P 500 datasets
| 模型 | S&P 500 | CMIN⁃US | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| IC(↑) | RIC(↑) | ICIR(↑) | RICIR(↑) | SR(↑) | IC(↑) | RIC(↑) | ICIR(↑) | RICIR(↑) | SR(↑) | |
| Autoformer | 0.072 2 | 0.059 7 | 0.788 5 | 0.351 5 | 0.038 7 | 0.717 3 | 0.609 1 | 0.284 3 | ||
| DLinear | 0.059 6 | 0.045 5 | 0.673 0 | 0.537 9 | 0.417 4 | 0.021 5 | 0.039 0 | 0.518 1 | 0.502 8 | 0.344 0 |
| PatchTST | 0.070 7 | 0.054 2 | 0.797 2 | 0.666 8 | 0.745 6 | 0.049 4 | 0.032 9 | 0.608 8 | 0.616 2 | 0.689 1 |
| iTransformer | 0.043 6 | 0.025 7 | 0.545 0 | 0.352 5 | 0.761 9 | 0.035 1 | 0.027 6 | 0.615 5 | 0.505 4 | 0.732 0 |
| Adv-ALSTM | 0.071 4 | 0.036 1 | 0.828 1 | 0.871 8 | 0.066 3 | 0.036 2 | 0.711 6 | |||
| ESTIMATE | 0.115 3 | 0.901 7 | 0.894 3 | 0.036 1 | 0.735 4 | 0.763 3 | ||||
| MATCH | 0.090 1 | 1.151 9 | 1.102 3 | 1.356 0 | 0.081 9 | 0.049 3 | 0.857 7 | 0.831 1 | 0.906 2 | |
| 模型 | S&P 500 | CMIN⁃US | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| IC(↑) | RIC(↑) | ICIR(↑) | RICIR(↑) | SR(↑) | IC(↑) | RIC(↑) | ICIR(↑) | RICIR(↑) | SR(↑) | |
| MATCH-v0 | 0.045 4 | 0.026 4 | 0.582 4 | 0.307 7 | 0.908 3 | 0.051 7 | 0.025 8 | 0.601 9 | 0.698 4 | 0.745 7 |
| MATCH-v1 | 0.082 9 | 1.012 5 | 1.003 1 | 0.067 9 | 0.842 2 | 0.758 9 | 0.739 5 | |||
| MATCH-v2 | 0.080 1 | 1.442 2 | 1.247 1 | 0.928 3 | 0.046 7 | 0.862 1 | ||||
| MATCH | 0.090 1 | 0.086 9 | 1.356 0 | 0.081 9 | 0.049 3 | 0.831 1 | 0.906 2 | |||
Tab. 3 Comparison of ablation experimental results
| 模型 | S&P 500 | CMIN⁃US | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| IC(↑) | RIC(↑) | ICIR(↑) | RICIR(↑) | SR(↑) | IC(↑) | RIC(↑) | ICIR(↑) | RICIR(↑) | SR(↑) | |
| MATCH-v0 | 0.045 4 | 0.026 4 | 0.582 4 | 0.307 7 | 0.908 3 | 0.051 7 | 0.025 8 | 0.601 9 | 0.698 4 | 0.745 7 |
| MATCH-v1 | 0.082 9 | 1.012 5 | 1.003 1 | 0.067 9 | 0.842 2 | 0.758 9 | 0.739 5 | |||
| MATCH-v2 | 0.080 1 | 1.442 2 | 1.247 1 | 0.928 3 | 0.046 7 | 0.862 1 | ||||
| MATCH | 0.090 1 | 0.086 9 | 1.356 0 | 0.081 9 | 0.049 3 | 0.831 1 | 0.906 2 | |||
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