论文标题
股票交易量通过双过程元学习
Stock Trading Volume Prediction with Dual-Process Meta-Learning
论文作者
论文摘要
数量预测是金融科技领域的基本目标之一,这对许多下游任务(例如算法交易)有帮助。以前的方法主要学习针对不同股票的通用模型。但是,这种做法通过为不同股票应用相同的参数来忽略单个股票的特定特征。另一方面,为每种股票学习不同的型号将面临数据稀疏或对许多资本化较小的股票的冷启动问题。为了利用数据量表和各个股票的各种特征,我们提出了一种双过程元学习方法,将每个股票的预测视为在元学习框架下的一个任务。我们的方法可以用元学习者建模不同股票背后的常见模式,同时对每个股票的特定模式在具有股票依赖性参数的时间跨度上建模。此外,我们建议以潜在变量的形式开采每种股票的模式,然后将其用于学习预测模块的参数。这使预测过程了解数据模式。关于音量预测的广泛实验表明,我们的方法可以改善各种基线模型的性能。进一步分析证明了我们提出的元学习框架的有效性。
Volume prediction is one of the fundamental objectives in the Fintech area, which is helpful for many downstream tasks, e.g., algorithmic trading. Previous methods mostly learn a universal model for different stocks. However, this kind of practice omits the specific characteristics of individual stocks by applying the same set of parameters for different stocks. On the other hand, learning different models for each stock would face data sparsity or cold start problems for many stocks with small capitalization. To take advantage of the data scale and the various characteristics of individual stocks, we propose a dual-process meta-learning method that treats the prediction of each stock as one task under the meta-learning framework. Our method can model the common pattern behind different stocks with a meta-learner, while modeling the specific pattern for each stock across time spans with stock-dependent parameters. Furthermore, we propose to mine the pattern of each stock in the form of a latent variable which is then used for learning the parameters for the prediction module. This makes the prediction procedure aware of the data pattern. Extensive experiments on volume predictions show that our method can improve the performance of various baseline models. Further analyses testify the effectiveness of our proposed meta-learning framework.