基于随机注意的LSTM的多策略股票预测的垂直建议联邦学习

Danilo Menegatti, Emanuele Ciccarelli, Michele Viscione, A. Giuseppi
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引用次数: 0

摘要

近年来,股票价格预测已成为一项具有挑战性的任务,通常用于评估各种机器学习解决方案的性能。这项工作探讨了竞争协作场景中的联邦学习(FL)框架,目的是训练由不可恢复的分散策略建议的集中式模型,从而不需要交换私有数据。提出的垂直建议联邦学习(VAFL)框架结合了水平和垂直联邦学习的元素,因为每个客户端训练两个独立的模型。在此基础上,提出了一种基于基于注意力的长短期记忆(LSTM)网络随机变体的预测体系结构,并在基于股票市场真实数据的模拟场景上进行了验证。
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Vertically-Advised Federated Learning for Multi-Strategic Stock Predictions through Stochastic Attention-based LSTM
In recent years, stock price forecasting has become a challenging task commonly used to evaluate the performance of various machine learning solutions. This work explores a Federated Learning (FL) framework within a competitive collaboration scenario with the aim of training a centralised model advised by non-recoverable decentralised strategies so that no exchange of private data is required. The proposed Vertically-Advised Federated Learning (VAFL) framework combines elements from both horizontal and vertical FL, as each client trains two independent models. Furthermore, a novel forecasting architecture, based on a stochastic variant of an Attention-based Long Short Term Memory (LSTM) network, is proposed and validated on a simulated scenario based on real data from the stock market.
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