The irregular and multi-modal nature of numerous modern data sources poses serious challenges for traditional deep learning algorithms. To this end, recent efforts have generalized existing algorithms to irregular domains through graphs, with the aim to gain additional insights from data through the underlying graph topology. At the same time, tensor-based methods have demonstrated promising results in bypassing the bottlenecks imposed by the Curse of Dimensionality. In this paper, we introduce a novel Multi-Graph Tensor Network (MGTN) framework, which exploits both the ability of graphs to handle irregular data sources and the compression properties of tensor networks in a deep learning setting. The potential of the proposed framework is demonstrated through an MGTN based deep Q agent for Foreign Exchange (FOREX) algorithmic trading. By virtue of the MGTN, a FOREX currency graph is leveraged to impose an economically meaningful structure on this demanding task, resulting in a highly superior performance against three competing models and at a drastically lower complexity.
翻译:许多现代数据来源的不正常和多模式性质给传统的深层学习算法带来了严重挑战。为此,最近的努力通过图表将现有的算法推广到非正常领域,目的是通过基本图表表层从数据中获得更多的洞察力。与此同时,基于高压的方法在绕过多面性诅咒造成的瓶颈方面显示出有希望的结果。在本文件中,我们引入了一个新的多格特尔网络框架,它既利用图表处理非正常数据来源的能力,又利用了在深层学习环境中高压网络的压缩性能。拟议框架的潜力通过一个基于深层的MGTN代理器用于外汇(FOREX)算法交易而得到证明。根据MGTN,一个FOR货币图表在这项艰巨的任务上被推高了具有经济意义的结构,导致与三个相互竞争的模式相比,其复杂性也大大降低。