基于门控神经网络结构的多目标rank网络机器人顾问设计

Pei-Ying Wang, Chun-Shou Liu, Yao-Chun Yang, Szu-Hao Huang
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引用次数: 4

摘要

随着深度学习和金融技术的快速发展,基于新型人工智能技术的定制机器人咨询服务已被广泛采用,以实现普惠金融。本研究提出一种集趋势预测、投资组合管理和推荐机制于一体的新型机器人顾问系统。结合三个多目标RankNet核的门控神经网络结构可以对目标金融产品进行排名,并向投资者推荐排名前n的证券。门控制神经网络学习选择或权衡每个RankNet,以纳入最重要的部分网络输入,如每股收益、市场指数和时间序列中的隐藏信息。实验结果表明,基于门控神经网络和多目标rank网络的机器人顾问推荐结果优于现有模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Robo-Advisor Design using Multiobjective RankNets with Gated Neural Network Structure
With rapid developments in deep learning and financial technology, a customized robo-advisory service based on novel artificial intelligence techniques has been widely adopted to realize financial inclusion. This study proposes a novel robo-advisor system that integrates trend prediction, portfolio management, and a recommendation mechanism. A gated neural network structure combining three multiobjective RankNet kernels could rank target financial products and recommend the top-n securities to investors. The gated neural network learns to choose or weigh each RankNet for incorporating the most important partial network inputs, such as earnings per share, market index, and hidden information from the time series. Experimental results indicate that the recommendation results of our proposed robo-advisor based on a gated neural network and multiobjective RankNets can outperform existing models.
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