Temporal distribution of clusters of investors and their application in prediction with expert advice

Wojciech Wisniewski, Yuri Kalnishkan, David Lindsay, Siân Lindsay
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Abstract

Financial organisations such as brokers face a significant challenge in servicing the investment needs of thousands of their traders worldwide. This task is further compounded since individual traders will have their own risk appetite and investment goals. Traders may look to capture short-term trends in the market which last only seconds to minutes, or they may have longer-term views which last several days to months. To reduce the complexity of this task, client trades can be clustered. By examining such clusters, we would likely observe many traders following common patterns of investment, but how do these patterns vary through time? Knowledge regarding the temporal distributions of such clusters may help financial institutions manage the overall portfolio of risk that accumulates from underlying trader positions. This study contributes to the field by demonstrating that the distribution of clusters derived from the real-world trades of 20k Foreign Exchange (FX) traders (from 2015 to 2017) is described in accordance with Ewens' Sampling Distribution. Further, we show that the Aggregating Algorithm (AA), an on-line prediction with expert advice algorithm, can be applied to the aforementioned real-world data in order to improve the returns of portfolios of trader risk. However we found that the AA 'struggles' when presented with too many trader ``experts'', especially when there are many trades with similar overall patterns. To help overcome this challenge, we have applied and compared the use of Statistically Validated Networks (SVN) with a hierarchical clustering approach on a subset of the data, demonstrating that both approaches can be used to significantly improve results of the AA in terms of profitability and smoothness of returns.
投资者集群的时间分布及其在专家建议预测中的应用
经纪商等金融组织面临着一项重大挑战,即如何满足全球成千上万交易者的投资需求。由于每个交易者都有自己的风险偏好和投资目标,因此这项任务变得更加复杂。交易者可能希望捕捉仅持续几秒到几分钟的短期市场趋势,也可能有持续几天到几个月的长期观点。为了降低这项任务的复杂性,可以对客户交易进行分组。通过研究这些聚类,我们很可能会发现许多交易者遵循着共同的投资模式,但这些模式在时间上是如何变化的呢?了解这些集群的时间分布有助于金融机构管理由潜在交易者头寸累积而成的整体风险组合。本研究证明,从 20k 名外汇(FX)交易者(2015 年至 2017 年)的真实交易中得出的集群分布符合尤文斯抽样分布(Ewens' Sampling Distribution),从而为该领域做出了贡献。此外,我们还展示了聚合算法(AA),一种带有专家建议的在线预测算法,可应用于上述真实世界数据,以提高交易者风险组合的收益。然而,我们发现,当交易者 "专家 "过多时,特别是当许多交易的整体模式相似时,AA 就会陷入 "困境"。为了帮助克服这一挑战,我们在数据子集上应用并比较了统计验证网络(SVN)和分层聚类方法的使用,结果表明,这两种方法都能在收益率和收益平稳性方面显著改善 AA 的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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