Robo-Advisory: From Investing Principles and Algorithms to Future Developments

Adam Grealish, Petter N. Kolm
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引用次数: 7

Abstract

Advances in financial technology have led to the development of easy-to-use online platforms referred to as robo-advisors or digital-advisors, offering automated investment and portfolio management services to retail investors. By leveraging algorithms embodying well-established investment principles and the availability of exchange traded funds (ETFs) and liquid securities in different asset classes, robo-advisors automatically manage client portfolios that deliver similar or better investment performance at a lower cost as compared to traditional financial retail services. In this chapter we explore how robo-advisors translate core investing principles and best practices into algorithms. We discuss client onboarding and algorithmic approaches to client risk assessment and financial planning. We review portfolio strategies available on robo-advisor platforms and algorithmic implementations of ongoing portfolio management and risk monitoring. Since robo-advisors serve individual retail investors, tax management is a focal point on most platforms. We devote substantial attention to automated implementations of a number of tax optimization strategies, including tax-loss harvesting and asset location. Finally, we explore future developments in the robo-advisory space related to goal-based investing, portfolio personalization, and cash management.
机器人咨询:从投资原则和算法到未来发展
金融技术的进步导致了易于使用的在线平台的发展,这些平台被称为机器人顾问或数字顾问,为散户投资者提供自动化投资和投资组合管理服务。通过利用体现成熟投资原则的算法,以及交易所交易基金(etf)和不同资产类别流动性证券的可用性,机器人顾问可以自动管理客户投资组合,与传统金融零售服务相比,这些投资组合可以以更低的成本提供类似或更好的投资业绩。在本章中,我们将探讨机器人投资顾问如何将核心投资原则和最佳实践转化为算法。我们将讨论客户入职和客户风险评估和财务规划的算法方法。我们回顾了机器人顾问平台上可用的投资组合策略以及正在进行的投资组合管理和风险监控的算法实现。由于机器人顾问服务于个人散户投资者,因此税务管理是大多数平台的焦点。我们将大量精力投入到自动化实施的一些税收优化策略,包括税收损失收获和资产定位。最后,我们探讨了机器人咨询领域在基于目标的投资、投资组合个性化和现金管理方面的未来发展。
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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