Competitive advantage in algorithmic trading: a behavioral innovation economics approach

IF 1.9 Q2 BUSINESS, FINANCE
Ricky Cooper, W. Currie, J. Seddon, Ben Van Vliet
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Abstract

PurposeThis paper investigates the strategic behavior of algorithmic trading firms from an innovation economics perspective. The authors seek to uncover the sources of competitive advantage these firms develop to make markets inefficient for them and enable their survival.Design/methodology/approachFirst, the authors review expected capability, a quantitative behavioral model of the sustainable, or reliable, profits that lead to survival. Second, they present qualitative data gathered from semi-structured interviews with industry professionals as well as from the academic and industry literatures. They categorize this data into first-order concepts and themes of opportunity-, advantage- and meta-seeking behaviors. Associating the observed sources of competitive advantages with the components of the expected capability model allows us to describe the economic rationale these firms have for developing those sources and explain how they survive.FindingsThe data reveals ten sources of competitive advantages, which the authors label according to known ones in the strategic management literature. We find that, due to the dynamically complex environments and their bounded resources, these firms seek heuristic compromise among these ten, which leads to satisficing. Their application of innovation methodology that prescribes iterative ex post hypothesis testing appears to quell internal conflict among groups and promote organizational survival. The authors believe their results shed light on the behavior and motivations of algorithmic market actors, but also of innovative firms more generally.Originality/valueBased upon their review of the literature, this is the first paper to provide such a complete explanation of the strategic behavior of algorithmic trading firms.
算法交易中的竞争优势:一种行为创新经济学方法
目的从创新经济学的角度研究算法交易公司的战略行为。作者试图揭示这些公司发展竞争优势的来源,使市场对他们来说效率低下,使他们能够生存。设计/方法论/方法首先,作者回顾了预期能力,这是一种量化的行为模型,它是可持续的,或可靠的,导致生存的利润。其次,他们从与行业专业人士的半结构化访谈以及学术和行业文献中收集了定性数据。他们将这些数据分类为一阶概念和机会、优势和元寻求行为的主题。将观察到的竞争优势来源与预期能力模型的组成部分联系起来,使我们能够描述这些公司开发这些资源的经济原理,并解释它们是如何生存的。这些数据揭示了竞争优势的十种来源,作者根据战略管理文献中的已知来源对其进行了标记。我们发现,由于动态复杂的环境和有限的资源,这些企业会在这10种资源中寻求启发式妥协,从而导致满足。他们对创新方法的应用规定了反复的事后假设检验,这似乎平息了群体之间的内部冲突,促进了组织的生存。作者认为,他们的研究结果揭示了算法市场参与者的行为和动机,也揭示了更普遍的创新企业的行为和动机。原创性/价值基于他们对文献的回顾,这是第一篇对算法交易公司的战略行为提供如此完整解释的论文。
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来源期刊
Review of Behavioral Finance
Review of Behavioral Finance BUSINESS, FINANCE-
CiteScore
4.70
自引率
5.00%
发文量
44
期刊介绍: Review of Behavioral Finance publishes high quality original peer-reviewed articles in the area of behavioural finance. The RBF focus is on Behavioural Finance but with a very broad lens looking at how the behavioural attributes of the decision makers influence the financial structure of a company, investors’ portfolios, and the functioning of financial markets. High quality empirical, experimental and/or theoretical research articles as well as well executed literature review articles are considered for publication in the journal.
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