民族志方法研究算法:理解无知的对象

On studying algorithms ethnographically: Making sense of objects of ignorance

ORGANIZATION · 2018
被引 97
人大 A-ABS 3

中文导读

探讨如何用民族志方法研究金融算法,将其视为“无知的对象”,分析高频交易中算法带来的认识论和方法论挑战,并发展出解释算法的类型学。

Abstract

In this article, we make sense of financial algorithms as new objects of concern for organizational ethnography. We conceive of algorithms as ‘objects of ignorance’ jeopardizing traditional ethnography from the perspective of its categories and methods. We investigate the organizational politics taking place within high-frequency trading – a sub-field of algorithmic trading where automated decision-making without human direction has reached a peak, and show that financial algorithms raise particular epistemic and methodological challenges for practitioners and ethnographers alike. Consequently, we develop a typology for various interpretations of algorithms as ethnographic objects, accounting for their structural ignorance and shedding light on a continuum of the changing human-machine/trader-algorithm relation. To this end, we use the concepts of ‘quasi-object’ and ‘quasi-subject’ as developed by Michel Serres, and make the point that in order to study financial algorithms ethnographically, we need to think anew the dynamic relationship they embody, and acknowledge their constitutive heterogeneity.

组织民族志高频交易算法研究知识社会学