A Plea for History and Philosophy of Statistics and Machine Learning
Hanti Lin

TL;DR
This paper advocates for integrating the history and philosophy of statistics and machine learning to better understand their development and shared principles, emphasizing the importance of contextual epistemological standards like achievabilism.
Contribution
It introduces the concept of achievabilism, linking historical insights from Neyman and Pearson to modern machine learning and statistics, fostering interdisciplinary integration.
Findings
Identifies the blurred boundary between statistics and machine learning.
Proposes achievabilism as a new epistemological principle.
Highlights the need for historical and philosophical integration in the field.
Abstract
The integration of the history and philosophy of statistics was initiated at least by Hacking (1975) and advanced by Hacking (1990), Mayo (1996), and Zabell (2005), but it has not received sustained follow-up. Yet such integration is more urgent than ever, as the recent success of artificial intelligence has been driven largely by machine learning -- a field historically developed alongside statistics. Today, the boundary between statistics and machine learning is increasingly blurred. What we now need is integration, twice over: of history and philosophy, and of two fields they engage -- statistics and machine learning. I present a case study of a philosophical idea in machine learning (and in formal epistemology) whose root can be traced back to an often under-appreciated insight in Neyman and Pearson's 1936 work (a follow-up to their 1933 classic). This leads to the articulation of…
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Taxonomy
TopicsPhilosophy and History of Science · Ethics and Social Impacts of AI · Computability, Logic, AI Algorithms
