AILGMay 7, 2024

Pragmatist Intelligence: Where the Principle of Usefulness Can Take ANNs

arXiv:2405.04386v1
Originality Synthesis-oriented
AI Analysis

This is an incremental theoretical analysis for researchers in AI philosophy and ethics, with no direct practical application.

The paper explores the connection between model parameter selection in artificial neural networks and neopragmatist epistemological theories, suggesting that this approach reveals inherent links between optimization in machine learning and ethical consequentialism.

Artificial neural networks (ANNs) perform extraordinarily on numerous tasks including classification or prediction, e.g., speech processing and image classification. These new functions are based on a computational model that is enabled to select freely all necessary internal model parameters as long as it eventually delivers the functionality it is supposed to exhibit. Here, we review the connection between the model parameter selection in machine learning (ML) algorithms running on ANNs and the epistemological theory of neopragmatism focusing on the theory's utility and anti-representationalist aspects. To understand the consequences of the model parameter selection of an ANN, we suggest using neopragmatist theories whose implications are well studied. Incidentally, neopragmatism's notion of optimization is also based on utility considerations. This means that applying this approach elegantly reveals the inherent connections between optimization in ML, using a numerical method during the learning phase, and optimization in the ethical theory of consequentialism, where it occurs as a maxim of action. We suggest that these connections originate from the way relevance is calculated in ML systems. This could ultimately reveal a tendency for specific actions in ML systems.

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