Unexplainability of Artificial Intelligence Judgments in Kant's Perspective
It addresses the philosophical problem of whether AI can replicate human judgment for researchers in AI ethics and philosophy, but it is incremental as it applies an existing philosophical framework without new empirical results.
This paper investigates the unexplainability of AI judgments by analyzing them through Kant's theory of judgment, identifying AI's uncertainty due to entangled logical forms and arguing that the SoftMax function reframes AI judgments as possibility judgments.
Kant's Critique of Pure Reason, a major contribution to the history of epistemology, proposes a table of categories to elucidate the structure of the a priori principles underlying human judgment. Artificial intelligence (AI) technology, grounded in functionalism, claims to simulate or replicate human judgment. To evaluate this claim, it is necessary to examine whether AI judgments exhibit the essential characteristics of human judgment. This paper investigates the unexplainability of AI judgments through the lens of Kant's theory of judgment. Drawing on Kant's four logical forms-quantity, quality, relation, and modality-this study identifies what may be called AI's uncertainty, a condition in which different forms of judgment become entangled. In particular, with regard to modality, this study argues that the SoftMax function forcibly reframes AI judgments as possibility judgments. Furthermore, since complete definitions in natural language are impossible, words are, by their very nature, ultimately unexplainable; therefore, a fully complete functional implementation is theoretically unattainable.