Machine Learning as Iterated Belief Change a la Darwiche and Pearl
Theofanis Aravanis

TL;DR
This paper extends the belief change framework for binary neural networks by applying Darwiche-Pearl's iterated belief change methods, offering a more effective model for training dynamics.
Contribution
It introduces the use of Darwiche-Pearl's belief change operations to better model the training process of binary ANNs within an AGM-style framework.
Findings
Dalal’s belief change method supports structured belief evolution.
Lexicographic revision and moderate contraction improve training models.
Binary ANN training can be formalized as iterated belief change.
Abstract
Artificial Neural Networks (ANNs) are powerful machine-learning models capable of capturing intricate non-linear relationships. They are widely used nowadays across numerous scientific and engineering domains, driving advancements in both research and real-world applications. In our recent work, we focused on the statics and dynamics of a particular subclass of ANNs, which we refer to as binary ANNs. A binary ANN is a feed-forward network in which both inputs and outputs are restricted to binary values, making it particularly suitable for a variety of practical use cases. Our previous study approached binary ANNs through the lens of belief-change theory, specifically the Alchourron, Gardenfors and Makinson (AGM) framework, yielding several key insights. Most notably, we demonstrated that the knowledge embodied in a binary ANN (expressed through its input-output behaviour) can be…
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