Characterizing Learning in Deep Neural Networks using Tractable Algorithmic Complexity Analysis
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Computer Science > Machine Learning
Title:Characterizing Learning in Deep Neural Networks using Tractable Algorithmic Complexity Analysis
Abstract:Training large-scale deep neural networks (DNNs) is resource-intensive, making model compression a practical necessity. The widely accepted ''learning as compression'' hypothesis posits that training induces structure in network weights, which enables compression. Measuring this structure through Kolmogorov-Chaitin-Solomonoff (KCS) complexity is appealing, but existing estimators based on the Coding Theorem Method (CTM) and the Block Decomposition Method (BDM) are limited to small binary objects and do not scale to modern DNNs. We introduce the Quantized Block Decomposition method (QuBD), which extends algorithmic complexity estimation to any $k$-ary object. QuBD first quantizes the network weights to a finite alphabet, then estimates the KCS complexity by aggregating per bit-plane CTM estimates. We show theoretically that QuBD yields a strictly tighter estimation gap with respect to true KCS complexity than binarization-based methods. Using QuBD, we study how the algorithmic complexity of neural network weights evolves during training, showing that it decreases as models learn, scales with data budget, increases during overfitting, follows the delayed generalization observed during grokking, and correlates with generalization performance. We further show that algorithmic information resides predominantly in the most significant bit-planes, which can serve as a practical diagnostic for determining appropriate post-training quantization levels. This work offers novel insights into learning mechanisms in DNNs by providing the first scalable, tractable estimates of KCS complexity for large, non-binary objects such as DNN weights.
| Subjects: | Machine Learning (cs.LG) |
| Cite as: | arXiv:2605.15551 [cs.LG] |
| (or arXiv:2605.15551v1 [cs.LG] for this version) | |
| https://doi.org/10.48550/arXiv.2605.15551
arXiv-issued DOI via DataCite (pending registration)
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Submission history
From: Pedram Bakhtiarifard [view email][v1] Fri, 15 May 2026 02:44:25 UTC (2,320 KB)
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