LGAINESep 30, 2022

Rethinking skip connection model as a learnable Markov chain

arXiv:2209.15278v32 citationsh-index: 32Has Code
Originality Incremental advance
AI Analysis

This work addresses optimization inefficiencies in deep learning models with skip connections, offering a simple regularization technique, but it appears incremental as it builds on existing skip connection paradigms.

The authors tackled the problem of optimizing models with skip connections by reinterpreting them as learnable Markov chains, proposing a penal connection method that improved performance in multi-modal translation and image recognition tasks, though specific numerical gains were not detailed in the abstract.

Over past few years afterward the birth of ResNet, skip connection has become the defacto standard for the design of modern architectures due to its widespread adoption, easy optimization and proven performance. Prior work has explained the effectiveness of the skip connection mechanism from different perspectives. In this work, we deep dive into the model's behaviors with skip connections which can be formulated as a learnable Markov chain. An efficient Markov chain is preferred as it always maps the input data to the target domain in a better way. However, while a model is explained as a Markov chain, it is not guaranteed to be optimized following an efficient Markov chain by existing SGD-based optimizers which are prone to get trapped in local optimal points. In order to towards a more efficient Markov chain, we propose a simple routine of penal connection to make any residual-like model become a learnable Markov chain. Aside from that, the penal connection can also be viewed as a particular model regularization and can be easily implemented with one line of code in the most popular deep learning frameworks~\footnote{Source code: \url{https://github.com/densechen/penal-connection}}. The encouraging experimental results in multi-modal translation and image recognition empirically confirm our conjecture of the learnable Markov chain view and demonstrate the superiority of the proposed penal connection.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes