Information plane and compression-gnostic feedback in quantum machine learning
The information plane (Tishby et al. arXiv:physics/0004057, Shwartz-Ziv et al. arXiv:1703.00810) has been proposed as an analytical tool for studying the learning dynamics of neural networks. It provides quantitative insight on how the model approaches the learned state by approximating a minimal su...
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Zusammenfassung: | The information plane (Tishby et al. arXiv:physics/0004057, Shwartz-Ziv et
al. arXiv:1703.00810) has been proposed as an analytical tool for studying the
learning dynamics of neural networks. It provides quantitative insight on how
the model approaches the learned state by approximating a minimal sufficient
statistics. In this paper we extend this tool to the domain of quantum learning
models. In a second step, we study how the insight on how much the model
compresses the input data (provided by the information plane) can be used to
improve a learning algorithm. Specifically, we consider two ways to do so: via
a multiplicative regularization of the loss function, or with a
compression-gnostic scheduler of the learning rate (for algorithms based on
gradient descent). Both ways turn out to be equivalent in our implementation.
Finally, we benchmark the proposed learning algorithms on several
classification and regression tasks using variational quantum circuits. The
results demonstrate an improvement in test accuracy and convergence speed for
both synthetic and real-world datasets. Additionally, with one example we
analyzed the impact of the proposed modifications on the performances of neural
networks in a classification task. |
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DOI: | 10.48550/arxiv.2411.02313 |