On the Non-associativity of Analog Computations


연구 분야: Verification



학회: Joint European Conference on Machine Learning and Knowledge Discovery in Databases


초록

The energy efficiency of analog forms of computing makes it one of the most promising candidates to deploy resource-hungry machine learning tasks on resource-constrained system such as mobile or embedded devices. However, it is well known that for analog computations the safety net of discretization is missing, thus all analog computations are exposed to a variety of imperfections of corresponding implementations. Examples include non-linearities, saturation effect and various forms of noise. In this work, we observe that the ordering of input operands of an analog operation also has an impact on the output result, which essentially makes analog computations non-associative, even though the underlying operation might be mathematically associative. We conduct a simple test by creating a model of a real analog processor which captures such ordering effects. With this model we assess the importance of ordering by comparing the test accuracy of a neural network for keyword spotting, which is trained based either on an ordered model, on a non-ordered variant, and on real hardware. The results prove the existence of ordering effects as well as their high impact, as neglecting ordering results in substantial accuracy drops.


Author Profile
Lisa Kuhn

Institute of Computer Engineering Heidelberg University Heidelberg Germany

Germany
Author Profile
Bernhard Klein

Institute of Computer Engineering Heidelberg University Heidelberg Germany

Germany
Author Profile
Holger Fröning

Institute of Computer Engineering Heidelberg University Heidelberg Germany

Germany

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발행 연도 2025년
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출판 국가 Germany
사이트 Springer
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