
TL;DR
This paper offers a classical perspective on quantum supervised learning algorithms, aiming to bridge traditional machine learning with quantum advancements and foster interdisciplinary understanding for future progress.
Contribution
It provides a novel classical framework for understanding quantum supervised learning, diverging from typical quantum-centric approaches and emphasizing classical principles.
Findings
Bridges classical and quantum supervised learning methodologies.
Highlights the potential impact of quantum approaches from a classical perspective.
Lays groundwork for future interdisciplinary research in quantum machine learning.
Abstract
Recent advancements in quantum computing have positioned it as a prospective solution for tackling intricate computational challenges, with supervised learning emerging as a promising domain for its application. Despite this potential, the field of quantum machine learning is still in its early stages, and there persists a level of skepticism regarding a possible near-term quantum advantage. This paper aims to provide a classical perspective on current quantum algorithms for supervised learning, effectively bridging traditional machine learning principles with advancements in quantum machine learning. Specifically, this study charts a research trajectory that diverges from the predominant focus of quantum machine learning literature, originating from the prerequisites of classical methodologies and elucidating the potential impact of quantum approaches. Through this exploration, our…
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