Quantum Embedding with Transformer for High-dimensional Data

20 Feb 2024  ·  Hao-Yuan Chen, Yen-Jui Chang, Shih-wei Liao, Ching-Ray Chang ·

Quantum embedding with transformers is a novel and promising architecture for quantum machine learning to deliver exceptional capability on near-term devices or simulators. The research incorporated a vision transformer (ViT) to advance quantum significantly embedding ability and results for a single qubit classifier with around 3 percent in the median F1 score on the BirdCLEF-2021, a challenging high-dimensional dataset. The study showcases and analyzes empirical evidence that our transformer-based architecture is a highly versatile and practical approach to modern quantum machine learning problems.

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