AI RESEARCH
Trainability barriers and opportunities in quantum generative modeling
arXiv CS.LG
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ArXi:2305.02881v2 Announce Type: replace-cross Quantum generative models provide inherently efficient sampling strategies and thus show promise for achieving an advantage using quantum hardware. In this work, we investigate the barriers to the trainability of quantum generative models posed by barren plateaus and exponential loss concentration. We explore the interplay between explicit and implicit models and losses, and show that using quantum generative models with explicit losses such as the KL divergence leads to a new flavour of barren plateaus.