LLMs using in-context learning and fine-tuning on listener experiment data generate equalization settings that align better with population preferences than random sampling or static presets.
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MPS generative model trained to sample Heston model paths for quantum path-dependent option pricing.
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One Prompt, Many Sounds: Modeling Listener Variability in LLM-Based Equalization
LLMs using in-context learning and fine-tuning on listener experiment data generate equalization settings that align better with population preferences than random sampling or static presets.
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Time series generation for option pricing on quantum computers using tensor network
MPS generative model trained to sample Heston model paths for quantum path-dependent option pricing.