[AAAI 2023 Oral] Contrastive Identity-Aware Learning for Multi-Agent Value Decomposition
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Updated
Jun 3, 2024 - Python
[AAAI 2023 Oral] Contrastive Identity-Aware Learning for Multi-Agent Value Decomposition
This article explores the theory behind explainable car pricing using value decomposition, showing how machine learning models can break a predicted price into intuitive components such as brand premium, age depreciation, mileage influence, condition effects, and transmission or fuel-type adjustments.
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