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✨ ギャル的キラキラポイント ✨ ● 人間が確率を歪んで(ゆがんで)認識する理由を、脳みそのノイズ(雑音)で説明しちゃう!🤯 ● ベイズ推論(ベイジアンすいろん)っていう、ちょいムズい方法を使って、確率重み関数を解き明かすんだって!賢すぎー!🧠 ● これって、AIとかITの世界で、もっと人間らしいシステムを作るヒントになるってこと!未来が楽しみだね!🚀
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Understanding the representation of probability in the human mind has been of great interest to understanding human decision making. Classical paradoxes in decision making suggest that human perception distorts probability magnitudes. Previous accounts postulate a Probability Weighting Function that transforms perceived probabilities; however, its motivation has been debated. Recent work has sought to motivate this function in terms of noisy representations of probabilities in the human mind. Here, we present an account of the Probability Weighting Function grounded in rational inference over optimal decoding from noisy neural encoding of quantities. We show that our model accurately accounts for behavior in a lottery task and a dot counting task. It further accounts for adaptation to a bimodal short-term prior. Taken together, our results provide a unifying account grounding the human representation of probability in rational inference.