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Physics foundation series 2026
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350 回視聴19高評価3:35:09matsciencechannel元のリリース: 2026-06-01

Shannon entropy, defined as H = -Σ Pᵢ log₂(Pᵢ), quantifies the average information content of a probability distribution and represents the fundamental limit for lossless data compression. For a sequence of n independent events with probabilities Pᵢ, the minimum number of bits required to store the data reliably is n × H, where H is the Shannon entropy of the distribution. This principle, known as Shannon's data compression theorem, states that typical sequences (those occurring with high probability) can be compressed to approximately nH bits while still allowing reliable decoding, making entropy the ultimate measure of information content in classical systems.

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