Information Theory and Coding
a known probability distribution for any given natural language. An analog speech signal represented by a voltage or sound pressure wave-form as a function of time (perhaps with added noise), is a continuous random variable having a continuous probability density function. Most of Information Theory involves probability distributions of ran-
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