Entropy is the average amount of information produced by a source. It is also the minimum number of bits required, on average, to encode the source without losing any information.
When your data corrupts, you are witnessing a violation of the Hamming distance. When your compression algorithm bloats instead of shrinks, you are witnessing low entropy.
Data is fragile. A scratch on a CD, a crackle on a radio wave, or cosmic radiation hitting a memory chip corrupts bits. A '0' flips to a '1'. How do you know? How do you fix it? Introduction To Coding And Information Theory Steven Roman
Why the logarithm? Because information is additive. If you flip two coins, the total surprise is the sum of the individual surprises. The logarithm turns multiplication of probabilities into addition of information. The most famous equation in information theory is Entropy ( H ):
If I tell you something you already know (e.g., "The sun will rise tomorrow"), I have transmitted very little information. If I tell you something shocking (e.g., "The sun did not rise today"), I have transmitted a massive amount of information. Entropy is the average amount of information produced
If you receive a 7-bit string, you run the parity checks. The result (called the syndrome) is a binary number from 001 to 111. That number tells you exactly which bit to flip to fix the message.
[ h(x) = -\log_2(p) ]
When most people hear the word "code," they think of spies, secret languages, or JavaScript. When they hear "information," they think of news or data. But in the mathematical universe, these two concepts are married in a beautiful, rigorous dance that underpins every text message, every streaming video, and every photograph from Mars.
In Shannon’s world,
Mathematically, the information content ( h(x) ) of an event ( x ) with probability ( p ) is:
This is not a tutorial on Python. This is an exploration of the mathematical bones of the digital age. Before Claude Shannon, the father of information theory, information was a philosophical or semantic concept. Shannon did something radical: he stripped meaning away entirely. When your compression algorithm bloats instead of shrinks,