In information theory, the noisy-channel coding theorem establishes that however contaminated with noise interference a communication channel may be, it is possible to communicate digital data (information) error-free up to a given maximum rate through the channel. This surprising result, sometimes called the fundamental theorem of information theory, or just Shannon's theorem, was first presented by Claude Shannon in 1948.
The Shannon limit or Shannon capacity of a communications channel is the theoretical maximum information transfer rate of the channel, for a particular noise level.
Proved by Claude Shannon in 1948, the theorem describes the maximum possible efficiency of error-correcting methods versus levels of noise interference and data corruption. The theory doesn't describe how to construct the error-correcting method, it only tells us how good the best possible method can be. Shannon's theorem has wide-ranging applications in both communications and data storage applications. This theorem is of foundational importance to the modern field of information theory.
The Shannon theorem states that given a noisy channel with information capacity C and information transmitted at a rate R, then if
there exists a coding technique which allows the probability of error at the receiver to be made arbitrarily small. This means that theoretically, it is possible to transmit information without error up to a limiting rate, C.
The converse is also important. If
an arbitrarily small probability of error is not achievable. So, information cannot be guaranteed to be transmitted reliably across a channel at rates beyond the channel capacity. The theorem does not address the rare situation in which rate and capacity are equal.
Simple schemes such as "send the message 3 times and use at best 2 out of 3 voting scheme if the copies differ" are inefficient error-correction methods, unable to asymptotically guarantee that a block of data can be communicated free of error. Advanced techniques such as Reed-Solomon codes and, more recently, Turbo codes come much closer to reaching the theoretical Shannon limit, but at a cost of high computational complexity. With Turbo codes and the computing power in today's digital signal processors, it is now possible to reach within 1/10 of one decibel of the Shannon limit.
Theorem (Shannon, 1948):
(MacKay (2003), p. 162; cf Gallager (1968), ch.5; Cover and Thomas (1991), p. 198; Shannon (1948) thm. 11)
As with several other major results in information theory, the proof of the noisy channel coding theorem includes an achievability result and a matching converse result. These two components serve to bound, in this case, the set of possible rates at which one can communicate over a noisy channel, and matching serves to show that these bounds are tight bounds.
The following outlines are only one set of many different styles available for study in information theory texts.
This particular proof of achievability follows the style of proofs that make use of the Asymptotic equipartition property(AEP). Another style can be found in information theory texts using Error Exponents.
Both types of proofs make use of a random coding argument where the codebook used across a channel is randomly constructed - this serves to reduce computational complexity while still proving the existence of a code satisfying a desired low probability of error at any data rate below the Channel capacity.
By an AEP-related argument, given a channel, length n strings of source symbols , and length n strings of channel outputs , we can define a jointly typical set by the following:
We say that two sequences vĂ are jointly typical if they lie in the jointly typical set defined above.
Steps
The probability of error of this scheme is divided into two parts:
Define:
as the event that message i is jointly typical with the sequence received when message 1 is sent.
We can observe that as n goes to infinity, if for the channel, the probability of error will go to 0.
Finally, given that the average codebook is shown to be "good," we know that there exists a codebook whose performance is better than the average, and so satisfies our need for arbitrarily low error probability communicating across the noisy channel.
Suppose a code of codewords. Let W be drawn uniformly over this set as an index. Let and be the codewords and received codewords, respectively.
The result of these steps is that . As the block length n goes to infinity, we obtain is bounded away from 0 if R is greater than C - we can only get arbitrarily low rates of error if R is less than C.
Then the channel capacity is given by
The maximum is attained at the capacity achieving distributions for each respective channel. That is, where is the capacity of the ith channel.
The technicality of lim inf comes into play when does not converge.
This article is licensed under the GNU Free Documentation License.
It uses material from the
"Noisy channel coding theorem".
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