Difference between revisions of "Channel polarization"

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Revision as of 12:03, 7 May 2021

Synthetic channels

In 2007, Erdal Arikan discovered a practical channel coding scheme that achieves the capacity of binary-input discrete memoryless channels. His method relies on a phenomenon now known as channel polarization. First, we observe that achieving the capacity of the following channels with input and output is straightforward:

  • channels where and are one-to-one functions of each other, and
  • channels where is independent of .

The first class of channels is perfect in the sense that we do not need to introduce any redundancy to transmit reliably. In other words, uncoded transmission will suffice. To transmit, five symbols from the source alphabet , we simply pass the five symbols over the channel. Since there is one-to-one correspondence between the input and output alphabets, it is always possible to recover without errors.

The second class of channels is useless in the sense that no matter how much redundancy we add, the channel output will not tell us anything about the input. Since the input and output rvs are independent, and to achieve capacity, we simply not use the channel. (In practice, we can transmit a fixed symbol every time since there is no information if the transmission is not random at all.)

Most other classes fall in the wide space between perfect channels and useless channels. Through a simple operation, we can repeatedly "polarize" a channel so that it ends up as either a near-perfect channel or a near-useless channel.

Let be a binary-input channel with input alphabet , and let be the mutual information between and assuming that is uniformly distributed. In other works, this quantity is referred to as the symmetric capacity. We construct two channels and schematically as shown below:

Polar transform.svg

maps the input to the tuple while maps to the tuple interferes with , we have , and since contains extra information about the input (), . In general, it can be shown that

where and .

Binary symmetric channel

Let be the crossover probability of a binary symmetric channel (BSC).

00 01 10 11
00
01
10
11
00 01 10 11
0
1

It turns out that the channel reduces to another BSC. To see this, consider the case where . To minimize the error probability, we must decide the value of that has the greater likelihood. For , so that the maximum-likelihood (ML) decision is . Using the same argument, we see that the ML decision is for . More generally, the receiver decision is to set . Indeed, if the crossover probability is low, it is very likely that and . Solving for and plugging it back produces the desired result.

00,11 01,10
00
01

We just saw that despite having a quartenary output alphabet, is equivalent to a BSC. To get the effective crossover probability of this synthetic channel, we just determine the probability that the ML decision is not the same as . This will happen with probability . Intuitively, should have less mutual information compared to the original channel since an independent source interferes with on top of the effects of the BSC.

Checkpoint: Show that for , .

Now, let us consider the other synthetic channel . This synthetic channel has a greater mutual information compared to the original BSC due to the "stolen" information about . As with the previous synthetic channel, we can produce the transition probability matrix from to , which now has an eight-element output alphabet. To facilitate the discussion, the columns of the table below have been grouped according to their entries:

000 110 001 010 100 111 011 101
0
1

In the transition probability matrix, we see that there are four columns where the receiver will not be able to tell whether or . We can call such a scenario an erasure, and say that the transmitted bit is erased with probability . Clearly, we cannot reduce this synthetic channel to a BSC since there are no erasures in a BSC. Regardless, we can still come up the following more manageable reduction:

000,110 001,010,100,111 011,101
0
1
Checkpoint: Show that the mutual information is preserved after the reduction.

Binary erasure channel

Let be the erasure probability of a binary erasure channel (BEC). As with the BSC, we can start with the conditional probability of given .

00 0? 01 ?0 ?? ?1 10 1? 11
00
01
10
11

The synthetic channel can be obtained by marginalizing ,

00 0? 01 ?0 ?? ?1 10 1? 11
0
1

A maximum-likelihood receiver will decide that if is more likely than . If there are ties, we declare an erasure, denoted by . This allows us to reduce the nine-element output alphabet into three groups. The receiver declares that if and if if . This is very similar to the XOR decisions in our discussion of the BSC. The difference now is that several combinations may correspond to an erasure. From the table below, it can be seen that is equivalent to a BEC with erasure probability of .

00,11 0?,?0,??,?1,1? 01,11
0
1

The other synthetic channel has an output alphabet of size 18. For brevity, the table below shows the reduced transition probability matrix. Upon inspection, we see that the reduced channel is equivalent to another BEC with erasure probability . For all , which guarantees that has higher mutual information compared to .

000, 00?, 0?0, 1?0, 110, 11? 0??, 1?? 0?1, 01?, 011, 10?, 101, 1?1
0
1

Finally, observe that the capacity of the original BEC is . Since and are also BECs, then their capacities are given by similar expressions. Adding the capacities of the synthetic channels gives twice the capacity of the original channel,