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ReedMuller code





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Reed–Muller codes are error-correcting codes that are used in wireless communications applications, particularly in deep-space communication.[1] Moreover, the proposed 5G standard[2] relies on the closely related polar codes[3] for error correction in the control channel. Due to their favorable theoretical and mathematical properties, Reed–Muller codes have also been extensively studied in theoretical computer science.

Reed-Muller code RM(r,m)
Named afterIrving S. Reed and David E. Muller
Classification
TypeLinear block code
Block length
Message length
Rate
Distance
Alphabet size
Notation-code
  • t
  • e
  • Reed–Muller codes generalize the Reed–Solomon codes and the Walsh–Hadamard code. Reed–Muller codes are linear block codes that are locally testable, locally decodable, and list decodable. These properties make them particularly useful in the design of probabilistically checkable proofs.

    Traditional Reed–Muller codes are binary codes, which means that messages and codewords are binary strings. When r and m are integers with 0 ≤ rm, the Reed–Muller code with parameters r and m is denoted as RM(rm). When asked to encode a message consisting of k bits, where holds, the RM(rm) code produces a codeword consisting of 2m bits.

    Reed–Muller codes are named after David E. Muller, who discovered the codes in 1954,[4] and Irving S. Reed, who proposed the first efficient decoding algorithm.[5]

    Description using low-degree polynomials

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    Reed–Muller codes can be described in several different (but ultimately equivalent) ways. The description that is based on low-degree polynomials is quite elegant and particularly suited for their application as locally testable codes and locally decodable codes.[6]

    Encoder

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    Ablock code can have one or more encoding functions   that map messages   to codewords  . The Reed–Muller code RM(r, m) has message length   and block length  . One way to define an encoding for this code is based on the evaluation of multilinear polynomials with m variables and total degree at most r. Every multilinear polynomial over the finite field with two elements can be written as follows:   The   are the variables of the polynomial, and the values   are the coefficients of the polynomial. Note that there are exactly   coefficients. With this in mind, an input message consists of   values   which are used as these coefficients. In this way, each message   gives rise to a unique polynomial  inm variables. To construct the codeword  , the encoder evaluates the polynomial   at all points  , where the polynomial is taken with multiplication and addition mod 2  . That is, the encoding function is defined via 

    The fact that the codeword   suffices to uniquely reconstruct   follows from Lagrange interpolation, which states that the coefficients of a polynomial are uniquely determined when sufficiently many evaluation points are given. Since   and   holds for all messages  , the function   is a linear map. Thus the Reed–Muller code is a linear code.

    Example

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    For the code RM(2, 4), the parameters are as follows:

     

    Let   be the encoding function just defined. To encode the string x = 1 1010 010101 of length 11, the encoder first constructs the polynomial   in 4 variables: Then it evaluates this polynomial at all 16 evaluation points (0101 means  :  

     

     

     As a result, C(1 1010 010101) = 1101 1110 0001 0010 holds.

    Decoder

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    As was already mentioned, Lagrange interpolation can be used to efficiently retrieve the message from a codeword. However, a decoder needs to work even if the codeword has been corrupted in a few positions, that is, when the received word is different from any codeword. In this case, a local decoding procedure can help.

    The algorithm from Reed is based on the following property: you start from the code word, that is a sequence of evaluation points from an unknown polynomial  of  of degree at most   that you want to find. The sequence may contains any number of errors up to   included.

    If you consider a monomial   of the highest degree  in  and sum all the evaluation points of the polynomial where all variables in   have the values 0 or 1, and all the other variables have value 0, you get the value of the coefficient (0 or 1) of  in  (There are   such points). This is due to the fact that all lower monomial divisors of   appears an even number of time in the sum, and only   appears once.

    To take into account the possibility of errors, you can also remark that you can fix the value of other variables to any value. So instead of doing the sum only once for other variables not in   with 0 value, you do it   times for each fixed valuations of the other variables. If there is no error, all those sums should be equals to the value of the coefficient searched. The algorithm consists here to take the majority of the answers as the value searched. If the minority is larger than the maximum number of errors possible, the decoding step fails knowing there are too many errors in the input code.

    Once a coefficient is computed, if it's 1, update the code to remove the monomial   from the input code and continue to next monomial, in reverse order of their degree.

    Example

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    Let's consider the previous example and start from the code. With   we can fix at most 1 error in the code. Consider the input code as 1101 1110 0001 0110 (this is the previous code with one error).

    We know the degree of the polynomial   is at most  , we start by searching for monomial of degree 2.

    The four sums don't agree (so we know there is an error), but the minority report is not larger than the maximum number of error allowed (1), so we take the majority and the coefficient of   is 1.

    We remove   from the code before continue : code : 1101 1110 0001 0110, valuation of   is 0001000100010001, the new code is 1100 1111 0000 0111

    One error detected, coefficient is 0, no change to current code.

    One error detected, coefficient is 0, no change to current code.

    One error detected, coefficient is 1, valuation of   is 0000 0011 0000 0011, current code is now 1100 1100 0000 0100.

    One error detected, coefficient is 1, valuation of   is 0000 0000 0011 0011, current code is now 1100 1100 0011 0111.

    One error detected, coefficient is 0, no change to current code. We know now all coefficient of degree 2 for the polynomial, we can start mononials of degree 1. Notice that for each next degree, there are twice as much sums, and each sums is half smaller.

    One error detected, coefficient is 0, no change to current code.

    One error detected, coefficient is 1, valuation of   is 0011 0011 0011 0011, current code is now 1111 1111 0000 0100.

    Then we'll find 0 for  , 1 for   and the current code become 1111 1111 1111 1011.

    For the degree 0, we have 16 sums of only 1 bit. The minority is still of size 1, and we found   and the corresponding initial word 1 1010 010101

    Generalization to larger alphabets via low-degree polynomials

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    Using low-degree polynomials over a finite field   of size  , it is possible to extend the definition of Reed–Muller codes to alphabets of size  . Let   and   be positive integers, where   should be thought of as larger than  . To encode a message   of width  , the message is again interpreted as an  -variate polynomial   of total degree at most   and with coefficient from  . Such a polynomial indeed has   coefficients. The Reed–Muller encoding of   is the list of all evaluations of   over all  . Thus the block length is  .

    Description using a generator matrix

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    Agenerator matrix for a Reed–Muller code RM(r, m) of length N = 2m can be constructed as follows. Let us write the set of all m-dimensional binary vectors as:

     

    We define in N-dimensional space   the indicator vectors

     

    on subsets   by:

     

    together with, also in  , the binary operation

     

    referred to as the wedge product (not to be confused with the wedge product defined in exterior algebra). Here,   and   are points in   (N-dimensional binary vectors), and the operation   is the usual multiplication in the field  .

      is an m-dimensional vector space over the field  , so it is possible to write

     

    We define in N-dimensional space   the following vectors with length   and

     

    where 1 ≤ i ≤ m and the Hi are hyperplanesin  (with dimension m − 1):

     

    The generator matrix

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    The Reed–Muller RM(r, m) code of order r and length N = 2m is the code generated by v0 and the wedge products of up to r of the vi, 1 ≤ im (where by convention a wedge product of fewer than one vector is the identity for the operation). In other words, we can build a generator matrix for the RM(r, m) code, using vectors and their wedge product permutations up to r at a time  , as the rows of the generator matrix, where 1 ≤ ikm.

    Example 1

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    Let m = 3. Then N = 8, and

     

    and

     

    The RM(1,3) code is generated by the set

     

    or more explicitly by the rows of the matrix:

     

    Example 2

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    The RM(2,3) code is generated by the set:

     

    or more explicitly by the rows of the matrix:

     

    Properties

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    The following properties hold:

    1. The set of all possible wedge products of up to m of the vi form a basis for  .
    2. The RM (r, m) code has rank
       
    3. RM (r, m) = RM (r, m− 1) | RM (r − 1, m − 1) where '|' denotes the bar product of two codes.
    4. RM (r, m) has minimum Hamming weight2mr.

    Proof

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    1. There are
       

    such vectors and   have dimension N so it is sufficient to check that the N vectors span; equivalently it is sufficient to check that  .

    Let x be a binary vector of length m, an element of X. Let (x)i denote the ith element of x. Define

     

    where 1 ≤ im.

    Then  

    Expansion via the distributivity of the wedge product gives  . Then since the vectors   span   we have  .
  • By1, all such wedge products must be linearly independent, so the rank of RM(r, m) must simply be the number of such vectors.
  • Omitted.
  • By induction.
    The RM(0, m) code is the repetition code of length N =2m and weight N = 2m−0 = 2mr. By 1   and has weight 1 = 20 = 2mr.
    The article bar product (coding theory) gives a proof that the weight of the bar product of two codes C1 , C2 is given by
     
    If 0 < r < m and if

    1. RM(r,m − 1) has weight 2m−1−r
    2. RM(r − 1,m − 1) has weight 2m−1−(r−1) = 2mr

    then the bar product has weight
     
  • Decoding RM codes

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    RM(r, m) codes can be decoded using majority logic decoding. The basic idea of majority logic decoding is to build several checksums for each received code word element. Since each of the different checksums must all have the same value (i.e. the value of the message word element weight), we can use a majority logic decoding to decipher the value of the message word element. Once each order of the polynomial is decoded, the received word is modified accordingly by removing the corresponding codewords weighted by the decoded message contributions, up to the present stage. So for a rth order RM code, we have to decode iteratively r+1, times before we arrive at the final received code-word. Also, the values of the message bits are calculated through this scheme; finally we can calculate the codeword by multiplying the message word (just decoded) with the generator matrix.

    One clue if the decoding succeeded, is to have an all-zero modified received word, at the end of (r + 1)-stage decoding through the majority logic decoding. This technique was proposed by Irving S. Reed, and is more general when applied to other finite geometry codes.

    Description using a recursive construction

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    A Reed–Muller code RM(r,m) exists for any integers   and  . RM(m, m) is defined as the universe ( ) code. RM(−1,m) is defined as the trivial code ( ). The remaining RM codes may be constructed from these elementary codes using the length-doubling construction

     

    From this construction, RM(r,m) is a binary linear block code (n, k, d) with length n = 2m, dimension   and minimum distance   for  . The dual code to RM(r,m) is RM(m-r-1,m). This shows that repetition and SPC codes are duals, biorthogonal and extended Hamming codes are duals and that codes with k = n/2 are self-dual.

    Special cases of Reed–Muller codes

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    Table of all RM(r,m) codes for m≤5

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    All RM(rm) codes with   and alphabet size 2 are displayed here, annotated with the standard [n,k,d] coding theory notation for block codes. The code RM(rm) is a  -code, that is, it is a linear code over a binary alphabet, has block length  , message length (or dimension) k, and minimum distance  .

    0 1 2 3 4 5 m
    RM(m,m)
    (2m, 2m, 1)
    universe codes
    RM(5,5)
    (32,32,1)
    RM(4,4)
    (16,16,1)
    RM(m − 1, m)
    (2m, 2m−1, 2)
    SPC codes
    RM(3,3)
    (8,8,1)
    RM(4,5)
    (32,31,2)
    RM(2,2)
    (4,4,1)
    RM(3,4)
    (16,15,2)
    RM(m − 2, m)
    (2m, 2mm−1, 4)
    extended Hamming codes
    RM(1,1)
    (2,2,1)
    RM(2,3)
    (8,7,2)
    RM(3,5)
    (32,26,4)
    RM(0,0)
    (1,1,1)
    RM(1,2)
    (4,3,2)
    RM(2,4)
    (16,11,4)
    RM(0,1)
    (2,1,2)
    RM(1,3)
    (8,4,4)
    RM(2,5)
    (32,16,8)
    RM(r, m=2r+1)
    (22r+1, 22r, 2r+1)
    self-dual codes
    RM(−1,0)
    (1,0, )
    RM(0,2)
    (4,1,4)
    RM(1,4)
    (16,5,8)
    RM(−1,1)
    (2,0, )
    RM(0,3)
    (8,1,8)
    RM(1,5)
    (32,6,16)
    RM(−1,2)
    (4,0, )
    RM(0,4)
    (16,1,16)
    RM(1,m)
    (2m, m+1, 2m−1)
    punctured Hadamard codes
    RM(−1,3)
    (8,0, )
    RM(0,5)
    (32,1,32)
    RM(−1,4)
    (16,0, )
    RM(0,m)
    (2m, 1, 2m)
    repetition codes
    RM(−1,5)
    (32,0, )
    RM(−1,m)
    (2m, 0, ∞)
    trivial codes

    Properties of RM(r,m) codes for r≤1 or r≥m-1

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    References

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    1. ^ Massey, James L. (1992), "Deep-space communications and coding: A marriage made in heaven", Advanced Methods for Satellite and Deep Space Communications, Lecture Notes in Control and Information Sciences, vol. 182, Springer-Verlag, pp. 1–17, CiteSeerX 10.1.1.36.4265, doi:10.1007/bfb0036046, ISBN 978-3540558514pdf
  • ^ "3GPP RAN1 meeting #87 final report". 3GPP. Retrieved 31 August 2017.
  • ^ Arikan, Erdal (2009). "Channel Polarization: A Method for Constructing Capacity-Achieving Codes for Symmetric Binary-Input Memoryless Channels - IEEE Journals & Magazine". IEEE Transactions on Information Theory. 55 (7): 3051–3073. arXiv:0807.3917. doi:10.1109/TIT.2009.2021379. hdl:11693/11695. S2CID 889822.
  • ^ Muller, David E. (1954). "Application of Boolean algebra to switching circuit design and to error detection". Transactions of the I.R.E. Professional Group on Electronic Computers. EC-3 (3): 6–12. doi:10.1109/irepgelc.1954.6499441. ISSN 2168-1740.
  • ^ Reed, Irving S. (1954). "A class of multiple-error-correcting codes and the decoding scheme". Transactions of the IRE Professional Group on Information Theory. 4 (4): 38–49. doi:10.1109/tit.1954.1057465. hdl:10338.dmlcz/143797. ISSN 2168-2690.
  • ^ Prahladh Harsha et al., Limits of Approximation Algorithms: PCPs and Unique Games (DIMACS Tutorial Lecture Notes), Section 5.2.1.
  • ^ Trellis and Turbo Coding, C. Schlegel & L. Perez, Wiley Interscience, 2004, p149.
  • Further reading

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    Retrieved from "https://en.wikipedia.org/w/index.php?title=Reed–Muller_code&oldid=1233996880"
     



    Last edited on 12 July 2024, at 01:27  





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