Matrix: LPnetlib/lp_standmps

Description: Netlib LP problem standmps: minimize c'*x, where Ax=b, lo<=x<=hi

LPnetlib/lp_standmps graph
(bipartite graph drawing)


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  • Matrix group: LPnetlib
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  • download as a MATLAB mat-file, file size: 9 KB. Use UFget(694) or UFget('LPnetlib/lp_standmps') in MATLAB.
  • download in Matrix Market format, file size: 15 KB.
  • download in Rutherford/Boeing format, file size: 12 KB.

    Matrix properties
    number of rows467
    number of columns1,274
    structural full rank?yes
    structural rank467
    # of blocks from dmperm1
    # strongly connected comp.1
    explicit zero entries0
    nonzero pattern symmetry 0%
    numeric value symmetry 0%
    Cholesky candidate?no
    positive definite?no

    authorR. Fourer
    editorR. Fourer
    kindlinear programming problem
    2D/3D problem?no

    Additional fieldssize and type
    bfull 467-by-1
    cfull 1274-by-1
    lofull 1274-by-1
    hifull 1274-by-1
    z0full 1-by-1


    A Netlib LP problem, in lp/data.  For more information                    
    send email to with the message:                           
    	 send index from lp                                                      
    	 send readme from lp/data                                                
    The following are relevant excerpts from lp/data/readme (by David M. Gay):
    The column and nonzero counts in the PROBLEM SUMMARY TABLE below exclude  
    slack and surplus columns and the right-hand side vector, but include     
    the cost row.  We have omitted other free rows and all but the first      
    right-hand side vector, as noted below.  The byte count is for the        
    MPS compressed file; it includes a newline character at the end of each   
    line.  These files start with a blank initial line intended to prevent    
    mail programs from discarding any of the data.  The BR column indicates   
    whether a problem has bounds or ranges:  B stands for "has bounds", R     
    for "has ranges".  The BOUND-TYPE TABLE below shows the bound types       
    present in those problems that have bounds.                               
    The optimal value is from MINOS version 5.3 (of Sept. 1988)               
    running on a VAX with default options.                                    
                           PROBLEM SUMMARY TABLE                              
    Name       Rows   Cols   Nonzeros    Bytes  BR      Optimal Value         
    STANDMPS    468   1075     3686      29839  B     1.4060175000E+03        
            BOUND-TYPE TABLE                                                  
    STANDMPS   UP    FX                                                       
    Supplied by Bob Fourer.                                                   
    STANDGUB includes GUB markers; with these lines removed (lines in         
    the expanded MPS file that contain primes, i.e., that mention the rows    
    'EGROUP' and 'ENDX'), STANDGUB becomes the same as problem STANDATA;      
    MINOS does not understand the GUB markers, so we cannot report an         
    optimal value from MINOS for STANDGUB.  STANDMPS amounts to STANDGUB      
    with the GUB constraints as explicit constraints.                         
    Source: consulting.                                                       

    Ordering statistics:result
    nnz(V) for QR, upper bound nnz(L) for LU, with COLAMD48,318
    nnz(R) for QR, upper bound nnz(U) for LU, with COLAMD5,419

    SVD-based statistics:
    null space dimension0
    full numerical rank?yes

    singular values (MAT file):click here
    SVD method used:s = svd (full (A)) ;

    LPnetlib/lp_standmps svd

    For a description of the statistics displayed above, click here.

    Maintained by Tim Davis, last updated 12-Mar-2014.
    Matrix pictures by cspy, a MATLAB function in the CSparse package.
    Matrix graphs by Yifan Hu, AT&T Labs Visualization Group.