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map list to bin numbers

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map list to bin numbers


quantilization (if that is a word)Map efficiently over duplicates in listGenerating a list of cubefree numbersIs there an equivalent to MATLAB's linspace?Convert a list of hexadecimal numbers to decimalTaking one list Mod a second listlist of items and group of alternative itemsHow find numbers in this list of inequalities?Selecting list entries with a True False index list of similar lengthReplace element in array by checking condition in another listAttempting to fill a table with the number of elements in each bin and make a table with the elements in the bins?













1












$begingroup$


Does WL have the equivalent of Matlab's discretize or NumPy's digitize? I.e., a function that takes a length-N list and a list of bin edges and returns a length-N list of bin numbers, mapping each list item to its bin number?










share|improve this question











$endgroup$












  • $begingroup$
    HistogramList seems similar. This could also be done efficiently with GroupBy and some easy little Compile-d selection determiner. Or maybe hit it first with Sort then write something that only checks the next bin up. Again, can be easily Compile-d.
    $endgroup$
    – b3m2a1
    5 hours ago












  • $begingroup$
    I need it to work like a map (in terms of the order of the items in the resulting list). Of course it is possible to write something ...
    $endgroup$
    – Alan
    4 hours ago












  • $begingroup$
    Related: 140577
    $endgroup$
    – Carl Woll
    59 mins ago


















1












$begingroup$


Does WL have the equivalent of Matlab's discretize or NumPy's digitize? I.e., a function that takes a length-N list and a list of bin edges and returns a length-N list of bin numbers, mapping each list item to its bin number?










share|improve this question











$endgroup$












  • $begingroup$
    HistogramList seems similar. This could also be done efficiently with GroupBy and some easy little Compile-d selection determiner. Or maybe hit it first with Sort then write something that only checks the next bin up. Again, can be easily Compile-d.
    $endgroup$
    – b3m2a1
    5 hours ago












  • $begingroup$
    I need it to work like a map (in terms of the order of the items in the resulting list). Of course it is possible to write something ...
    $endgroup$
    – Alan
    4 hours ago












  • $begingroup$
    Related: 140577
    $endgroup$
    – Carl Woll
    59 mins ago
















1












1








1





$begingroup$


Does WL have the equivalent of Matlab's discretize or NumPy's digitize? I.e., a function that takes a length-N list and a list of bin edges and returns a length-N list of bin numbers, mapping each list item to its bin number?










share|improve this question











$endgroup$




Does WL have the equivalent of Matlab's discretize or NumPy's digitize? I.e., a function that takes a length-N list and a list of bin edges and returns a length-N list of bin numbers, mapping each list item to its bin number?







list-manipulation data






share|improve this question















share|improve this question













share|improve this question




share|improve this question








edited 1 hour ago









Carl Woll

73k396189




73k396189










asked 5 hours ago









AlanAlan

6,6331125




6,6331125












  • $begingroup$
    HistogramList seems similar. This could also be done efficiently with GroupBy and some easy little Compile-d selection determiner. Or maybe hit it first with Sort then write something that only checks the next bin up. Again, can be easily Compile-d.
    $endgroup$
    – b3m2a1
    5 hours ago












  • $begingroup$
    I need it to work like a map (in terms of the order of the items in the resulting list). Of course it is possible to write something ...
    $endgroup$
    – Alan
    4 hours ago












  • $begingroup$
    Related: 140577
    $endgroup$
    – Carl Woll
    59 mins ago




















  • $begingroup$
    HistogramList seems similar. This could also be done efficiently with GroupBy and some easy little Compile-d selection determiner. Or maybe hit it first with Sort then write something that only checks the next bin up. Again, can be easily Compile-d.
    $endgroup$
    – b3m2a1
    5 hours ago












  • $begingroup$
    I need it to work like a map (in terms of the order of the items in the resulting list). Of course it is possible to write something ...
    $endgroup$
    – Alan
    4 hours ago












  • $begingroup$
    Related: 140577
    $endgroup$
    – Carl Woll
    59 mins ago


















$begingroup$
HistogramList seems similar. This could also be done efficiently with GroupBy and some easy little Compile-d selection determiner. Or maybe hit it first with Sort then write something that only checks the next bin up. Again, can be easily Compile-d.
$endgroup$
– b3m2a1
5 hours ago






$begingroup$
HistogramList seems similar. This could also be done efficiently with GroupBy and some easy little Compile-d selection determiner. Or maybe hit it first with Sort then write something that only checks the next bin up. Again, can be easily Compile-d.
$endgroup$
– b3m2a1
5 hours ago














$begingroup$
I need it to work like a map (in terms of the order of the items in the resulting list). Of course it is possible to write something ...
$endgroup$
– Alan
4 hours ago






$begingroup$
I need it to work like a map (in terms of the order of the items in the resulting list). Of course it is possible to write something ...
$endgroup$
– Alan
4 hours ago














$begingroup$
Related: 140577
$endgroup$
– Carl Woll
59 mins ago






$begingroup$
Related: 140577
$endgroup$
– Carl Woll
59 mins ago












2 Answers
2






active

oldest

votes


















4












$begingroup$

This is a very quick-n-dirty, but may serve as a simple example.



This creates a piecewise function following the first definition in Matlab's discretize documentation, then applies that to the data.



disc[data_, edges_] := Module[{e = Partition[edges, 2, 1], p, l},
l = Length@e;
Table[Piecewise[
Append[Table[{i, e[[i, 1]] <= x < e[[i, 2]]}, {i, l - 1}]
, {l,e[[l, 1]] <= x <= e[[l, 2]]}]
, "NaN"]
, {x, data}]];


From the first example in the above referenced documentation:



data={1, 1, 2, 3, 6, 5, 8, 10, 4, 4};
edges={2, 4, 6, 8, 10};

disc[data,edges]



{NaN,NaN,1,1,3,2,4,4,2,2}




I'm sure there are more efficient/elegant solutions, and will revisit as time permits.






share|improve this answer









$endgroup$





















    0












    $begingroup$

    Here's a version based on Nearest:



    digitize[edges_] := DigitizeFunction[edges, Nearest[edges -> "Index"]]
    digitize[data_, edges_] := digitize[edges][data]

    DigitizeFunction[edges_, nf_NearestFunction][data_] := With[{init = nf[data][[All, 1]]},
    init + UnitStep[data - edges[[init]]] - 1
    ]


    For example:



    SeedRandom[1]
    data = RandomReal[10, 10]
    digitize[data, {2, 4, 5, 7, 8}]



    {8.17389, 1.1142, 7.89526, 1.87803, 2.41361, 0.657388, 5.42247, 2.31155, 3.96006, 7.00474}



    {5, 0, 4, 0, 1, 0, 3, 1, 1, 4}




    Note that I broke up the definition of digitize into two pieces, so that if you do this for multiple data sets with the same edges list, you only need to compute the nearest function once.






    share|improve this answer











    $endgroup$














      Your Answer





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      2 Answers
      2






      active

      oldest

      votes








      2 Answers
      2






      active

      oldest

      votes









      active

      oldest

      votes






      active

      oldest

      votes









      4












      $begingroup$

      This is a very quick-n-dirty, but may serve as a simple example.



      This creates a piecewise function following the first definition in Matlab's discretize documentation, then applies that to the data.



      disc[data_, edges_] := Module[{e = Partition[edges, 2, 1], p, l},
      l = Length@e;
      Table[Piecewise[
      Append[Table[{i, e[[i, 1]] <= x < e[[i, 2]]}, {i, l - 1}]
      , {l,e[[l, 1]] <= x <= e[[l, 2]]}]
      , "NaN"]
      , {x, data}]];


      From the first example in the above referenced documentation:



      data={1, 1, 2, 3, 6, 5, 8, 10, 4, 4};
      edges={2, 4, 6, 8, 10};

      disc[data,edges]



      {NaN,NaN,1,1,3,2,4,4,2,2}




      I'm sure there are more efficient/elegant solutions, and will revisit as time permits.






      share|improve this answer









      $endgroup$


















        4












        $begingroup$

        This is a very quick-n-dirty, but may serve as a simple example.



        This creates a piecewise function following the first definition in Matlab's discretize documentation, then applies that to the data.



        disc[data_, edges_] := Module[{e = Partition[edges, 2, 1], p, l},
        l = Length@e;
        Table[Piecewise[
        Append[Table[{i, e[[i, 1]] <= x < e[[i, 2]]}, {i, l - 1}]
        , {l,e[[l, 1]] <= x <= e[[l, 2]]}]
        , "NaN"]
        , {x, data}]];


        From the first example in the above referenced documentation:



        data={1, 1, 2, 3, 6, 5, 8, 10, 4, 4};
        edges={2, 4, 6, 8, 10};

        disc[data,edges]



        {NaN,NaN,1,1,3,2,4,4,2,2}




        I'm sure there are more efficient/elegant solutions, and will revisit as time permits.






        share|improve this answer









        $endgroup$
















          4












          4








          4





          $begingroup$

          This is a very quick-n-dirty, but may serve as a simple example.



          This creates a piecewise function following the first definition in Matlab's discretize documentation, then applies that to the data.



          disc[data_, edges_] := Module[{e = Partition[edges, 2, 1], p, l},
          l = Length@e;
          Table[Piecewise[
          Append[Table[{i, e[[i, 1]] <= x < e[[i, 2]]}, {i, l - 1}]
          , {l,e[[l, 1]] <= x <= e[[l, 2]]}]
          , "NaN"]
          , {x, data}]];


          From the first example in the above referenced documentation:



          data={1, 1, 2, 3, 6, 5, 8, 10, 4, 4};
          edges={2, 4, 6, 8, 10};

          disc[data,edges]



          {NaN,NaN,1,1,3,2,4,4,2,2}




          I'm sure there are more efficient/elegant solutions, and will revisit as time permits.






          share|improve this answer









          $endgroup$



          This is a very quick-n-dirty, but may serve as a simple example.



          This creates a piecewise function following the first definition in Matlab's discretize documentation, then applies that to the data.



          disc[data_, edges_] := Module[{e = Partition[edges, 2, 1], p, l},
          l = Length@e;
          Table[Piecewise[
          Append[Table[{i, e[[i, 1]] <= x < e[[i, 2]]}, {i, l - 1}]
          , {l,e[[l, 1]] <= x <= e[[l, 2]]}]
          , "NaN"]
          , {x, data}]];


          From the first example in the above referenced documentation:



          data={1, 1, 2, 3, 6, 5, 8, 10, 4, 4};
          edges={2, 4, 6, 8, 10};

          disc[data,edges]



          {NaN,NaN,1,1,3,2,4,4,2,2}




          I'm sure there are more efficient/elegant solutions, and will revisit as time permits.







          share|improve this answer












          share|improve this answer



          share|improve this answer










          answered 4 hours ago









          ciaociao

          17.4k138109




          17.4k138109























              0












              $begingroup$

              Here's a version based on Nearest:



              digitize[edges_] := DigitizeFunction[edges, Nearest[edges -> "Index"]]
              digitize[data_, edges_] := digitize[edges][data]

              DigitizeFunction[edges_, nf_NearestFunction][data_] := With[{init = nf[data][[All, 1]]},
              init + UnitStep[data - edges[[init]]] - 1
              ]


              For example:



              SeedRandom[1]
              data = RandomReal[10, 10]
              digitize[data, {2, 4, 5, 7, 8}]



              {8.17389, 1.1142, 7.89526, 1.87803, 2.41361, 0.657388, 5.42247, 2.31155, 3.96006, 7.00474}



              {5, 0, 4, 0, 1, 0, 3, 1, 1, 4}




              Note that I broke up the definition of digitize into two pieces, so that if you do this for multiple data sets with the same edges list, you only need to compute the nearest function once.






              share|improve this answer











              $endgroup$


















                0












                $begingroup$

                Here's a version based on Nearest:



                digitize[edges_] := DigitizeFunction[edges, Nearest[edges -> "Index"]]
                digitize[data_, edges_] := digitize[edges][data]

                DigitizeFunction[edges_, nf_NearestFunction][data_] := With[{init = nf[data][[All, 1]]},
                init + UnitStep[data - edges[[init]]] - 1
                ]


                For example:



                SeedRandom[1]
                data = RandomReal[10, 10]
                digitize[data, {2, 4, 5, 7, 8}]



                {8.17389, 1.1142, 7.89526, 1.87803, 2.41361, 0.657388, 5.42247, 2.31155, 3.96006, 7.00474}



                {5, 0, 4, 0, 1, 0, 3, 1, 1, 4}




                Note that I broke up the definition of digitize into two pieces, so that if you do this for multiple data sets with the same edges list, you only need to compute the nearest function once.






                share|improve this answer











                $endgroup$
















                  0












                  0








                  0





                  $begingroup$

                  Here's a version based on Nearest:



                  digitize[edges_] := DigitizeFunction[edges, Nearest[edges -> "Index"]]
                  digitize[data_, edges_] := digitize[edges][data]

                  DigitizeFunction[edges_, nf_NearestFunction][data_] := With[{init = nf[data][[All, 1]]},
                  init + UnitStep[data - edges[[init]]] - 1
                  ]


                  For example:



                  SeedRandom[1]
                  data = RandomReal[10, 10]
                  digitize[data, {2, 4, 5, 7, 8}]



                  {8.17389, 1.1142, 7.89526, 1.87803, 2.41361, 0.657388, 5.42247, 2.31155, 3.96006, 7.00474}



                  {5, 0, 4, 0, 1, 0, 3, 1, 1, 4}




                  Note that I broke up the definition of digitize into two pieces, so that if you do this for multiple data sets with the same edges list, you only need to compute the nearest function once.






                  share|improve this answer











                  $endgroup$



                  Here's a version based on Nearest:



                  digitize[edges_] := DigitizeFunction[edges, Nearest[edges -> "Index"]]
                  digitize[data_, edges_] := digitize[edges][data]

                  DigitizeFunction[edges_, nf_NearestFunction][data_] := With[{init = nf[data][[All, 1]]},
                  init + UnitStep[data - edges[[init]]] - 1
                  ]


                  For example:



                  SeedRandom[1]
                  data = RandomReal[10, 10]
                  digitize[data, {2, 4, 5, 7, 8}]



                  {8.17389, 1.1142, 7.89526, 1.87803, 2.41361, 0.657388, 5.42247, 2.31155, 3.96006, 7.00474}



                  {5, 0, 4, 0, 1, 0, 3, 1, 1, 4}




                  Note that I broke up the definition of digitize into two pieces, so that if you do this for multiple data sets with the same edges list, you only need to compute the nearest function once.







                  share|improve this answer














                  share|improve this answer



                  share|improve this answer








                  edited 57 mins ago

























                  answered 1 hour ago









                  Carl WollCarl Woll

                  73k396189




                  73k396189






























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