deep learning data preparation












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I have a text dataset, that contains 6 classes. for each sample, I have the percent value and sum of the 6 percent values is 100% (features are related to each other). For example :



{A:16, B:35, C:7, D:0, E:3, F:40}


how can I feed a deep learning algorithm with this dataset?
I actually want the prediction to be exactly in the shape of training data.










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    0















    I have a text dataset, that contains 6 classes. for each sample, I have the percent value and sum of the 6 percent values is 100% (features are related to each other). For example :



    {A:16, B:35, C:7, D:0, E:3, F:40}


    how can I feed a deep learning algorithm with this dataset?
    I actually want the prediction to be exactly in the shape of training data.










    share|improve this question



























      0












      0








      0


      1






      I have a text dataset, that contains 6 classes. for each sample, I have the percent value and sum of the 6 percent values is 100% (features are related to each other). For example :



      {A:16, B:35, C:7, D:0, E:3, F:40}


      how can I feed a deep learning algorithm with this dataset?
      I actually want the prediction to be exactly in the shape of training data.










      share|improve this question
















      I have a text dataset, that contains 6 classes. for each sample, I have the percent value and sum of the 6 percent values is 100% (features are related to each other). For example :



      {A:16, B:35, C:7, D:0, E:3, F:40}


      how can I feed a deep learning algorithm with this dataset?
      I actually want the prediction to be exactly in the shape of training data.







      keras deep-learning tensorflow-datasets






      share|improve this question















      share|improve this question













      share|improve this question




      share|improve this question








      edited Nov 24 '18 at 8:30







      marjan hamidi

















      asked Nov 24 '18 at 8:17









      marjan hamidimarjan hamidi

      84




      84
























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          Here is what you can do:




          1. First of all, normalize all of your labels and scale them between 0-1.

          2. Use a softmax layer for prediction.


          Here is some code in Keras for intuition:



          model = Sequential()
          model.add(Dense(100, input_dim = x.shape[1], activation='relu'))
          model.add(Dense(y.shape[1], activation='softmax'))
          model.compile(loss='categorical_crossentropy', optimizer='adam')





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            1 Answer
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            1 Answer
            1






            active

            oldest

            votes









            active

            oldest

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            active

            oldest

            votes









            0














            Here is what you can do:




            1. First of all, normalize all of your labels and scale them between 0-1.

            2. Use a softmax layer for prediction.


            Here is some code in Keras for intuition:



            model = Sequential()
            model.add(Dense(100, input_dim = x.shape[1], activation='relu'))
            model.add(Dense(y.shape[1], activation='softmax'))
            model.compile(loss='categorical_crossentropy', optimizer='adam')





            share|improve this answer




























              0














              Here is what you can do:




              1. First of all, normalize all of your labels and scale them between 0-1.

              2. Use a softmax layer for prediction.


              Here is some code in Keras for intuition:



              model = Sequential()
              model.add(Dense(100, input_dim = x.shape[1], activation='relu'))
              model.add(Dense(y.shape[1], activation='softmax'))
              model.compile(loss='categorical_crossentropy', optimizer='adam')





              share|improve this answer


























                0












                0








                0







                Here is what you can do:




                1. First of all, normalize all of your labels and scale them between 0-1.

                2. Use a softmax layer for prediction.


                Here is some code in Keras for intuition:



                model = Sequential()
                model.add(Dense(100, input_dim = x.shape[1], activation='relu'))
                model.add(Dense(y.shape[1], activation='softmax'))
                model.compile(loss='categorical_crossentropy', optimizer='adam')





                share|improve this answer













                Here is what you can do:




                1. First of all, normalize all of your labels and scale them between 0-1.

                2. Use a softmax layer for prediction.


                Here is some code in Keras for intuition:



                model = Sequential()
                model.add(Dense(100, input_dim = x.shape[1], activation='relu'))
                model.add(Dense(y.shape[1], activation='softmax'))
                model.compile(loss='categorical_crossentropy', optimizer='adam')






                share|improve this answer












                share|improve this answer



                share|improve this answer










                answered Nov 24 '18 at 8:41









                AmirAmir

                7,82764173




                7,82764173
































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