0

I am reading multiple csv files and loading their information into pandas dataframe. I am trying to classify each file as being label 0 or label 1 from the target column, and each file has features with multiple values. I am having a bit of trouble finding the best approach to building a structure that can be properly processed using SVM classification model with sklearn

example dataframe: image example of the dataframe structure.

file  [1st feature] -  [2nd feature] -  [target]

0 -   [20,30,10...]  -  [0,1,2,3,4]  -   0

1 -   [10,50,20...] - [1,2,0,4,3]  -     1

2 -   [20,30,40...] - [2,4,0,1,3]  -     1

3 -   [50,10,40...] - [0,1,2,3,4]  -     1

Example Code I used to read the csv files into the dataframe:

    os.chdir("E:\Research Machine Learning\ComputerDebugging\option1")
    extension = 'csv'
    all_files = [i for i in glob.glob('*.{}'.format(extension))]

    #new DataFrame
    df1 = pd.DataFrame(columns=["%CPU","PID",'TimeStamp','target'])

    fields=["%CPU","PID",'TimeStamp']


    for f in all_files:
        files.append(f)
        bugs = pd.read_csv(f, header=0,usecols=fields,nrows=1800)
        bugs.sort_values(by=['TimeStamp','PID'], inplace=True)
        CPU =np.array( bugs["%CPU"])
        PID =np.array( bugs["PID"])
        df1.loc[f,'%CPU'] =  CPU
        df1.loc[f,'PID']= PID

    df1['target']=1
    print("Option 1:")
    print(df1.head(3),'\n')

I update the dataframe with the known target, as this is my training set. I do the same when reading files with label '0'. Since each file needs its own classification I thought this might be the best way to do it, but I think I'm wrong.

I keep getting this error when I try to compile

ValueError: setting an array element with a sequence.

I believe it has to do with the fact that the model expects a single value, but its getting an array. Is there a way for a model to handle data with this structure. Or are there ways I can restructure this and retain the information?

2
  • Can you provide the code used to load the dataframe?
    – grldsndrs
    Jul 5 '19 at 22:54
  • Yes, I will edit with sample code. Jul 5 '19 at 23:25
-1

I suspect that you are having an issue because you are letting the default type get inferred.

from the pandas dataframe doc:

dtype : dtype, default None Data type to force. Only a single dtype is allowed. If None, infer

Try setting your df type to object when you define your df.

#new DataFrame
    df1 = pd.DataFrame(columns=["%CPU","PID",'TimeStamp','target'], dtype=object)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.