I have dataset for yahoo’s stock (time series) and I need for this dataset that I have divide it…

I have dataset for yahoo’s stock (time series) and I need for this dataset that I have divide it

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to two parts the first part is for build logistic regression and the second for test this model

I mean one for (training and building the model) the other is for (testing).

What I need just to provide this in Weka to give me the results of that for prediction the price of open stock according to the other attributes

So:

  1. Build the model according to my dataset just half of it.
  2. Testing the result model for the rest of dataset I mean the other half.
  3. Prediction for the open according to the attributes that we have.
  4. I need the result of that using Weka.

I have sent to you the dataset in Excel and weka file just to be easier for you.

The mini work is very small just to apply this model in Weka according to my dataset .

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I have dataset for yahoo’s stock (time series) and I need for this dataset that I have divide it
to two parts the first part is for build logistic regression and the second for test this model
I mean one for (training and building the model) the other is for (testing).
What I need just to provide this in Weka to give me the results of that for prediction the price of open stock according to the other attributes
So:
Build the model according to my dataset just half of it.
Testing the result model for the rest of dataset I mean the other half.
Prediction for the open according to the attributes that we have.
I need the result of that using Weka.
I have sent to you the dataset in Excel and weka file just to be easier for you.
The mini work is very small just to apply this model in Weka according to my dataset .

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