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Numer of samples in deep learning problem

User: "Marcos888"
New Altair Community Member
Updated by Jocelyn
Hello.
I am solving a deep learning prediction problem and when I try to train more than 100k sample the Neural Network just catch around the 20% of the training samples set. Anyone knows why?
Thanks
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    User: "varunm1"
    New Altair Community Member
    Hello @Marcos888

    Can you post your process here? You can use FILE --> Export Process in Rapidminer and attach the .rmp file here so that we can take a look at the process and get back to you.

    If you need us to debug or test the process please attach your data here or you can send in private message.
    User: "Marcos888"
    New Altair Community Member
    OP
    Accepted Answer
    This is the file.
    Im sorry to answer so late, but I hadn´t seen the answer up to now.
    The file have 50000 rows and 1001 atributes ( the last is the target)
    Thank you in advance
    User: "varunm1"
    New Altair Community Member
    Hello @Marcos888

    I checked your process. I have a question regarding "Loop Batches" operator. Are you trying to use that to set Mini batch size to train a deep learning algorithm? If so, then that is not needed and I dont think this way works. If you are looking to set a mini batch size of "1000" then you need to go to "expert parameters"  setting in Deep learning operator parameters. There you can find "Mini_batch_size" parameter as shown below. Please let us know if this is what you are looking for.


    User: "Marcos888"
    New Altair Community Member
    OP
    So, in RapidMiner "Mini_batch_size" are the same as usually "batch_size" parameter?
    User: "varunm1"
    New Altair Community Member
    Accepted Answer
    Yes.