prediction numeric

jsafa
jsafa New Altair Community Member
edited November 2024 in Community Q&A
dear all experts
I really new with rapidminer...I have 3 full numeric columns of data (properties of a rock) and 4th numeric column includes some points from another properties. I want to predict 4th column completely. my problem is that there is no text label data. is machine learning of RAPIDMINER can solve this?
regards
Tagged:

Best Answers

  • jacobcybulski
    jacobcybulski New Altair Community Member
    Answer ✓
    Yes, you are looking for a regression-type of a model, which takes numeric predictors on input and produce a numeric output (label). There are many models suitable for this task, e.g. linear regression, neural networks, etc.
  • BalazsBaranyRM
    BalazsBaranyRM New Altair Community Member
    Answer ✓
    Hi @jsafa,

    if you designate a numeric attribute with the label role, the machine learning operators will automatically build a model for numeric prediction (regression). Of course you can work with these data. Just check the capabilities of the operator. Most are able to do a numeric prediction. 

    Best regards,

    Balázs

Answers

  • jacobcybulski
    jacobcybulski New Altair Community Member
    Answer ✓
    Yes, you are looking for a regression-type of a model, which takes numeric predictors on input and produce a numeric output (label). There are many models suitable for this task, e.g. linear regression, neural networks, etc.
  • BalazsBaranyRM
    BalazsBaranyRM New Altair Community Member
    Answer ✓
    Hi @jsafa,

    if you designate a numeric attribute with the label role, the machine learning operators will automatically build a model for numeric prediction (regression). Of course you can work with these data. Just check the capabilities of the operator. Most are able to do a numeric prediction. 

    Best regards,

    Balázs

Welcome!

It looks like you're new here. Sign in or register to get started.

Welcome!

It looks like you're new here. Sign in or register to get started.