NI Labs Discussions

cancel
Showing results for 
Search instead for 
Did you mean: 

Welcome to LabVIEW Machine Learning Toolkit

Description:

The Machine Learning Toolkit (MLT) provides various machine learning algorithms in LabVIEW. It is a powerful tool for problems such as visualization of high-dimensional data, pattern recognition, function regression and cluster identification.

Software Requirements:

  • Windows XP or later
  • LabVIEW 2009 or later

Please feel free to ask questions here.

Thanks,

Qing

Message 1 of 41
(29,686 Views)

Could you please post any documentation related to this toolkit? Thanks!

0 Kudos
Message 2 of 41
(9,605 Views)

Please download the user manual and examples from https://decibel.ni.com/content/docs/DOC-19328

For the detailed usage, please refer to the examples.

0 Kudos
Message 3 of 41
(9,605 Views)

Hi Qing:

Please recommend us the best introductory books about this subject.

Thanks.

nilohdez.

0 Kudos
Message 4 of 41
(9,605 Views)

There are several good books. For example, Pattern Recognition and Machine Learning (by Bishop) covers most of the topics in the toolkit. However, if you are only intrested in a specific algorithm, I would recommand you to check wikipedia first. We attached the links in the documentation.

0 Kudos
Message 5 of 41
(9,605 Views)

Kind regards and Thanks.

0 Kudos
Message 6 of 41
(9,605 Views)

Can the Supervised learning VIs accept more than two classes? If so, how?

0 Kudos
Message 7 of 41
(9,605 Views)

Yes. Please check the examples in the attachment:

https://decibel.ni.com/content/docs/DOC-19328

The example, Example_BP Network_Classification, shows how to work with more than two classes.

0 Kudos
Message 8 of 41
(9,605 Views)

Thank you. That proved very helpful.

Do you have, or know of, a LabVIEW implementation of Discriminant Function Analysis?

0 Kudos
Message 9 of 41
(9,605 Views)

There is an algorithm, Linear Discriminant Analysis, in the Dimension Reduction palette. Is that the one you are looking for?

0 Kudos
Message 10 of 41
(9,605 Views)