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New content to explain the dimension change for the kernel matrix for train and test as 90x90, 30x90 #4057

@sudikiniirs

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@sudikiniirs

URL to the relevant course

https://quantum.cloud.ibm.com/learning/en/courses/quantum-machine-learning/quantum-kernel-methods#steps-2-and-3-optimize-problem-and-execute-using-primitives

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  • new content request
  • typo
  • code bug
  • out-of-date content
  • broken link
  • other

Describe the fix or the content request.

=================== I request a new content ================

Kernel matrix used for training is consisting of the training data of size 90 which gives a 90x90 kernel but the test kernel has a size of 30x90 where the kernel of the (test data, train data) is found out. A considerable explanation on the same and how svc handles it will be highly beneficial for a learner to understand the concept. I also request to show the kernel graphs for easier interpretation.

Image Fig. Kernel matrix for the train data Image Fig. Kernel matrix for the test data

Thank you for reading such a long message.

Best regards,
Sudikin Pramanik
PhD scholar
Quantum Machine Learning
IIT Ropar
India

For new content requests - if the request is accepted, do you want to write the content?

I will write (or already have written) a draft of the proposed content

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