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Firstly, I'd like to thank you for your great material you created. However, is more clear for a reader to read the answer directly without using the mouse left-right all the time? I mean just make the questions bigger and format the answers as paragraphs, discarding the box they are in.
For example:
Clear version
Difference between SuperVised and Unsupervised Learning?
Supervised learning is when you know the outcome and you are provided with the fully labeled outcome data while in unsupervised you are not provided with labeled outcome data. Fully labeled means that each example in the training dataset is tagged with the answer the algorithm should come up with on its own. So, a labeled dataset of flower images would tell the model which photos were of roses, daisies and daffodils. When shown a new image, the model compares it to the training examples to predict the correct label.
Kind regards,
zaaachos
The text was updated successfully, but these errors were encountered:
Hello there!
Firstly, I'd like to thank you for your great material you created. However, is more clear for a reader to read the answer directly without using the mouse left-right all the time? I mean just make the questions bigger and format the answers as paragraphs, discarding the box they are in.
For example:
Clear version
Difference between SuperVised and Unsupervised Learning?
Supervised learning is when you know the outcome and you are provided with the fully labeled outcome data while in unsupervised you are not provided with labeled outcome data. Fully labeled means that each example in the training dataset is tagged with the answer the algorithm should come up with on its own. So, a labeled dataset of flower images would tell the model which photos were of roses, daisies and daffodils. When shown a new image, the model compares it to the training examples to predict the correct label.
Kind regards,
zaaachos
The text was updated successfully, but these errors were encountered: