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So in this short lecture, I want to let you know about some related content you can look at now, if

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you like in particular, I previously wanted to include a few lectures on tech summarization in this

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section on vector based methods.

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This is because one simple way to extract a summary from text is to make use of term frequencies or

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to forget.

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So after learning about what you've learned so far, you would be ready to learn how to do this.

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Now you'll notice that the text summarization section in this course does not appear in this part of

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the course, but instead appears later in the part on machine learning.

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And this is because this section looks at multiple methods, some of which are more advanced and go

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beyond just offering.

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So if you would like to learn a little bit about how do you summarize text applying what you learned

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in this section, feel free to check that out now.

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At this point, you may not be ready for the whole section, but you'll at least understand the simple

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approach, which basically involves just the vector based methods you've already learned about.

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So check that out now if you'd like to learn about how to summarize text.

