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https://www.youtube.com/watch?v=hJf_KNXLAF0
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Customer
21/08/2024
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https://www.youtube.com/watch?v=hJf_KNXLAF0
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Customer
21/08/2024
0 likes this
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Customer
21/08/2024
0 likes this
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Customer
21/08/2024
0 likes this
If you wanted to get a good idea of the current economic picture in the U.S, you could look at the gross domestic product (GDP) report or the monthly unemployment figures.
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As standard in all statistical classification problems, it is important to split the data available into training and test samples and only evaluate the model based on the test sample results as it is generally considered more trustworthy than evidence based on in-sample performance, which can be more sensitive to outliers and data mining.
This post is fantastic! Full of useful insights and highly well-written. Many thanks for offering this. https://www.youtube.com/watch?v=hJf_KNXLAF0