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I am trying out Amazon Personalize machine learning service to create a movie recommendation system. I can import my dataset in the following format:

USER_ID,ITEM_ID,EVENT_TYPE,EVENT_VALUE,TIMESTAMP

My dataset is consist of histories of likes and dislikes by users. What I am confused about is how I should reflect the nature of the event in my dataset, event being positive (A like) or negative (A dislike)

These are the predefined recipes that Amazon uses to train a model: https://docs.aws.amazon.com/personalize/latest/dg/working-with-predefined-recipes.html

  • I have just faced the same problem. Did you find any solution? – doubts Mar 2 at 19:22
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    I talked to the support and it seems like that we have to filter out the data and only upload positive feedback. I also saw an example on AWS blog about a movie recommendation system and they suggested to only submit 4+ ratings to the system and filter out any ratings below 4 (for a 1 to 5 start system). – ariaby Mar 3 at 12:24
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    Wow. It is surprisingly dumb that they did not write it explicitly in documentation. Thank you! Do you have a link to your chat with support? – doubts Mar 3 at 16:35
  • The documentation leaves a lot to be desired overall. I am hoping they address that first thing. – Sledge May 8 at 21:06

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