mkzoucha

mkzoucha t1_j6ed1z9 wrote

I did not have time to try this specific one but I have tried at least 10 others. Sorry, not trying to be negative or anything. They’re are just tons of different models, each of which would need a separate detection model. The model was trained on human writing, so it’s bound to have humanistic sound, and some humans are bound to have a writing voice similar to the output of AI content creators. There is also no real standard ‘human’ way of writing to clearly separate the two. Combine that with the difference in results based on the prompt and it quickly becomes an insurmountable task in my opinion.

At the end of the day, I applaud your efforts, truly but realistically I think your model is significantly overfit to a very small percentage of possible samples, both AI and human generated.

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mkzoucha t1_ivau561 wrote

There are different methods behind recommenders. Some are content based, such as the user watched a movie with will Ferrell, show more movies with Will Ferrell. Others are based on user behavior, such as other users who watched this will Ferrell movie also watched these movies.

Edit: here is a good overview I found https://towardsdatascience.com/recommendation-systems-explained-a42fc60591ed

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