neural network-based recommender systems
Neural network-based recommender systems are advanced algorithms that leverage artificial intelligence and deep learning techniques to provide personalized recommendations to users. These systems utilize neural networks to analyze large amounts of data and understand user preferences and item characteristics, allowing them to deliver accurate and tailored suggestions for products, movies, articles, or any other items of interest to the user.
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