Skripsi
SISTEM REKOMENDASI AKTIVITAS PADA APLIKASI MOOD TRACKER BERBASIS ANDROID MENGGUNAKAN TWO-TOWER NEURAL NETWORK
The person's mental health is influenced by many factors, one of which is mood. Mood is important to manage, because mood can affect daily productivity. This research aims to create an Android-based mood tracker software that can be used to monitor mood. This software has a recommendation system that can recommend activities to do so that the mood gets better. The recommendation system uses a Two-tower Neural Network. The results of testing the activity recommendation model using the Top-K Accuracy method show that the number of activities that suitable to be recommended is as many as 10 activities and the model can recommend activities that are different from the previous activity recommendations with the new dataset, even though the model is still classified as overfitting. The results of testing Android applications using unit tests and UAT (User Acceptance Test) show that the application meets user needs and runs well.
Inventory Code | Barcode | Call Number | Location | Status |
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2307002364 | T94042 | T940422023 | Central Library (Reference) | Available but not for loan - Not for Loan |
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