Song Recommendation based on user’s Activity using Ensemble Learning and Clustering

Author:

Joshi Deepali,Gade Akshay,Savale Phalguni,Bhujbal Vinay,Goje Pranavraj,Mhamane Saniya

Abstract

The Song Recommendation System Based on User Schedule project is designed to provide users with personalized music recommendations that match their daily activities and mood swings. With a busy and hectic schedule, it can be challenging to find time to select music that matches a user’s current activity and mood. This project aims to provide a solution to this problem by analyzing the user’s daily schedule, including their planned activities and time of day, and using machine learning algorithms to recommend songs that fit their mood and energy level during each activity. The project utilizes a variety of technologies, such as React.js for the front-end and various machine learning algorithms using python for the back-end, to provide a user-friendly interface that allows users to input their schedules and receive song recommendations.

Publisher

EDP Sciences

Subject

General Medicine

Reference10 articles.

1. Cristóbal Veas: Predicting the Music Mood of a Song with Deep Learning (2020). https://towardsdatascience.com/predicting-the-music-mood-of-a-song-with-deep-learning-c3ac2b45229e

2. Mahadik Ankita, Milgir Shambhavi, Patel Janvi, Jagan Vijaya Bharathi, Vaishali Kavathekar: Mood based Music Recommendation System, IJERTV10IS060253 https://www.ijert.org/mood-based-music-recommendation-system

3. Yang Jingzhou: Personalized Song Recommendation System Based on Vocal Characteristics Volume 2022 | Article ID 3605728 | https://doi.org/10.1155/2022/3605728

4. Rosa Renata L., Demóstenes Z. Rodríguez, and Graça Bressan: Music Recommendation System Based on User’s Sentiments Extracted from Social Networks https://www.researchgate.net/publication/283238023 Music Recommendation Syste m Based on User’s Sentiments Extracted from Social Networks

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