YoVDO

Maximizing Engagement Through Privacy-Preserving Content Recommendations

Offered By: Data Science Festival via YouTube

Tags

Recommendation Systems Courses Data Science Courses Machine Learning Courses Reinforcement Learning Courses Privacy Courses User Engagement Courses Topic Modeling Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore a groundbreaking approach to recommendation systems that prioritizes user privacy while maximizing engagement in this 32-minute conference talk from the Data Science Festival. Discover how Faculty and Springer Nature developed a novel reinforcement learning-powered recommendation system for springerlink.com that generates effective content suggestions without relying on personal data. Learn about the innovative use of semantic similarity systems and topic modeling to improve recommenders in a privacy-conscious world. Gain insights from industry experts as they discuss the challenges and solutions in balancing personalization with data protection. Understand how this cutting-edge approach can drive engagement and revenue while respecting user privacy concerns in the evolving digital landscape.

Syllabus

Maybe content is enough: maximising engagement through recommendations while protecting user privacy


Taught by

Data Science Festival

Related Courses

Поиск структуры в данных
Moscow Institute of Physics and Technology via Coursera
Applied Text Mining in Python
University of Michigan via Coursera
Hands-on Text Mining and Analytics
Yonsei University via Coursera
Optimization of Topic Models using Grid Search Method
Coursera Project Network via Coursera
Natural Language Processing and Capstone Assignment
University of California, Irvine via Coursera