AI meets Big Data: User Analytics and Personalized Recommendation Based on Location Data
Project Description
User locations can be obtained through many means, e.g., GPS, apps, or people sensing. These data is inherently noisy, sparse and irregular. In this project, you will study and implement how to combine AI (Artificial Intelligence) machine learning techniques with big data (on user locations) to automate the following: data cleansing, signal analytics, location extraction, trajectory inference, behavior mining, and prediction/recommendation.
Supervisor
CHAN Gary Shueng Han
Quota
10
Course type
UROP1000
UROP1100
UROP2100
UROP3100
UROP3200
UROP4100
Applicant's Roles
Students will work in a rigorous R&D team setting to propose, study, implement and experiment novel algorithms. Machine learning, programming and computational skills will be involved.
Applicant's Learning Objectives
1) Achieve knowledge on how to use AI techniques to extract or collect large-scale data;
2) Achieve knowledge on how to use statistics and optimization to automate data cleansing and denoising;
3) Achieve knowledge on how to mine user behavior out of the cleansed data;
4) Achieve knowledge on how to make predictions and recommendations given user behavior
2) Achieve knowledge on how to use statistics and optimization to automate data cleansing and denoising;
3) Achieve knowledge on how to mine user behavior out of the cleansed data;
4) Achieve knowledge on how to make predictions and recommendations given user behavior
Complexity of the project
Moderate