Student research opportunities

Extracting User profile with Deep Learning Techniques

Project Code: CECS_1123

This project is available at the following levels:
CS single semester, Honours, Masters, PhD

Supervisor:

Dr Lizhen Qu

Outline:

Understanding the user behaviour on the web is essential for market analyses and financial trend prediction.
However extracting user profile in a supervised way is expensive due to manual construction of huge amount of training data. Deep learning techniques allow us to use a small amount of labelled data by leveraging large amounts of unlabelled data. Therefore, in this project, we aim to create a cutting edge Deep Learning systems to extract user profile from the web with minimal manual effort.

Requirements/Prerequisites

Familiarity with linear algebra, probability, and natural language processing. Knowledge of online learning and deep learning would be a plus. Good coding skills in Scala or Java.

Background Literature

Jiwei Li, Alan Ritter, Eduard Hovy. Weakly Supervised User Profile Extraction from Twitter. Baltimore. ACL, 2014

Abel, Fabian, et al. Semantic enrichment of twitter posts for user profile construction on the social web. The Semanic Web: Research and Applications. Springer Berlin Heidelberg, 2011. 375-389.


Contact:



Updated:  28 February 2015 / Responsible Officer:  JavaScript must be enabled to display this email address. / Page Contact:  JavaScript must be enabled to display this email address. / Powered by: Snorkel 1.4