Search results for "Natural language processing" (18 results found)

i2b2/UTHealth 2014

These are the rules and the dictionaries used in the i2b2/UTHealth 2014 Challenge in Natural Language Processing for Clinical Data. The task involved the identification of heart disease risk factors from longitudianl clinical notes of diabetic records. The methodology is knowledge-driven and the system implements local lexicalised rules (based on…

Blog sentiment analysis

Sentiment analysis is the extraction of attitudes and opinions from human-authored documents. The capture and analysis of such attitudes and opinions in an automated and structured fashion might offer a powerful technology to a number of problem domains, including business intelligence, marketing, national security, and crime prevention. This project aims…

Document clustering and summarisation

Document clustering is a generic problem with wide spread applications within Natural Language engineering. Present research focuses on using text summarization techniques as a pre-processing step for document clustering in the context of automated assessment of student essays. One of the major problems in natural language processing is that a…

Prof Goran Nenadic

Prof Goran Nenadic is Professor in the School of Computer Science, University of Manchester, a group leader in the Manchester Institute of Biotechnology (MIB) and Health eResearch Centre (HeRC).