|Select the desired Level or Schedule Type to find available classes for the course.|
|CS 57700 - Natural Language Processing|
Credit Hours: 3.00. This course will cover the key concepts and methods used in modern Natural Language Processing (NLP). Throughout the course several core NLP tasks, such as sentiment analysis, information extraction, syntactic and semantic analysis, will be discussed. The course will emphasize machine-learning and data-driven algorithms and techniques, and will compare several different approaches to these problems in terms of their performance, supervision effort and computational complexity. Prerequisites: A background in linear algebra, calculus, statistics and probability, and completion of CS 57800 or equivalent are highly recommended. Strong programming skills in any modem language (Python, Java, C++) are required. Typically offered Fall Spring.
3.000 Credit hours
Levels: Graduate, Professional, Undergraduate
Schedule Types: Distance Learning, Lecture
All Sections for this Course
Offered By: College of Science
Department: Computer Science
May be offered at any of the following campuses:
Learning Outcomes: 1. Describe and analyze the key challenges in dealing with natural language data and other fundamental areas of NLP. 2. Analyze and implement the key algorithms and techniques used in NLP. 3. Identify algorithmic techniques that can be applied to new problems and evaluate other possible solutions. 4. Conduct experiments using proper methodology for training and testing NLP systems using data. 5. Critically review current research work in the NLP field.
Must be enrolled in one of the following Programs:
Short Title: Natural Language Processing