Crèdits
6
Tipus
Optativa
Requisits
Aquesta assignatura no té requisits
, però té capacitats prèvies
Departament
CS
This course offers an in depth coverage of methods for Natural Language Processing. We will present fundamental models and tools to approach a variety of Natural Language Processing tasks, ranging from syntactic processing, to semantic processing, to final applications such as information extraction, human-machine dialogue systems, and machine translation. The flow of the course is along two main axis: (1) computational formalisms to describe natural language processes, and (2) statistical and machine learning methods to acquire linguistic models from large data collections.
Hores setmanals
Teoria
2
Problemes
1
Laboratori
0
Aprenentatge dirigit
0.6
Aprenentatge autònom
6.5
Objectius
-
Understand fundamental methods of Natural Language Processing from a computational perspective
Competències relacionades: CG3, CB6, CB9, CEC1, CEC2, CTR6, -
Understand statistical and machine learning techniques applied to NLP
Competències relacionades: CG3, CB6, CB9, CEC1, CEC2, CTR6, -
Develop the ability to solve technical problems related to statistical and algorithmic problems in NLP
Competències relacionades: CG3, CB6, CB8, CB9, CEC1, CEC2, CTR6, -
Learn to apply statistical methods for NLP in a practical application
Competències relacionades: CG3, CB6, CB8, CB9, CEC1, CEC2, CTR3, CTR6,
Continguts
-
Course Introduction
Fundamental tasks in NLP. Main challenges in NLP. Review of statistical paradigms. Review of language modeling techniques. -
Classification in NLP
Review of supervised machine learning methods. Linear classifiers. Generative and discriminative learning. Feature representations in NLP. The EM algorithm. -
Sequence Models
Hidden Markov Models. Log-linear models and Conditional Random Fields. Applications to part-of-speech tagging and named-entity extraction. -
Syntax and Parsing
Probabilistic Context Free Grammars. Dependency Grammars. Parsing Algorithms. Discriminative Learning for Parsing. -
Machine Translation
Introduction to Statistical Machine Translation. The IBM models. Phrase-based methods. Syntax-based approaches to translation. -
Unsupervised and Semisupervised methods in NLP
Bootstrapping. Cotraining. Distributional methods.
Activitats
Activitat Acte avaluatiu
Teoria
2h
Problemes
1h
Laboratori
0h
Aprenentatge dirigit
0h
Aprenentatge autònom
0h
Teoria
5h
Problemes
3h
Laboratori
0h
Aprenentatge dirigit
0h
Aprenentatge autònom
0h
Teoria
6h
Problemes
3h
Laboratori
0h
Aprenentatge dirigit
0h
Aprenentatge autònom
0h
Teoria
6h
Problemes
3h
Laboratori
0h
Aprenentatge dirigit
0h
Aprenentatge autònom
0h
Statistical Machine Translation
We will present the basic elements of statistical machine translation systems, including representation aspects, algorithmic aspects, and methods for parameter estimation.Objectius: 1 2
Continguts:
Teoria
4h
Problemes
2h
Laboratori
0h
Aprenentatge dirigit
0h
Aprenentatge autònom
0h
Unsupervised Methods in NLP
We will review several methods for unsupervised learning in NLP, in the context of lexical models, sequence models, and grammatical models. We will focus on bootstrapping and cotraining methods, the EM algorithm, and distributional methods
Teoria
4h
Problemes
3h
Laboratori
0h
Aprenentatge dirigit
0h
Aprenentatge autònom
0h
Metodologia docent
The course will be structured around five main blocks of lectures. In each theory lecture, we will present fundamental algorithmic and statistical techniques for NLP. This will be followed by problem lectures, where we will look in detail to derivations of algorithms and mathematical proofs that are necessary in order to understand statistical methods in NLP.Furthermore, there will be four problem sets that students need to solve at home. Each problem set will consist of three or four problems that will require the student to understand the elements behind statistical NLP methods. In some cases these problems will involve writing small programs to analyze data and perform some computation.
Finally, students will develop a practical project in teams of two or three students. The goal of the project is to put into practice the methods learned in class, and learn how the experimental methodology that is used in the NLP field. Students have to identify existing components (i.e. data and tools) that can be used to build a system, and perform experiments in order to perform empirical analysis of some statistical NLP method.
Mètode d'avaluació
Final grade = 0.6 final exam + 0.4 projectwhere
final exam is the grade of the final exam
project is the grade of the project
Bibliografia
Bàsic
-
Linguistic Structure Prediction
- Smith, Noah,
Morgan & Claypool Publishers,
2011.
ISBN: 9781608454051
http://www.morganclaypool.com/doi/abs/10.2200/S00361ED1V01Y201105HLT013 -
Lecture Notes for Coursera Course "Natural Language Processing"
- Collins, Michael,
2013.
http://www.cs.columbia.edu/~mcollins/notes-spring2013.html