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The following NLP-related courses will be offered at Stanford
in the 2006-07 academic year:
Autumn 2006
LINGUIST 180.
Introduction to Computer Speech and Language Processing.
Jurafsky. TTh 2:15-3:30. 200-202.
Broad overview covering machine translation, web-based question answering,
conversational agents, speech recognition and synthesis, parsing,
computational semantics and pragmatics. Foundation for other language
processing courses; focus on using available online implementations
of algorithms. Prerequisite: CS 106B or X. GER:2b. 4 units.
CS 276, LINGUIST 286.
Text Retrieval and Mining.
Manning, Raghavan. TTh 4:15-5:30. Gates B3.
Text
information retrieval systems; efficient text indexing; Boolean,
vector space, and probabilistic retrieval models; ranking
and rank aggregation; evaluating IR systems. Text clustering
and classification methods: Latent semantic indexing, taxonomy
induction, cluster labeling; classification algorithms and their
evaluation, text filtering and routing. 3 units.
Winter 2007
CS 224S, LINGUIST 281.
Speech Recognition and Synthesis.
Jurafsky.
Introduction to automatic speech recognition, speech synthesis, and
dialogue systems. Focus is on key algorithms including noisy channel
model, hidden Markov models (HMMs), Viterbi decoding, N-gram language
modeling, unit selection synthesis, and roles of linguistic knowledge.
Prerequisite: programming experience. Recommended: CS 221 or CS 229.
2-4 units.
EE 292F. Digital Processing of Speech Signals.
Schafer.
For students interested in obtaining fundamental knowledge about speech
signals and speech processing methods and about how digital speech
processing techniques are used in such applications as speech coding,
speech synthesis, speech recognition, and speaker verification. A number
of short projects will be assigned to be done with MATLAB. Homework
problem assignments will also be assigned.
LINGUIST 187/287.
Topics in Computational Linguistics: Grammar Engineering
Flickinger, Oepen.
Hands-on introduction to techniques for implementation of linguistic
grammars, drawing on sound grammatical theory and engineering skills.
The implementation of constraints in morphology, syntax, and semantics,
working within a unification-based lexicalist framework. Focus is on
developing small grammars for English and at least one other language.
Prerequisite: basic knowledge of syntactic theory or 120. No prior
programming skills required. 1-4 units.
Spring 2007
CS 224N, LINGUIST 280.
Natural Language Processing.
Manning.
Algorithms for processing linguistic information and the underlying
computational properties of natural languages. Morphological, syntactic,
and semantic processing from a linguistic and an algorithmic perspective.
Focus is on modern quantitative techniques in NLP: using large
corpora, statistical models for acquisition, representative systems.
Prerequisites: CS 121/221 or LINGUIST 180, and programming
experience. Recommended: basic familiarity with logic and probability.
3-4 units.
Not offered this year due to sabbaticals
LINGUIST 182/282.
Human and Machine Translation.
Kay.
The process of translation by professional
and amateur translators, and by existing and proposed machine-translation
systems; what each might learn from the others. Prerequisite:
advanced knowledge of a foreign language. GER:2b. 4 units.
LINGUIST 183/283.
Programming and Algorithms for Natural Language Processing.
Kay.
Construction of computer programs for basic linguistic processes such
as string search, morphological, syntactic, and semantic analysis and
generation, and simple machine translation. Emphasis on the algorithms
that have proved most generally useful for solving such problems.
3-4 units.
CS 224U, LINGUIST 188/288.
Natural Language Understanding.
Jurafsky, Peters.
Machine understanding of natural language. Computational semantics
(determination of sense, event structure, thematic role, time, aspect,
synonymy/meronymy, causation), and computational pragmatics and
discourse (coherence relations, anaphora resolution, information
packaging, generation). Theoretical issues, online resources, and
relevance to question answering, summarization, and inference.
Prerequisites: one of LINGUIST 180, CS 224N,S; and LINGUIST 130A or B,
or knowledge of logic.
LINGUIST 285.
Finite State Methods in Natural Language Processing
Kartunnen.
Introduction to the theory and available technology for finite
state language processing. The applications range from tokenization to
phonological and morphological analysis, disambiguation, and shallow
parsing. 3-4 units.
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