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Thematic Sessions
When you submit a paper, you will be asked to indicate whether
it is being submitted to the General Sessions or to one of the Thematic
Sessions. The following gives the list of the Thematic Session titles for
ACL-2000, each with a short description of the topics to be covered in that
theme so that you can determine which theme you want to submit your paper
to. Note that the topic lists shown here are intended to be indicative rather
than exhaustive; follow the links to the theme web pages to find more information
about the intent of the themes.
- T1: NLP and Open-Domain
Question Answering from Text
- Chair: Sanda Harabagiu
- Motivation: The recent
explosion of information available on the World Wide Web determines
question answering (Q/A) to be a compelling framework for finding
information that closely matches user needs. Several current NLP-based
technologies are able to provide the framework that approximates the
complex problem of answering questions from large collections of texts.
- List of topics: Topics
of interest include, but are not limited to the following:
- analysis of natural
language questions
- lexical resources
in natural language Q/A
- NLP for internet
Q/A text mining for natural language Q/A
- role of information
extraction (IE) in natural language Q/A
- indexing methods
for natural language Q/A
- empirical methods
for answer detection in natural language Q/A
- abductive techniques
for justification of answer correctness
- coreference resolution
for natural language Q/A tasks
- http://renoir.seas.smu.edu/~sanda/acl2000-topic.html
- T2: Machine learning
and statistical NLP for dialogue
- Chairs: Antal van
den Bosch, Emiel Krahmer, Maria Wolters
- Motivation: The theme
addresses the question to what extent the traditional approach to
developing dialogue systems can be supplemented by automatic data-driven
techniques from ML and statistical NLP. The crucial advantage of such
techniques is that they do not require the development of a formal
model beforehand, but instead extract relevant knowledge directly
from annotated data. The aim of this theme session is to bring representatives
of linguistically-oriented and computationally-oriented groups together,
to foster exchange between those who provide the theoretial tools
for successful application of ML and statistical NLP techniques, those
who work on discourse and dialogue theory, and those who build actual
dialogue systems.
- Topics:
- Suitability of dialogue
system components for incorporation of Machine Learning (ML) and
statistical modeling
- Application and
applicability of state-of-the-art Machine Learning and statistical
NLP techniques to (components of) dialogue systems (speech recognition
and synthesis, dialogue management, language interpretation and
generation, coreference processing, error detection techniques etc.)
- Consequences of
incorporating data-driven modules for dialogue system architecture
- Corpus collection
and annotation
- Evaluation of dialogue
system components based on ML/statistical NLP
- http://ilk.kub.nl/acl00-theme/
- T3: Text Summarization
- Chair: Inderjeet Mani
- Motivation: Automatic
summarization aims at providing a condensed representation of the
content of an information source in a manner sensitive to the needs
of the user and task. As we emerge into the 21st Century, the massive
information universes that lie ahead make some form of text summarization
indispensable. While the field continues to progress, there are also
many problems in summarization per se, as well as in areas of NL understanding
and NL generation, that need to be addressed before the promises of
automatic text summarization can be fully realized.
- Topics: Multilingual,
multidocument, and multimedia summarization, NL generation for summarization,
statistical models, narrative techniques, topic identification and
concept fusion for summarization, evaluation methods, development
and exploitation of summarization resources, practical applications.
- http://www.geocities.com/Athens/Forum/1373/acl-2000-summarization-theme.html
- T4: Theoretical and
Technical Approaches for Asian Language Processing --Similarities and
Differences among Languages
- Chairs: Hitoshi
Isahara, Rajeev Sangal, Ming Zhou
- Motivation: Research
on natural language processing (NLP) for Asian languages has begun
to flourish especially since electronic data has become available
in some Asian languages. Theoretically, the techniques adopted for
one language are applicable for any language, however, there still
might be some differences among languages and that makes it difficult
to transfer the advances in one language to other languages. This
theme session will provide a forum for researchers in the area of
NLP who are interested in advancing the state of development of
NLP techniques for Asian languages.
- Topics:
- Methodological
Aspects of Asian Language Processing: Corpus-based, Learning
and Statistical Approach, Data Sparseness, Evaluation, and (Semi-)Automatic
Annotation
- Theoretical Aspects
of Asian Language Processing: Polite Expressions, Free Word
Order Languages, Combining Corpus-based and Rule-based Approaches,
Computational Models Including Aspects of Syntax and Semantics,
and Lexical Semantics
- Application:
Information Retrieval for Mono/Multi Asian Languages, Classification
of Texts using Statistical Means, and Machine Translation among/from/to
Asian Languages
- Linguistic Resources
for Asian Language Processing Multilingual/Monolingual/Learners
Corpora, Machine Readable (Mono/Multi- lingual) Dictionaries,
Extraction of Lexical Information from Corpora, and Development
of Benchmark Data Sets for NLP
- http://www-karc.crl.go.jp/ips/members/isahara/ACL2000TS/index.html
Last
modified: Tue Jan 18 10:12:11 EST 2000
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