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					Building Applied Natural Language Generation System Final Project Proposal Supervisors: Dr. Elena Ravve E-mail: cselena@braude.ac.il Background: Natural language generation (nlg) is the subfield of artificial intelligence and computational linguistics that is concerned with the construction of computer systems that can produce understandable texts in English or other human languages from some underlying non-linguistic representation of information. Natural language generation systems combine knowledge about language and the application domain to automatically produce documents, reports, explanations, help messages, and other kinds of texts. Goals of the project: In this project, we are going to look at nlg from an applied system-building perspective. We will describe the tasks that must be performed by a language generation system, and will discuss possible algorithms and supporting representations for performing each task. We also hope to suggest techniques, often based on corpus analysis, which can be used to acquire the various kinds of knowledge needed in order to build such nlg systems. Unique features: * We plan to discuss when nlg technology is likely to be appropriate, and when alternative or simpler techniques may provide a more appropriate solution. * Throughout, our focus is on the use of well-established techniques that can be used to build simple but practical working systems today. * We will also provide pointers to ideas in the research literature that are likely to be relevant to the development of more sophisticated nlg systems in the future. * Our intention is that the overview, which we find here, should be useful both for software developers who are considering using nlg techniques in their systems, and for researchers interested in developing applied nlg technology.