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・ Automobile Competition Committee for the United States
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Automatic summarization
・ Automatic switched-transport network
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Automatic summarization : ウィキペディア英語版
Automatic summarization

Automatic summarization is the process of reducing a text document with a computer program in order to create a summary that retains the most important points of the original document. As the problem of information overload has grown, and as the quantity of data has increased, so has interest in automatic summarization. Technologies that can make a coherent summary take into account variables such as length, writing style and syntax. Automatic data summarization is a very important area within machine learning and data mining. Summarization technologies are used today, in a large number of sectors in industry today. An example of the use of summarization technology is search engines such as Google. Other examples include document summarization, image collection summarization and video summarization. The main idea of summarization is to find a representative subset of the data, which contains the ''information'' of the entire set. Document summarization, tries to automatically create a ''representative summary'' or ''abstract'' of the entire document, by finding the most ''informative'' sentences. Similarly, in image summarization the system finds the most representative and important (or salient) images. Similarly, in consumer videos one would want to remove the boring or repetitive scenes, and extract out a much shorter and concise version of the video. This is also important, say for surveillance videos, where one might want to extract out only important events in the recorded video, since most of the events are uninteresting with nothing going on.
Generally, there are two approaches to automatic summarization: ''extraction'' and ''abstraction''. Extractive methods work by selecting a subset of existing words, phrases, or sentences in the original text to form the summary. In contrast, abstractive methods build an internal semantic representation and then use natural language generation techniques to create a summary that is closer to what a human might generate. Such a summary might contain words not explicitly present in the original. Research into abstractive methods is an increasingly important and active research area, however due to complexity constraints, research to date has focused primarily on extractive methods. In some application domains, extractive summarization makes more sense. Examples of these include image collection summarization and video summarization.
==Types of Summarization==
The different types of of automatic summarization include extraction-based, abstraction-based, maximum entropy-based, and aided summarization.

抄文引用元・出典: フリー百科事典『 ウィキペディア(Wikipedia)
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