Message Classi cation and Filtering
نویسنده
چکیده
This document is a proposal of how to implement classi cation and ltering of messages in the computer conference system kom. The kom system consists of two basic components, a client and a server. The client is the user interface through which the user exchanges messages with the server and updates personal information. The server acts as a central repository and database for both messages and information about users. In addition to its communication with the clients, the server also exchanges information with other servers. These other servers may be other kom servers or servers for Usenet News or electronic mail. From the user's point of view, the kom system collects messages from several sources (kom, Usenet News, mailing lists and email) and presents them in a coherent form. The kom client enables the user to process messages from or to these sources through a single interface.
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