发明名称
摘要 The subject invention provides for a feedback loop system and method that facilitate classifying items in connection with spam prevention in server and/or client-based architectures. The invention makes uses of a machine-learning approach as applied to spam filters, and in particular, randomly samples incoming email messages so that examples of both legitimate and junk/spam mail are obtained to generate sets of training data. Users which are identified as spam-fighters are asked to vote on whether a selection of their incoming email messages is individually either legitimate mail or junk mail. A database stores the properties for each mail and voting transaction such as user information, message properties and content summary, and polling results for each message to generate training data for machine learning systems. The machine learning systems facilitate creating improved spam filter(s) that are trained to recognize both legitimate mail and spam mail and to distinguish between them.
申请公布号 JP2006521635(A) 申请公布日期 2006.09.21
申请号 JP20060508818 申请日期 2004.02.25
申请人 发明人
分类号 G06F13/00;G06F;G06F1/00;G06F17/30;G06Q10/10;H04L9/00;H04L9/32;H04L12/54;H04L12/58;H04L12/66;H04L29/02 主分类号 G06F13/00
代理机构 代理人
主权项
地址