粟栗, 戴晶, 安宁宇, et al. The research and practice of a prior model decision technique for short text[J]. 2017, 30(10): 33-38. DOI: 10.13992/j.cnki.tetas.2017.10.009.
The research and practice of a prior model decision technique for short text
In order to deal with the rapid and diversifi ed development of spam messages
the governance means of operators towards spam messages need to advance with the times
need to cover more comprehensive and judge more accurate. In view of the objectives
we proposed an identifi cation and fi ltering method based on prior model for short text spam messages. This method analyze short text from three aspects
respectively text feature layer
keyword pattern layer and content feature layer
then ultimately give a final judgment result using comprehensive analysis and determination layer with previous training process. We can not only ensure the precision of spam messages recognition
but also greatly improve the recall of spam message recognition. We give a better solution to the current spam messages recognition problem
which may save a lot of manpower for the operators.