Design and Development of Antispammer for SMS Spam Detection
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Abstract
The growth of the mobile phone users has led to a dramatic increase in SMS spam
messages. Though in most parts of the world, mobile messaging channel is currently
regarded as “clean” and trusted, on the contrast recent reports clearly indicate that the
volume of mobile phone spam is dramatically increasing year by year. The success of
the mobile messaging channel has, unfortunately, made it a very attractive target for
attack by spammers. It is an extremely growing problem, primarily due to the
availability of very cheap bulk pre-pay SMS packages and the fact that SMS engenders
higher response rates as it is a trusted and personal service. Here trust means almost all
the messages received by the subscribers are opened and read at least once. Also
because of the ease of use of Smartphones, numbers are easily dialled or links can be
smoothly clicked, exposing the subscriber to more risk. To further exacerbate, the
situation attackers are finding the traditional fixed email channel increasingly
unprofitable and are focusing their activities on the SMS channel.
The growing volume of spam messages has increased the demand for accurate and
efficient spam solutions. SMS spam filtering is a relatively new task which inherits
many issues and solutions from email spam filtering. Many spam solutions have been
proposed in the recent past. The one which we address in this thesis, treats spam
detection as a simple two class document classification problem. The solution will
consist of classification algorithm coupled with feature extractions. Classification along
with appropriate features helped us improving the performance in terms of accuracy and
has lesser computational time and storage requirements.
In this dissertation, we compared the performance achieved by several established
machine learning techniques with our approaches. Additionally, we present details about
a real and public SMS spam collection based on the perspective of Indian hams and
spams. Further, it was analysed with various classifiers for the best results.
Description
M.E. (Computer Science and Applications)
