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Lstm Based Short Message Service(SMS) Modeling For Spam Classification

Posted on:2020-04-28Degree:MasterType:Thesis
Country:ChinaCandidate:Hans RajFull Text:PDF
GTID:2428330599464205Subject:Computer Science and Technology
Abstract/Summary:PDF Full Text Request
The Short Message Service(SMS)has widely extended in the modern methods of communication technology.Short Message Service component is the fastest and most commonly used approach in modern society for sending electronically message.Spam SMS or unsolicited SMS has turned into a noteworthy issue for organizations,network system,and private clients.By Spam SMS the spammers are influencing time and memory space,the most important assets of the computational world.The classification of the spam message is an interesting and prominent issue.The issues related to spam and different methodologies that endeavor to manage it has been introduced here.Classifying availability of spam in SMS is a challenging task,plenty of research has been carried out in this direction employing Machine Learning techniques such as Naive Bayes(NB),Random Forest(RF),and Support Vector Machine(SVM)for Spam Classification.Although these methods have shown adequate performance but are not efficient enough in terms of spam classification.Hence,a rigorous study is needed to find a more accurate and robust method.To address this,we proposed a novel method Long Short-Term Memory(LSTMs),which is an advanced structure of Recurrent Neural Network(RNN)that has a gating mechanism including memory cells.Additionally,Word2 Vec tool has been employed in this study,which converts simplified text into a representation of words in a vector space.To evaluate the effectiveness of our method,SMS datasets have been used which are freely available.Experimental results prove that the proposed method outperformed state-of-the-art Machine Learning methods like Random Forest(RF),SVM,kNN(k Nearest Neighbors),Decision Tree,and providing 97.5 percent accuracy.
Keywords/Search Tags:Deep Neural Networks, Long Short-Term Memory, Machine Learning, Support Vector Machine and Word Embedding
PDF Full Text Request
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