Identifying Spam Patterns in SMS using Genetic Programming Approach
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- @InProceedings{Sharma:2019:ICCS,
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author = "Dimple Sharma and Aakanksha Sharaff",
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title = "Identifying Spam Patterns in {SMS} using Genetic
Programming Approach",
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booktitle = "2019 International Conference on Intelligent Computing
and Control Systems (ICCS)",
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year = "2019",
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pages = "396--400",
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month = may,
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/ICCS45141.2019.9065686",
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abstract = "SMS spam, also known as mobile spam, has become a
prevalent and an ever growing issue due to the
availability of bulk SMS services at nominal costs.
These spam messages may not only be commercial but also
pose a great deal of financial threats to the users. To
fight against SMS spam, a variety of solutions have
been proposed including content-based filtering,
semantic indexing, machine learning classifiers, etc.
However, in this regard evolutionary algorithms have
not been used. Since the nature of SMS is contemporary,
the representation of text messages keep evolving with
the help of slangs, symbols, misspelled words,
abbreviations and acronyms. Hence, such a solution is
required which can accommodate these changes, also
keeping the length of SMS in consideration. The model
proposed in this paper generates regular expressions as
individuals of population, using Genetic Programming
Approach. These regular expressions so generated are
used for the classification purpose. The application of
Genetic Programming in the domain of SMS spam filtering
has not been explored widely. It is able to eliminate
False Positive errors, thus saving legitimate messages
from being misclassified. The performance tends to
improve with higher number of generations. Performance
and confusion matrix for different number of
generations are tabulated.",
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notes = "Also known as \cite{9065686}",
- }
Genetic Programming entries for
Dimple Sharma
Aakanksha Sharaff
Citations