@article{2016talmeidashortspam, title = "Text normalization and semantic indexing to enhance Instant Messaging and \{SMS\} spam filtering ", journal = "Knowledge-Based Systems ", volume = "108", number = "", pages = "25 - 32", year = "2016", note = "New Avenues in Knowledge Bases for Natural Language Processing ", issn = "0950-7051", doi = "http://dx.doi.org/10.1016/j.knosys.2016.05.001", url = "http://www.sciencedirect.com/science/article/pii/S095070511630090\ 9", author = "Tiago A. Almeida and Tiago P. Silva and Igor Santos and José M. Gómez Hidalgo", keywords = "Instant Messaging spam filtering", keywords = "SMS spam filtering", keywords = "SPAM", keywords = "Text categorization", keywords = "Natural language processing ", abstract = "Abstract The rapid popularization of smartphones has contributed to the growth of online Instant Messaging and \{SMS\} usage as an alternative way of communication. The increasing number of users, along with the trust they inherently have in their devices, makes such messages a propitious environment for spammers. In fact, reports clearly indicate that volume of spam over Instant Messaging and \{SMS\} is dramatically increasing year by year. It represents a challenging problem for traditional filtering methods nowadays, since such messages are usually fairly short and normally rife with slangs, idioms, symbols and acronyms that make even tokenization a difficult task. In this scenario, this paper proposes and then evaluates a method to normalize and expand original short and messy text messages in order to acquire better attributes and enhance the classification performance. The proposed text processing approach is based on lexicographic and semantic dictionaries along with state-of-the-art techniques for semantic analysis and context detection. This technique is used to normalize terms and create new attributes in order to change and expand original text samples aiming to alleviate factors that can degrade the algorithms performance, such as redundancies and inconsistencies. We have evaluated our approach with a public, real and non-encoded data-set along with several established machine learning methods. Our experiments were diligently designed to ensure statistically sound results which indicate that the proposed text processing techniques can in fact enhance Instant Messaging and \{SMS\} spam filtering." }