2016
DOI: 10.7717/peerj-cs.65
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Fuzzy based binary feature profiling for modus operandi analysis

Abstract: It is a well-known fact that some criminals follow perpetual methods of operations known as modi operandi. Modus operandi is a commonly used term to describe the habits in committing crimes. These modi operandi are used in relating criminals to crimes for which the suspects have not yet been recognized. This paper presents the design, implementation and evaluation of a new method to find connections between crimes and criminals using modi operandi. The method involves generating a feature matrix for a particul… Show more

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Cited by 5 publications
(5 citation statements)
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References 43 publications
(28 reference statements)
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“…A feature selection method for binary classification problems was introduced by Dashtban, Balafar & Suravajhala (2018) , in which the traditional bat algorithm is extended with more refined formulations, improved and multi-objective operators and a novel local search strategy. Other examples of feature selection methods could be found in MotieGhader et al (2020) , Dashtban & Balafar (2017) , Nematzadeh et al (2019) , Maghsoudloo et al (2020) , Rostami et al (2020) , Shamsara & Shamsara (2020) , Ao et al (2020) , Statnikov et al (2005) , Rana et al (2019) , Chamikara et al (2016) , Nardone, Ciaramella & Staiano (2019) and the references cited therein.…”
Section: Related Workmentioning
confidence: 99%
“…A feature selection method for binary classification problems was introduced by Dashtban, Balafar & Suravajhala (2018) , in which the traditional bat algorithm is extended with more refined formulations, improved and multi-objective operators and a novel local search strategy. Other examples of feature selection methods could be found in MotieGhader et al (2020) , Dashtban & Balafar (2017) , Nematzadeh et al (2019) , Maghsoudloo et al (2020) , Rostami et al (2020) , Shamsara & Shamsara (2020) , Ao et al (2020) , Statnikov et al (2005) , Rana et al (2019) , Chamikara et al (2016) , Nardone, Ciaramella & Staiano (2019) and the references cited therein.…”
Section: Related Workmentioning
confidence: 99%
“…Chi, Lin, Jin, Xu, and Qi () developed a decision support system for detecting serial crimes鈥攖heir underlying technique is pairwise classification based on similarity, which they state is interpretable and easy to tune. Chamikara et al () use fuzzy logic for matching sets of behavioral features.…”
Section: Technological Solutionsmentioning
confidence: 99%
“…Sri Lanka Police developed the Crime Investigation Decision Support System (CIDSS, Chamikara et al, ), a web based intelligent crime analysis system. Various processes were incorporated into the system, for instance a crime clock and periodic pattern visualizer (temporal aspects of crimes), crime map and hotspot visualizer (based on geographic information system), and crime comparator and modus operandi analysis (fuzzy matching of links, Chamikara et al, ). The data mining tools are used for information extraction and analysis of the historical and current crime data.…”
Section: Software Suitesmentioning
confidence: 99%
“…This growing availability of different sources of data has been able to revolutionize leading fields such as healthcare technologies to achieve excellent achievements in many areas such as drug discovery, early outbreak detection, epidemic control analysis, which were once considered to be complicated [2,3]. However, data related to the fields such as healthcare, banking and policing are massively convoluted with sensitive private data [6,7,8]. It is essential to go for extreme measures to protect sensitive data while analyzing them to generate meaningful insights [9,10].…”
Section: Introductionmentioning
confidence: 99%