Profiling Serial Killers Using Multiple Supervised Machine Learning Approaches
Summary
Criminal profiling has gained a lot of recognition over the
years. Profiling is done by experts who use information from
a crime scene, to create a serial killer profile. Such a profile
consists of serial killer attributes and can include: the gender, race and possible previous activities of the killer. The
paper proposes a framework that combines multiple wellknows supervised machine learning techniques to create such
a profile. The majority of the proposed approaches obtained
a balanced accuracy over 72%, and a predictive accuracy
over 80%. The proposed approaches also performed well on
a set of other databases, including a single-victim homicide
database where it reached a balanced accuracy over 72% and
a predictive accuracy over 77%