One of the main tasks of cybersecurity is recognizing malicious interactions
with an arbitrary system. Currently, the logging information from each
interaction can be collected in almost unrestricted amounts, but identification
of attacks requires a lot of effort and time of security experts. We propose an
approach for identifying fraud activity through modeling normal behavior in
interactions with a system via machine learning methods, in particular LSTM
neural networks. In order to enrich the modeling with system specific
knowledge, we propose to use an interactive visual interface that allows
security experts to identify semantically meaningful clusters of interactions.
These clusters incorporate domain knowledge and lead to more precise behavior
modeling via informed machine learning. We evaluate the proposed approach on a
dataset containing logs of interactions with an administrative interface of
login and security server. Our empirical results indicate that the informed
modeling is capable of capturing normal behavior, which can then be used to
detect abnormal behavior.