Among the topics discussed in Social Media, some lead to controversy. A
number of recent studies have focused on the problem of identifying controversy
in social media mostly based on the analysis of textual content or rely on
global network structure. Such approaches have strong limitations due to the
difficulty of understanding natural language, and of investigating the global
network structure. In this work we show that it is possible to detect
controversy in social media by exploiting network motifs, i.e., local patterns
of user interaction. The proposed approach allows for a language-independent
and fine- grained and efficient-to-compute analysis of user discussions and
their evolution over time. The supervised model exploiting motif patterns can
achieve 85% accuracy, with an improvement of 7% compared to baseline
structural, propagation-based and temporal network features