Recurrent Dynamical Projection for Time series-based Fraud detection
Title | Recurrent Dynamical Projection for Time series-based Fraud detection |
Publication Type | Conference Proceedings |
Year of Conference | 2017 |
Authors | Antonelo EA, State R |
Conference Name | International Conference on Artificial Neural Networks (ICANN) |
Pagination | 503-511 |
Publisher | Springer |
Abstract | A Reservoir Computing approach is used in this work for generating a rich nonlinear spatial feature from the dynamical projec- tion of a limited-size input time series. The final state of the Recurrent neural network (RNN) forms the feature subsequently used as input to a regressor or classifier (such as Random Forest or Least Squares). This proposed method is used for fraud detection in the energy distribution domain, namely, detection of non-technical loss (NTL) using a real-world dataset containing only the monthly energy consumption time series of (more than 300K) users. The heterogeneity of user profiles is dealt with a clustering approach, where the cluster id is also input to the classifier. Experimental results shows that the proposed recurrent feature genera- tor is able to extract relevant nonlinear transformations of the raw time series without a priori knowledge and perform as good as (and sometimes better than) baseline models with handcrafted features. |
DOI | 10.1007/978-3-319-68612-7_57 |