Anomaly Detection in Telecommunications by Valentina Djordjevic
This presentation will cover the types of anomalies often met in the data, and comparative analysis of two different techniques that could be used for their detection Autoencoders and Isolation Forest. After a short introduction to theoretical concepts of these techniques, as well as their pros and cons, the results of their application to data from a telecommunication network will be presented and analysed.
Видео Anomaly Detection in Telecommunications by Valentina Djordjevic канала DATA MINER
Видео Anomaly Detection in Telecommunications by Valentina Djordjevic канала DATA MINER
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