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vinrok/AnomalyHack

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ML-Xpertz (AnomalyHack)

Hackmakers hackathon


Challenge Name - Anomaly Detection

Problem Statement -

How might we better understand, detect and alert on compromised or suspicious accounts based upon unexpected actions or transactions within environments and applications?

Solution -

We have considered two datasets for implementation (one provided as part of hackathon, one custom) and performed various EDA methodologies to get insights of the fraudulent transactions. As a part of model implementation, we tried One class SVM, IsolationForest, LocalOutlierFactor and LSTM and after seeing the accuracy and performance selected final model. Thus, also created a prototype to implement the Anomaly detection process for related data and get the results as a prediction.

Here is the link to Video and Video with explanation

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Hackmakers hackathon

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