Adversarial Machine Learning
Machine learning techniques were originally designed for environments in which the training and test data are assumed to be generated from the same (although possibly unknown) distribution and/or process. In the presence of intelligent and adaptive adversaries, however, this working hypothesis is likely to be violated.
Applying machine learning to use cases like fraud, security, anti-money laundering and know your customer (KYC) presents a unique set of challenges:
- Little or no labeled data
- Non-stationary data distributions
- Model decay
- Counterfactual conditions
This event is entirely devoted to understanding how modern machine learning methods can be applied to these adversarial environments. We will have hands-on workshops as well as talks by leading practitioners from industry and academia.
Register at conf.startup.ml/adversarial
Claim the event and start manage its content.I am the organizer