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The Challenge of Retraining Pre-trained Models with Removed Data
The speaker discusses the initial step of running contrastive learning on data to improve feature attribution, along with the challenge of disentangling contributions of all images in the training set. They further mention the concept of compensation as a motivation for people to opt into the system and the right for individuals to opt out and pull their data. The speaker highlights the current problem of having to retrain the whole pre-trained model when removing specific images, and the need for a scalable way to quickly adjust the model without retraining from scratch.