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Hans could complete a wide variety of tasks with a high degree of accuracy, and toured throughout germany. The empirical work is clean and appears reproducible. The work demonstrates significant novelty and practicality
The core idea of using consensus is genuinely clever I find the paper’s topic of efficient secure inference for diffusion models interesting, its proposed technique clever and its writing of high quality It's a really smart, original way to use the agent's own data to spot an attack, rather than relying on some external filter that doesn't have the right context
The figures, especially 1 and 2, make the concept very clear and easy to grasp.
With a clever usage of the equivalence between reward models and the corresponding optimal policy, the algorithm features a simple objective that combines (i) a preference optimization loss that directly aligns the policy with human preference, and (ii) a supervised learning loss which explicitly imitates the policy with a baseline distribution. This paper explores the problem of targeted concept erasure in deep learning models, aligning with broader discussions in the machine learning community on model interpretability, unlearning, and mitigating biases The work is relevant to. The msedi loss which is new to symbolic regression and a clever solution to encourage dynamically correct solutions in local sr
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