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Titlebook: Artificial Neural Networks and Machine Learning – ICANN 2023; 32nd International C Lazaros Iliadis,Antonios Papaleonidas,Chrisina Jay Confe

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,Spannungen auf geneigten Flächen,odel to be right for the right reasons and be adversarial robust. We evaluate the proposed approach with two categories of problems: texture-based and structure-based. The proposed method presented SOTA results in the structure-based problems and competitive results in the texture-based ones.
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Die Methode der finiten Elementero-shot text-to-SQL parsers, their performances degrade under adversarial and domain generalization perturbations, with varying degrees of robustness depending on the type and level of perturbations applied. We also explore the impact of usage-related factors such as prompt design on the performance
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Normalspannungen in Stäben und Scheibenversality: 1) by adding our universal adversarial noises to different images, the fooling rates of our method on the target model are almost all above 95%; 2) when no training data are available for the targeted model, our method is still able to implement targeted attacks; 3) the method transfers w
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ANODE-GAN: Incomplete Time Series Imputation by Augmented Neural ODE-Based Generative Adversarial Nan produce complete data that is closest to the original time series according to the squared error loss. By combining the generator and discriminator, ANODE-GAN is capable of imputing missing data at any desired time point while preserving the original feature distributions and temporal dynamics. M
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Boosting Adversarial Transferability Through Intermediate Feature,g existing adversarial samples. Then, we analyze which features are more likely to produce adversarial samples with high transferability. Finally, we optimize those features to improve the attack transferability of the adversarial samples. Furthermore, rather than using the model’s logit output, we
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