[PDF][PDF] Trustworthiness in retrieval-augmented generation systems: A survey
Retrieval-Augmented Generation (RAG) has quickly grown into a pivotal paradigm in the
development of Large Language Models (LLMs). While much of the current research in this …
development of Large Language Models (LLMs). While much of the current research in this …
VisionTrap: Vision-Augmented Trajectory Prediction Guided by Textual Descriptions
Predicting future trajectories for other road agents is an essential task for autonomous
vehicles. Established trajectory prediction methods primarily use agent tracks generated by …
vehicles. Established trajectory prediction methods primarily use agent tracks generated by …
Exploiting synthetic data for data imbalance problems: Baselines from a data perspective
We live in a vast ocean of data, and deep neural networks are no exception to this. However,
this data exhibits an inherent phenomenon of imbalance. This imbalance poses a risk of …
this data exhibits an inherent phenomenon of imbalance. This imbalance poses a risk of …
Partition-and-debias: Agnostic biases mitigation via a mixture of biases-specific experts
Bias mitigation in image classification has been widely researched, and existing methods
have yielded notable results. However, most of these methods implicitly assume that a given …
have yielded notable results. However, most of these methods implicitly assume that a given …
Enhancing Intrinsic Features for Debiasing via Investigating Class-Discerning Common Attributes in Bias-Contrastive Pair
In the image classification task deep neural networks frequently rely on bias attributes that
are spuriously correlated with a target class in the presence of dataset bias resulting in …
are spuriously correlated with a target class in the presence of dataset bias resulting in …
Selective mixup helps with distribution shifts, but not (only) because of mixup
Mixup is a highly successful technique to improve generalization of neural networks by
augmenting the training data with combinations of random pairs. Selective mixup is a family …
augmenting the training data with combinations of random pairs. Selective mixup is a family …
Navigate Beyond Shortcuts: Debiased Learning through the Lens of Neural Collapse
Recent studies have noted an intriguing phenomenon termed Neural Collapse that is when
the neural networks establish the right correlation between feature spaces and the training …
the neural networks establish the right correlation between feature spaces and the training …
Tailoring mixup to data using kernel warping functions
Data augmentation is an essential building block for learning efficient deep learning models.
Among all augmentation techniques proposed so far, linear interpolation of training data …
Among all augmentation techniques proposed so far, linear interpolation of training data …
Beyond silence: Bias analysis through loss and asymmetric approach in audio anti-spoofing
Current trends in audio anti-spoofing detection research strive to improve models' ability to
generalize across unseen attacks by learning to identify a variety of spoofing artifacts. This …
generalize across unseen attacks by learning to identify a variety of spoofing artifacts. This …
Ameliorate Spurious Correlations in Dataset Condensation
Dataset Condensation has emerged as a technique for compressing large datasets into
smaller synthetic counterparts, facilitating downstream training tasks. In this paper, we study …
smaller synthetic counterparts, facilitating downstream training tasks. In this paper, we study …