Weifeng Ge
2023
Characterizing the Impacts of Instances on Robustness
Rui Zheng
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Zhiheng Xi
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Qin Liu
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Wenbin Lai
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Tao Gui
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Qi Zhang
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Xuanjing Huang
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Jin Ma
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Ying Shan
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Weifeng Ge
Findings of the Association for Computational Linguistics: ACL 2023
Building robust deep neural networks (DNNs) against adversarial attacks is an important but challenging task. Previous defense approaches mainly focus on developing new model structures or training algorithms, but they do little to tap the potential of training instances, especially instances with robust patterns carring innate robustness. In this paper, we show that robust and non-robust instances in the training dataset, though are both important for test performance, have contrary impacts on robustness, which makes it possible to build a highly robust model by leveraging the training dataset in a more effective way. We propose a new method that can distinguish between robust instances from non-robust ones according to the model’s sensitivity to perturbations on individual instances during training. Surprisingly, we find that the model under standard training easily overfits the robust instances by relying on their simple patterns before the model completely learns their robust features. Finally, we propose a new mitigation algorithm to further release the potential of robust instances. Experimental results show that proper use of robust instances in the original dataset is a new line to achieve highly robust models.
Improving Empathetic Dialogue Generation by Dynamically Infusing Commonsense Knowledge
Hua Cai
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Xuli Shen
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Qing Xu
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Weilin Shen
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Xiaomei Wang
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Weifeng Ge
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Xiaoqing Zheng
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Xiangyang Xue
Findings of the Association for Computational Linguistics: ACL 2023
In empathetic conversations, individuals express their empathy towards others. Previous work has mainly focused on generating empathetic responses by utilizing the speaker’s emotion. Besides, external commonsense knowledge has been applied to enhance the system’s understandings of the speaker’s situation. However, given an event, commonsense knowledge base contains various relations, potentially leading to confusion for the dialogue system. Consequently, inconsistencies arise among the emotion, generated response and speaker’s contextual information. To this end, we propose a novel approach for empathetic response generation, which incorporates an adaptive module for commonsense knowledge selection to ensure consistency between the generated empathetic responses and the speaker’s situation. This selected knowledge is used to refine the commonsense cognition and empathy expression for generated responses. Experimental results show that our approach significantly outperforms baseline models in both automatic and human evaluations, exhibiting the generation of more coherent and empathetic responses. Moreover, case studies highlight the interpretability of knowledge selection in the responses and the effectiveness of adaptive module in our model. Code: https://github.com/Hanscal/DCKS.
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Co-authors
- Rui Zheng 1
- Zhiheng Xi 1
- Qin Liu 1
- Wenbin Lai 1
- Tao Gui 1
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