共 188 条
- [51] Hendricks L A, Hu Ronghang, Darrell T, Et al., Generating counterfactual explanations with natural language, (2018)
- [52] Chang Chunhao, Creager E, Goldenberg A, Et al., Explaining image classifiers by counterfactual generation[C/OL], Proc of the 7th Int Conf on Learning Representations, (2019)
- [53] Kanehira A, Takemoto K, Inayoshi S, Et al., Multimodal explanations by predicting counterfactuality in videos, Proc of the 32nd IEEE Conf on Computer Vision and Pattern Recognition, pp. 8594-8602, (2019)
- [54] Akula A R, Wang Shuai, Zhu Songchun, CoCoX: Generating conceptual and counterfactual explanations via fault-lines, Proc of the 34th AAAI Conf on Artificial Intelligence, pp. 2594-2601, (2020)
- [55] Madumal P, Miller T, Sonenberg L, Et al., Explainable reinforcement learning through a causal lens, Proc of the 34th AAAI Conf on Artificial Intelligence, pp. 2493-2500, (2020)
- [56] Mothilal R K, Sharma A, Tan C., Explaining machine learning classifiers through diverse counterfactual explanations[C], Proc of the 2020 Conf on Fairness, Accountability, and Transparency, pp. 607-617, (2020)
- [57] Albini E, Rago A, Baroni P, Et al., Relation-based counterfactual explanations for Bayesian network classifiers[C], Proc of the 29th Int Joint Conf on Artificial Intelligence, pp. 451-457, (2020)
- [58] Kenny E M, Keane M T., On generating plausible counterfactual and semi-factual explanations for deep learning, Proc of the 35th AAAI Conf on Artificial Intelligence, pp. 11575-11585, (2021)
- [59] Abrate C, Bonchi F., Counterfactual graphs for explainable classification of brain networks[J], (2021)
- [60] Yang Fan, Alva S S, Chen Jiahao, Et al., Model-based counterfactual synthesizer for interpretation, (2021)