3260 papers • 126 benchmarks • 313 datasets
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A 2-step approach is proposed to address this new ECPE task, which first performs individual emotion extraction and cause extraction via multi-task learning, and then conduct emotion-cause pairing and filtering.
A new end-to-end approach, called ECPE-Two-Dimensional (ECPE-2D), to represent the emotion-cause pairs by a 2D representation scheme and improves the F1 score of the state-of-the-art from 61.28% to 68.89%.
This work proposes a multi-task learning model that can extract emotions, causes and emotion-cause pairs simultaneously in an end-to-end manner and outperforms a range of state-of-the-art approaches in terms of both effectiveness and efficiency.
A transition-based model is proposed to transform the emotion-cause pair extraction task into a procedure of parsing-like directed graph construction, from which it can recognize emotions with the corresponding causes simultaneously, thereby optimizing separate subtasks jointly and maximizing mutual benefits of tasks interdependently.
This work tackles emotion-cause pair extraction from a ranking perspective, i.e., ranking clause pair candidates in a document, and proposes a one-step neural approach which emphasizes inter-clause modeling to perform end-to-end extraction.
A novel end-to-end Pair Graph Convolutional Network (PairGCN) is presented to model pair-level contexts so that to capture the dependency information among local neighborhood candidate pairs.
A Symmetric Local Search Network model is proposed to perform the detection and matching simultaneously by local search of emotion and cause clauses in a document to demonstrate the superiority of this model over existing state-of-the-art methods.
A Dual-Questioning Attention Network is proposed to alleviate limitations in emotion cause extraction by question candidate emotions and causes to the context independently through attention networks for a contextual and semantical answer.
This paper adapts the NTCIR-13 ECE corpus and establishes a baseline for the ECPE task to produce significant performance improvements over the multi-stage approach and achieves comparable performance to the state-of-the-art methods.
This work proposes a feature-task alignment to explicitly model the specific emotion-&cause-specific features and the shared interactive feature in between, and an inter- task alignment, in which the label distance between the ECPE and the combinations of EE&CE are learned to be narrowed for better label consistency.
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