3260 papers • 126 benchmarks • 313 datasets
The Causal Emotion Entailment is a simpler version of the span extraction task. In this task, given a target utterance (U) with emotion E, the goal is to predict which particular utterances in the conversation history H(U) are responsible for the emotion E in the target utterance.
(Image credit: Papersgraph)
These leaderboards are used to track progress in causal-emotion-entailment-6
Use these libraries to find causal-emotion-entailment-6 models and implementations
No subtasks available.
This work introduces a new task highly relevant for (explainable) emotion-aware artificial intelligence: recognizing emotion cause in conversations, provides a new highly challenging publicly available dialogue-level dataset for this task, and gives strong baseline results on this dataset.
ChatGPT shows strong in-context learning ability but still has a significant gap with advanced task-specific methods, and generates explanations that approach human performance, showing its great potential in explainable mental health analysis.
A Two-Stream Attention Model (TSAM) is proposed to effectively model the speaker’s emotional influences in the conversational history and achieves new State-Of-The-Art (SOTA) performance and outperforms baselines remarkably.
This work builds conversations as graphs to overcome implicit contextual modelling of the original entailment style and proposes a sentiment-realized knowledge selecting strategy to filter CSK.
This work proposes Knowledge-Bridged Causal Interaction Network (KBCIN) with commonsense knowledge (CSK) leveraged as three bridges to capture the deep inter-utterance dependencies in the conversational context via the CSK-Enhanced Graph Attention module.
This work proposes MuTEC, an end-to-end Multi-Task learning framework for extracting emotions, emotion cause, and entailment in conversations, which performs better than the baselines for most of the data folds provided in the dataset.
A novel position-aware graph is devised to encode the entire conversation, fully modeling causal relations among utterances, and consistently achieves state-of-the-art performance on two challenging test sets, proving the effectiveness of the model.
Adding a benchmark result helps the community track progress.