Xutao Yang
2025
EMO-NLP at SemEval-2025 Task 11: Multi-label Emotion Detection in Multiple Languages Based on XLMCNN
Jing Li
|
Yucheng Xian
|
Xutao Yang
Proceedings of the 19th International Workshop on Semantic Evaluation (SemEval-2025)
This paper describes the system implemented by the EMO-NLP team for track A of task 11 in SemEval-2025: Bridging the Gap in Text-Based Emotion Detection. The task focuses on multiple datasets covering 28 languages for multi-label emotion detection. Most of these languages are low-resource languages. To achieve this goal, we propose a multilingual multi-label emotion detection system called XLMCNN, which can perform multi-label emotion detection across multiple languages. To enable emotion detection in various languages, we utilize the pre-trained model XLM-RoberTa-large to obtain embeddings for the text in different languages. Subsequently, we apply a two-dimensional convolutional operation to the embeddings to extract text features, thereby enhancing the accuracy of multi-label emotion detection. Additionally, we assign weights to different emotion labels to mitigate the impact of uneven label distribution. In this task, we focus on nine languages, among which the Amharic language achieves the best performance with our system, ranking 21st out of 45 teams.
2018
YNU-HPCC at SemEval-2018 Task 12: The Argument Reasoning Comprehension Task Using a Bi-directional LSTM with Attention Model
Quanlei Liao
|
Xutao Yang
|
Jin Wang
|
Xuejie Zhang
Proceedings of the 12th International Workshop on Semantic Evaluation
An argument is divided into two parts, the claim and the reason. To obtain a clearer conclusion, some additional explanation is required. In this task, the explanations are called warrants. This paper introduces a bi-directional long short term memory (Bi-LSTM) with an attention model to select a correct warrant from two to explain an argument. We address this question as a question-answering system. For each warrant, the model produces a probability that it is correct. Finally, the system chooses the highest correct probability as the answer. Ensemble learning is used to enhance the performance of the model. Among all of the participants, we ranked 15th on the test results.