Search Results for author: Liang-Chih Yu

Found 35 papers, 5 papers with code

Overview of the ROCLING 2022 Shared Task for Chinese Healthcare Named Entity Recognition

no code implementations ROCLING 2022 Lung-Hao Lee, Chao-Yi Chen, Liang-Chih Yu, Yuen-Hsien Tseng

This paper describes the ROCLING-2022 shared task for Chinese healthcare named entity recognition, including task description, data preparation, performance metrics, and evaluation results.

Chinese Named Entity Recognition named-entity-recognition +1

Knowledge Distillation with Reptile Meta-Learning for Pretrained Language Model Compression

1 code implementation COLING 2022 Xinge Ma, Jin Wang, Liang-Chih Yu, Xuejie Zhang

The teacher can continuously meta-learn the student’s learning objective to adjust its parameters for maximizing the student’s performance throughout the distillation process.

Knowledge Distillation Language Modelling +3

ROCLING-2021 Shared Task: Dimensional Sentiment Analysis for Educational Texts

no code implementations ROCLING 2021 Liang-Chih Yu, Jin Wang, Bo Peng, Chu-Ren Huang

This paper presents the ROCLING 2021 shared task on dimensional sentiment analysis for educational texts which seeks to identify a real-value sentiment score of self-evaluation comments written by Chinese students in the both valence and arousal dimensions.

Sentiment Analysis

Accelerating Inference for Pretrained Language Models by Unified Multi-Perspective Early Exiting

no code implementations COLING 2022 Jun Kong, Jin Wang, Liang-Chih Yu, Xuejie Zhang

To address this limitation, a unified horizontal and vertical multi-perspective early exiting (MPEE) framework is proposed in this study to accelerate the inference of transformer-based models.

Personalized LoRA for Human-Centered Text Understanding

1 code implementation10 Mar 2024 You Zhang, Jin Wang, Liang-Chih Yu, Dan Xu, Xuejie Zhang

Effectively and efficiently adapting a pre-trained language model (PLM) for human-centered text understanding (HCTU) is challenging since user tokens are million-level in most personalized applications and do not have concrete explicit semantics.

Language Modelling Zero-Shot Learning

Learning to Memorize Entailment and Discourse Relations for Persona-Consistent Dialogues

1 code implementation12 Jan 2023 Ruijun Chen, Jin Wang, Liang-Chih Yu, Xuejie Zhang

Both memories collaborate to obtain entailment and discourse representation for the generation, allowing a deeper understanding of both consistency and coherence.

 Ranked #1 on Dialogue Generation on Persona-Chat (using extra training data)

Dialogue Generation

Investigating Dynamic Routing in Tree-Structured LSTM for Sentiment Analysis

no code implementations IJCNLP 2019 Jin Wang, Liang-Chih Yu, K. Robert Lai, Xue-jie Zhang

Deep neural network models such as long short-term memory (LSTM) and tree-LSTM have been proven to be effective for sentiment analysis.

Sentence Sentiment Analysis +1

IJCNLP-2017 Task 2: Dimensional Sentiment Analysis for Chinese Phrases

no code implementations IJCNLP 2017 Liang-Chih Yu, Lung-Hao Lee, Jin Wang, Kam-Fai Wong

This paper presents the IJCNLP 2017 shared task on Dimensional Sentiment Analysis for Chinese Phrases (DSAP) which seeks to identify a real-value sentiment score of Chinese single words and multi-word phrases in the both valence and arousal dimensions.

Sentiment Analysis Task 2

SentiNLP at IJCNLP-2017 Task 4: Customer Feedback Analysis Using a Bi-LSTM-CNN Model

no code implementations IJCNLP 2017 Shuying Lin, Huosheng Xie, Liang-Chih Yu, K. Robert Lai

Therefore, the automatic classification of the customer feedback is of importance for the analysis system to identify meanings or intentions that the customer express.

General Classification Multi-Label Classification +5

Refining Word Embeddings for Sentiment Analysis

no code implementations EMNLP 2017 Liang-Chih Yu, Jin Wang, K. Robert Lai, Xue-jie Zhang

Word embeddings that can capture semantic and syntactic information from contexts have been extensively used for various natural language processing tasks.

Learning Word Embeddings Sentiment Analysis

Overview of NLP-TEA 2016 Shared Task for Chinese Grammatical Error Diagnosis

no code implementations WS 2016 Lung-Hao Lee, Gaoqi Rao, Liang-Chih Yu, Endong Xun, Baolin Zhang, Li-Ping Chang

This paper presents the NLP-TEA 2016 shared task for Chinese grammatical error diagnosis which seeks to identify grammatical error types and their range of occurrence within sentences written by learners of Chinese as foreign language.

Grammatical Error Correction

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