Search Results for author: Hailong Jin

Found 10 papers, 5 papers with code

How Can Cross-lingual Knowledge Contribute Better to Fine-Grained Entity Typing?

no code implementations Findings (ACL) 2022 Hailong Jin, Tiansi Dong, Lei Hou, Juanzi Li, Hui Chen, Zelin Dai, Qu Yincen

Cross-lingual Entity Typing (CLET) aims at improving the quality of entity type prediction by transferring semantic knowledge learned from rich-resourced languages to low-resourced languages.

Entity Typing Transfer Learning +1

Independently Keypoint Learning for Small Object Semantic Correspondence

no code implementations3 Apr 2024 Hailong Jin, Huiying Li

This problem is challenging due to the close proximity of keypoints associated with small objects, which results in the fusion of these respective features.

Object Semantic correspondence

VisKoP: Visual Knowledge oriented Programming for Interactive Knowledge Base Question Answering

no code implementations6 Jul 2023 Zijun Yao, Yuanyong Chen, Xin Lv, Shulin Cao, Amy Xin, Jifan Yu, Hailong Jin, Jianjun Xu, Peng Zhang, Lei Hou, Juanzi Li

We present Visual Knowledge oriented Programming platform (VisKoP), a knowledge base question answering (KBQA) system that integrates human into the loop to edit and debug the knowledge base (KB) queries.

Knowledge Base Question Answering Program induction +2

Learn to Not Link: Exploring NIL Prediction in Entity Linking

1 code implementation25 May 2023 Fangwei Zhu, Jifan Yu, Hailong Jin, Juanzi Li, Lei Hou, Zhifang Sui

We conduct a series of experiments with the widely used bi-encoder and cross-encoder entity linking models, results show that both types of NIL mentions in training data have a significant influence on the accuracy of NIL prediction.

Entity Linking

Encoding Category Trees Into Word-Embeddings Using Geometric Approach

2 code implementations ICLR 2019 Tiansi Dong, Olaf Cremers, Hailong Jin, Juanzi Li, Chrisitan Bauckhage, Armin B. Cremers, Daniel Speicher, Joerg Zimmermann

Experiment results also show that $n$-ball embeddings demonstrate surprisingly good performance in validating the category of unknown word.

Word Embeddings

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