Hongping Fu
Beijing Institute of Technology
16 Papers
44 Citations
Hongping Fu is an academic researcher from Beijing Institute of Technology. The author has contributed to research in topics: Question answering & Weak entity. The author has an hindex of 6, co-authored 14 publications.
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Papers
An Approach Based on Tree Kernels for Opinion Mining of Online Product Reviews
Peng Jiang,Chunxia Zhang,Hongping Fu,Zhendong Niu,Qing Yang +4 more
- 13 Dec 2010
TL;DR: The proposed tree kernels encode not only syntactic structure information, but also sentiment related information, such as sentiment boundary and sentiment polarity, which are important features to opinion mining.
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Segmenting Individual Tree from TLS Point Clouds Using Improved DBSCAN
TL;DR: The individual tree segmentation result of the proposed method is comparable to those of the existing methods, and the optimal parameters can be automatically extracted and the small trees under tall trees can be accurately segmented.
ASELM: Adaptive semi-supervised ELM with application in question subjectivity identification
TL;DR: An adaptive semi-supervised Extreme Learning Machine (ASELM) is proposed to solve the data imbalance problem in Community Question Answering, and outperformed the performance of basic ELM, SELM, Weighted ELM and SS-ELM on both F1 measure and accuracy.
12
Domain-specific term extraction from free texts
Chunxia Zhang,Zhendong Niu,Peng Jiang,Hongping Fu +3 more
- 29 May 2012
TL;DR: This paper proposes an iterative bootstrapping approach to extracting domain-specific terms from un-annotated Chinese free texts by identifying strings whose internal components are with more probabilities being inside domain- specific terms.
12
•Proceedings Article
A framework for opinion question answering
Peng Jiang,Hongping Fu,Chunxia Zhang,Zhendong Niu +3 more
- 01 Nov 2010
TL;DR: This paper proposes a framework for opinion question answering by combining opinion mining with traditional question answering methods, and uses question-answer opinion patterns to extract and rank candidate answers from text snippets.
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