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projects:swe:start [2015/05/29 15:07] hjprojects:swe:start [2015/09/15 16:09] hj
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-In this project, we propose a general framework +In this project, we propose a general framework to incorporate semantic knowledge 
-to incorporate semantic knowledge +into the popular data-driven learning process of word embeddings to improve the 
-into the popular data-driven learning process +quality of them. Under this framework, we represent semantic knowledge as many 
-of word embeddings to improve the +**ordinal ranking inequalities** and formulate the learning of semantic word embeddings 
-quality of them. Under this framework, +(SWE) as a constrained optimization problem, where the data-derived objective 
-we represent semantic knowledge as many +function is optimized subject to all ordinal knowledge inequality constraints 
-ordinal ranking inequalities and formulate +extracted from available knowledge resources such as Thesaurus and Word-Net. We have demonstrated that this constrained optimization problem can be efficiently 
-the learning of semantic word embeddings +solved by the stochastic gradient descent (SGD) algorithm, even for a large
-(SWE) as a constrained optimization +
-problem, where the data-derived objective +
-function is optimized subject to all +
-ordinal knowledge inequality constraints +
-extracted from available knowledge resources +
-such as Thesaurus and Word- +
-Net. We have demonstrated that this constrained +
-optimization problem can be efficiently +
-solved by the stochastic gradient +
-descent (SGD) algorithm, even for a large+
 number of inequality constraints. number of inequality constraints.
-\\+ 
 +**Project website:** 
 + 
 +  * Code and resource download at [[http://home.ustc.edu.cn/~quanliu/research-SWE.html|USTC]]  or [[ https://github.com/iunderstand/SWE|GitHub site]] 
 +  
 **Reference:**  **Reference:** 
-\\ + 
-[1] //Shiliang Zhang and Hui Jiang//, "Hybrid Orthogonal Projection and Estimation (HOPE): A New Framework to Probe and Learn Neural Networks,[[http://arxiv.org/abs/1502.00702|arXiv:1502.00702]]+ 
 +[1] //Quan Liu, Hui Jiang, Si Wei, Zhen-Hua Ling and Yu Hu//, "Learning SemanticWord Embeddings based on Ordinal Knowledge Constraints," Proceedings of The 53th Annual Meeting of the Association for Computational Linguistics (ACL 2015), July, 2015. ([[https://aclweb.org/anthology/P/P15/P15-1145.pdf|here]])  
projects/swe/start.txt · Last modified: 2015/09/22 01:20 by hj