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软岩巷道施工可推移桥式转载机试制与应用
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作者 史金彪 朱铁明 《铁法科技》 2008年第1期23-25,共3页
本文阐述了可推移桥式转载机的试制思路、构成、工作原理及其应用情况,工程应用实践表明该机安全适用、生产效率较高,提高了巷道进尺,减轻了劳动强度。
关键词 史岩巷道 自动出货 可推移 桥式转载机
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Two-way Markov random walk transductive learning algorithm
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作者 李宏 卢小燕 +1 位作者 刘玮文 Clement K.Kirui 《Journal of Central South University》 SCIE EI CAS 2014年第3期970-977,共8页
Researchers face many class prediction challenges stemming from a small size of training data vis-a-vis a large number of unlabeled samples to be predicted. Transductive learning is proposed to utilize information abo... Researchers face many class prediction challenges stemming from a small size of training data vis-a-vis a large number of unlabeled samples to be predicted. Transductive learning is proposed to utilize information about unlabeled data to estimate labels of the unlabeled data for this condition. This work presents a new transductive learning method called two-way Markov random walk(TMRW) algorithm. The algorithm uses information about labeled and unlabeled data to predict the labels of the unlabeled data by taking random walks between the labeled and unlabeled data where data points are viewed as nodes of a graph. The labeled points correlate to unlabeled points and vice versa according to a transition probability matrix. We can get the predicted labels of unlabeled samples by combining the results of the two-way walks. Finally, ensemble learning is combined with transductive learning, and Adboost.MH is taken as the study framework to improve the performance of TMRW, which is the basic learner. Experiments show that this algorithm can predict labels of unlabeled data well. 展开更多
关键词 CLASSIFICATION transductive learning two-way Markov random walk (TMRW) Adboost.MH
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