分布式光伏受天气影响较大,测算110kV供电区域的分布式光伏承载能力,对区域供电来说意义重大。基于此,提出基于分类与回归树(calssification and regression tree,CART)的110kV供电区域分布式光伏承载能力测算模型。该模型以分布式电源...分布式光伏受天气影响较大,测算110kV供电区域的分布式光伏承载能力,对区域供电来说意义重大。基于此,提出基于分类与回归树(calssification and regression tree,CART)的110kV供电区域分布式光伏承载能力测算模型。该模型以分布式电源输出功率、区域分布式电源发电量占比、局部分布式电源线损增量等数据为基础,利用CART决策树建立110kV供电区域分布式光伏承载能力测算模型,并使用改进鲸鱼优化算法求解测算结果。经实验测试发现,该模型对分布式光伏承载能力的测算精准度较高,可有效测算不同实验区域在不同季节时的分布式光伏承载能力,具有较高的应用价值。展开更多
The increase of competition, economic recession and financial crises has increased business failure and depending on this the researchers have attempted to develop new approaches which can yield more correct and more ...The increase of competition, economic recession and financial crises has increased business failure and depending on this the researchers have attempted to develop new approaches which can yield more correct and more reliable results. The classification and regression tree (CART) is one of the new modeling techniques which is developed for this purpose. In this study, the classification and regression trees method is explained and tested the power of the financial failure prediction. CART is applied for the data of industry companies which is trade in Istanbul Stock Exchange (ISE) between 1997-2007. As a result of this study, it has been observed that, CART has a high predicting power of financial failure one, two and three years prior to failure, and profitability ratios being the most important ratios in the prediction of failure.展开更多
为持续高效地学习不断产生的航班运行信息,提高航班延误预测模型学习新到达数据的效率,采用集成学习思想,提出了一种基于分类与回归树(classification and regression tree,CART)的增量学习算法.首先,将CART算法与Learn++算法结合实现...为持续高效地学习不断产生的航班运行信息,提高航班延误预测模型学习新到达数据的效率,采用集成学习思想,提出了一种基于分类与回归树(classification and regression tree,CART)的增量学习算法.首先,将CART算法与Learn++算法结合实现了增量分类与回归树(incremental classification and regression tree,I-CART)算法;然后,进一步分析了基分类器间的区别和与精确度的关系,使用选择性集成算法来提高I-CART算法预测速率;最后,将该算法应用到航班延误预测中,增量地学习航班动态运行信息.实验结果表明,该算法有效地提高了模型预测效果.展开更多
文摘分布式光伏受天气影响较大,测算110kV供电区域的分布式光伏承载能力,对区域供电来说意义重大。基于此,提出基于分类与回归树(calssification and regression tree,CART)的110kV供电区域分布式光伏承载能力测算模型。该模型以分布式电源输出功率、区域分布式电源发电量占比、局部分布式电源线损增量等数据为基础,利用CART决策树建立110kV供电区域分布式光伏承载能力测算模型,并使用改进鲸鱼优化算法求解测算结果。经实验测试发现,该模型对分布式光伏承载能力的测算精准度较高,可有效测算不同实验区域在不同季节时的分布式光伏承载能力,具有较高的应用价值。
文摘The increase of competition, economic recession and financial crises has increased business failure and depending on this the researchers have attempted to develop new approaches which can yield more correct and more reliable results. The classification and regression tree (CART) is one of the new modeling techniques which is developed for this purpose. In this study, the classification and regression trees method is explained and tested the power of the financial failure prediction. CART is applied for the data of industry companies which is trade in Istanbul Stock Exchange (ISE) between 1997-2007. As a result of this study, it has been observed that, CART has a high predicting power of financial failure one, two and three years prior to failure, and profitability ratios being the most important ratios in the prediction of failure.
文摘在语音合成系统中,语调短语的自动预测是影响合成语音的自然度和可懂度的关键因素之一。采用了最大熵(Maximum Entropy,ME)模型从无限制的文本中预测语调短语,并且提出了一个自动生成特征模板的层次聚类算法,从而减少了最大熵模型训练过程中的人工参与。实验结果表明,对于语调短语预测而言,最大熵模型明显优于分类与回归树(Classification And Regression Trees,CART)。相比手工总结的特征模板,自动生成的特征模板不仅将语调短语预测的F-score提高了3.18,而且将最大熵模型的大小缩小了78.38。
文摘为持续高效地学习不断产生的航班运行信息,提高航班延误预测模型学习新到达数据的效率,采用集成学习思想,提出了一种基于分类与回归树(classification and regression tree,CART)的增量学习算法.首先,将CART算法与Learn++算法结合实现了增量分类与回归树(incremental classification and regression tree,I-CART)算法;然后,进一步分析了基分类器间的区别和与精确度的关系,使用选择性集成算法来提高I-CART算法预测速率;最后,将该算法应用到航班延误预测中,增量地学习航班动态运行信息.实验结果表明,该算法有效地提高了模型预测效果.