The globalization of Chinese medicine, forged through successive waves of migration, cultural exchanges, and economic imperatives, constitutes a nuanced and intricate process with historical roots extending over mille...The globalization of Chinese medicine, forged through successive waves of migration, cultural exchanges, and economic imperatives, constitutes a nuanced and intricate process with historical roots extending over millennia. It stands as the culmination of interconnected historical events that reverberated beyond the confines of China, emerging as a phenomenon characterized by the adjustment of Chinese medical theories, clinical practices, and materia medica to indigenous customs and healthcare traditions prevalent in both proximate and distant regions. In these glocalized processes, the global and the local intersect and mix. The frameworks of globalization and glocalization allow a critical interpretation of the many hybridizations that have shaped overseas Chinese medicine's history and present.展开更多
深度学习能够从大量原始数据中提取高级抽象特征而不依赖于先验知识,对于金融市场预测具有潜在的吸引力。基于"分解—重构—综合"的思想,提出了一种全新的深度学习预测方法论,并在此基础上构建了一种股票市场单步向前的深度...深度学习能够从大量原始数据中提取高级抽象特征而不依赖于先验知识,对于金融市场预测具有潜在的吸引力。基于"分解—重构—综合"的思想,提出了一种全新的深度学习预测方法论,并在此基础上构建了一种股票市场单步向前的深度学习复合预测模型——CEEMD-LSTM。在此模型中,序列平稳化分解模块的CEEMD能将时间序列中不同尺度的波动或趋势逐级分解出来,产生一系列不同特征尺度的本征模态函数(Intrinsic Mode Function,IMF);采用深度学习中适合处理时间序列的长短期记忆网络(Long-Short Term Memory,LSTM)分别对每个IMF与趋势项提取高级、深度特征,并预测下一交易日收盘价的收益率;最后,综合各个IMF分量以及趋势项的预测值,得到最终的预测值。基于3类不同发达程度股票市场的股票指数的实证结果表明,此模型在预测的两个维度即预测误差与预测命中率上均要优于其他参照模型。展开更多
文摘The globalization of Chinese medicine, forged through successive waves of migration, cultural exchanges, and economic imperatives, constitutes a nuanced and intricate process with historical roots extending over millennia. It stands as the culmination of interconnected historical events that reverberated beyond the confines of China, emerging as a phenomenon characterized by the adjustment of Chinese medical theories, clinical practices, and materia medica to indigenous customs and healthcare traditions prevalent in both proximate and distant regions. In these glocalized processes, the global and the local intersect and mix. The frameworks of globalization and glocalization allow a critical interpretation of the many hybridizations that have shaped overseas Chinese medicine's history and present.
文摘深度学习能够从大量原始数据中提取高级抽象特征而不依赖于先验知识,对于金融市场预测具有潜在的吸引力。基于"分解—重构—综合"的思想,提出了一种全新的深度学习预测方法论,并在此基础上构建了一种股票市场单步向前的深度学习复合预测模型——CEEMD-LSTM。在此模型中,序列平稳化分解模块的CEEMD能将时间序列中不同尺度的波动或趋势逐级分解出来,产生一系列不同特征尺度的本征模态函数(Intrinsic Mode Function,IMF);采用深度学习中适合处理时间序列的长短期记忆网络(Long-Short Term Memory,LSTM)分别对每个IMF与趋势项提取高级、深度特征,并预测下一交易日收盘价的收益率;最后,综合各个IMF分量以及趋势项的预测值,得到最终的预测值。基于3类不同发达程度股票市场的股票指数的实证结果表明,此模型在预测的两个维度即预测误差与预测命中率上均要优于其他参照模型。