...
首页> 外文期刊>Grey systems: theory and application >Grey theory-based BP-NN co-training for dense sequence long-term tendency prediction
【24h】

Grey theory-based BP-NN co-training for dense sequence long-term tendency prediction

机译:基于灰色理论的BP-NN共同训练,用于密集序列长期趋势预测

获取原文
获取原文并翻译 | 示例
           

摘要

Purpose - The purpose of this paper is to solve the problems existing in topic popularity prediction in online social networks and advance a fine-grained and long-term prediction model for lack of sufficient data. Design/methodology/approach - Based on GM(1,1) and neural networks, a co-training model for topic tendency prediction is proposed in this paper. The interpolation based on GM(1,1) is employed to generate finegrained prediction values of topic popularity time series and two neural network models are considered to achieve convergence by transmitting training parameters via their loss functions. Findings - The experiment results indicate that the integrated model can effectively predict dense sequence with higher performance than other algorithms, such as NN and RBF_LSSVM. Furthermore, the Markov chain state transition probability matrix model is used to improve the prediction results. Practical implications - Fine-grained and long-term topic popularity prediction, further improvement could be made by predicting any interpolation in the time interval of popularity data points. Originality/value - The paper succeeds in constructing a co-training model with GM(1,1) and neural networks. Markov chain state transition probability matrix is deployed for further improvement of popularity tendency prediction.
机译:目的 - 本文的目的是解决在线社交网络主题普及预测中存在的问题,并提高缺乏足够数据的细粒度和长期预测模型。设计/方法/方法 - 基于GM(1,1)和神经网络,本文提出了一个主题趋势预测的共同训练模型。基于GM(1,1)的插值用于生成主题流行时间序列的FineSgregred预测值,并且认为两个神经网络模型通过通过它们的损耗函数传输训练参数来实现收敛。结果 - 实验结果表明,集成模型可以有效地预测比其他算法更高的性能的密集序列,例如NN和RBF_LSSVM。此外,马尔可夫链状态转换概率矩阵模型用于改善预测结果。实际意义 - 细粒度和长期主题普及预测,通过预测受欢迎数据点的时间间隔内的任何插值,可以进一步改进。创意/值 - 该论文成功构建了GM(1,1)和神经网络的共同培训模型。马尔可夫链状态转换概率矩阵被部署以进一步改善人气趋势预测。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号