The construction cost index is an important indicator of the construction industry. Predicting CCI has important practical significance. This paper combines information fusion with machine learning, and proposes a multi-feature fusion (MFF) module for time series forecasting. The main contribution of MFF is to improve the prediction accuracy of CCI, and propose a feature fusion framework for time series. Compared with the convolution module, the MFF module is a module that extracts certain features. Experiments have proved that the combination of MFF module and multi-layer perceptron has a relatively good prediction effect. The MFF neural network model has high prediction accuracy and prediction efficiency, which is a study of continuous attention.
翻译:建筑成本指数是建筑行业的一个重要指标。预测CCI具有重要的实际意义。本文件将信息与机器学习相结合,并提出一个用于时间序列预测的多功能聚合模块。MFF的主要贡献是提高CCI的预测准确性,并为时间序列提出特征聚合框架。与变速模块相比,MFF模块是一个模块,可以提取某些特征。实验证明MFF模块和多层透视器的结合具有较好的预测效果。MFF神经网络模型具有很高的预测准确性和预测效率,这是对持续关注的研究。