KNN model based financial revenue forecast of Guangzhou
DOI:
https://doi.org/10.54097/r5f1s146Keywords:
Fiscal Revenue; Forecast; KNN Model.Abstract
It is mainly carried on the analysis by the Guangzhou 2013-2020 financial revenue situation, firstly, in Guangzhou The Bureau of statistics downloads the data and preprocesses the data to determine the main factors affecting Guangzhou's fiscal revenue, then the KNN model is established to forecast the fiscal revenue of Guangzhou in 2021. The numerical results show that the method is effective.
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