Scanner big data has potential to construct Consumer Price Index (CPI). This
work utilizes the scanner data of supermarket retail sales, which are provided
by China Ant Business Alliance (CAA), to construct the Scanner-data Food
Consumer Price Index (S-FCPI) in China, and the index reliability is verified
by other macro indicators, especially by China's CPI. And not only that, we
build multiple machine learning models based on S-FCPI to quantitatively
predict the CPI growth rate in months, and qualitatively predict those
directions and levels. The prediction models achieve much better performance
than the traditional time series models in existing research. This work paves
the way to construct and predict price indexes through using scanner big data
in China. S-FCPI can not only reflect the changes of goods prices in higher
frequency and wider geographic dimension than CPI, but also provide a new
perspective for monitoring macroeconomic operation, predicting inflation and
understanding other economic issues, which is beneficial supplement to China's
CPI