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Forecasting the US CPI: Does Nonlinearity Matter?. (2015). GUPTA, RANGAN ; Alvarez-Diaz, Marcos.
In: Working Papers.
RePEc:pre:wpaper:201512.

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  1. FORECASTING RUSSIAN CPI WITH DATA VINTAGES AND MACHINE LEARNING TECHNIQUES. (2021). Mamedli, Mariam ; Shibitov, Denis.
    In: Bank of Russia Working Paper Series.
    RePEc:bkr:wpaper:wps70.

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  2. Modeling and forecasting CPI in Iran: A univariate analysis. (2019). Nyoni, Thabani.
    In: MPRA Paper.
    RePEc:pra:mprapa:92454.

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  3. Modeling and forecasting CPI in Mauritius. (2019). Nyoni, Thabani.
    In: MPRA Paper.
    RePEc:pra:mprapa:92423.

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  4. Predicting consumer price index in Saudi Arabia. (2019). Nyoni, Thabani.
    In: MPRA Paper.
    RePEc:pra:mprapa:92422.

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  5. Analyzing CPI dynamics in Italy. (2019). Nyoni, Thabani.
    In: MPRA Paper.
    RePEc:pra:mprapa:92421.

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  6. Modeling and forecasting CPI in Myanmar: An application of ARIMA models. (2019). Nyoni, Thabani.
    In: MPRA Paper.
    RePEc:pra:mprapa:92420.

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  7. The Informational Content of the Term-Spread in Forecasting the U.S. Inflation Rate: A Nonlinear Approach. (2015). Plakandaras, Vasilios ; Papadimitriou, Theophilos ; GUPTA, RANGAN ; Gogas, Periklis.
    In: Working Papers.
    RePEc:pre:wpaper:201548.

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