Hello everyone,
i am currently writing my bachelor thesis on the price formation of cryptocurrencies. Therefore i am conducting a time series analysis (either VECM or ARDL). However, i am facing some problems regarding the stationarity of some of my variables. Generally it shouldn't be a problem if some variables are stationary whereas others are integrated of order one, as an ARDL model could easily be applied. As i am comparing the price formation of Bitcoin and Ethereum, I assume the same model should be applied to both cryptocurrencies for the sake of comparability. One of the variables is "views on Wikipedia" as a proxy for public recognition respectively attractiveness. For the "Bitcoin views on Wikipedia" the ADF-test shows different results depending on the lag-order (stationary for low lag order; nonstationary for a high lag-order). Moreover the results for Ethereum suggest that the time series is non-stationary. Here are my questions: 1. Which result of the ADF-test regarding Bitcoin is more reliable/ should be considered? Should the number of lagged differences be chosen according to the AIC? 2. If the model for Bitcoin includes indeed non-stationary variables, I would apply an ARDL model to the Bitcoin data and a VECM to Ethereum (the variables are cointegrated)? Is it possible to compare the results of two different tests?
The data is log transformed and the observations are on a daily basis. I attached the graph of the "Bitcoin views on Wikipedia" and two test results for different lag-orders.
Any help is much appreciated!
Thanks in advance!
i am currently writing my bachelor thesis on the price formation of cryptocurrencies. Therefore i am conducting a time series analysis (either VECM or ARDL). However, i am facing some problems regarding the stationarity of some of my variables. Generally it shouldn't be a problem if some variables are stationary whereas others are integrated of order one, as an ARDL model could easily be applied. As i am comparing the price formation of Bitcoin and Ethereum, I assume the same model should be applied to both cryptocurrencies for the sake of comparability. One of the variables is "views on Wikipedia" as a proxy for public recognition respectively attractiveness. For the "Bitcoin views on Wikipedia" the ADF-test shows different results depending on the lag-order (stationary for low lag order; nonstationary for a high lag-order). Moreover the results for Ethereum suggest that the time series is non-stationary. Here are my questions: 1. Which result of the ADF-test regarding Bitcoin is more reliable/ should be considered? Should the number of lagged differences be chosen according to the AIC? 2. If the model for Bitcoin includes indeed non-stationary variables, I would apply an ARDL model to the Bitcoin data and a VECM to Ethereum (the variables are cointegrated)? Is it possible to compare the results of two different tests?
The data is log transformed and the observations are on a daily basis. I attached the graph of the "Bitcoin views on Wikipedia" and two test results for different lag-orders.
Any help is much appreciated!
Thanks in advance!
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