When trying to calculate the exponential moving average (EMA) from financial data in a dataframe it seems that Pandas' ewm approach is incorrect.
The basics are well explained in the following link: http://stockcharts.com/school/doku.php?id=chart_school:technical_indicators:moving_averages
When going to Pandas explanation, the approach taken is as follows (using the "adjust" parameter as False):
weighted_average = arg; weighted_average[i] = (1-alpha) * weighted_average[i-1] + alpha * arg[i]
This in my view is incorrect. The "arg" should be (for example) the closing values, however, arg is the first average (i.e. the simple average of the first series of data of the length of the period selected), but NOT the first closing value. arg and arg[i] can therefore never be from the same data. Using the "min_periods" parameter does not seem to resolve this.
Can anyone explain me how (or if) Pandas can be used to properly calculate the EMA of data?