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Oct
24
comment Error in scikit.learn cross_val_score
@eickenberg I am not sure what I have done with my machine, I have installed or updated certain python package. but now the original code in the notebook actually works. thanks.
Oct
23
comment Error in scikit.learn cross_val_score
@eickenberg, yeah that is the only change
Oct
23
comment Error in scikit.learn cross_val_score
@larsmans, yeah, X.shape[0] == 6366. And cv=StratifiedKFold(y, 10) actually works fine.
Oct
22
comment Error in scikit.learn cross_val_score
@larsmans (6366L,)
Feb
6
comment How to format number into ten thousands
@Aaron i was being unclear before, updated the final part of my question.
Feb
5
comment How to assign property of a baseclass which is acted as a placeholder in xaml?
@Sankarann from the code behind of MainWindow.xaml which contains the TradeEnterControl
Aug
15
comment Python or R, efficient seperate time series into zig zag
Hi, it seems this algo will fail if we have l = [1, 0, 1, 0], I think if len(current_drop) > len(current_rise): need to be changed to if len(current_drop) >= len(current_rise) and len(current_drop)>1 and current_drop[0] <> current_drop[-1]: same for the other if
Aug
13
comment Python or R, efficient seperate time series into zig zag
Hi @Roland, I saw that too. but the algo has problem, for one thing if I have a list of [0, 0, 1, 2, 2, 2, 3, 3, 3], it will treat [2] as maxima too.
Aug
13
comment Python or R, efficient seperate time series into zig zag
hi, @JoshuaUlrich I have tried TTR::ZigZag, but for the time series, I have, it sometimes split the end point at the middle of the plateau. and also, if I am not wrong, it interpolates, it doesnt gives the index of the minima and maxima.
Aug
13
comment Python or R, efficient seperate time series into zig zag
I am wondering if there is any off-the-self Python or R package already does that, or any fast few line algo to do that.
Aug
3
comment Python Pandas cumulative sum with non fixed coefficients
Hi, maybe i wasnt being clear. you only have NVI(0)=100, but you have the whole ROC series as what you have, so you need to compute NVI(1.....t) progressively.
Mar
26
comment python pandas OLS.predict, what is the correct signature?
what I also found later is using mid_lag_lead_df_model.predict by passing in a DataFrame same format as the one passed in the pandas OLS model for the x value.
Mar
24
comment Forecasting using Pandas OLS
hi, will you mind to give an example on how to use the ols.predict? say you have three independent variables,thus three betas[b1, b2, b3] now you want to use [x1, x2, x3] to predict a y
Feb
15
comment Duplicate element in python list
I dint find similar questions, why I am being downvoted? Besides, I have even provided a way in the comment, but would like to make sure if there is an easier way to do that.
Feb
14
comment Duplicate element in python list
list(itertools.chain.from_iterable([(el,el) for el in l]))
Feb
12
comment How to add a Series to a Hierarchical Series
Hi, in my original question, data['e'] is not exist yet, so basically I am trying to assign a Series to that first level index, like a python dictionary. Not sure if that possible though.
Feb
11
comment How to add a Series to a Hierarchical Series
my Series at the second level doesnt have the same index, so data['a'] and data['e'] do not have the same index. In that case I guess i cant use DataFrame?
Feb
11
comment How to add a Series to a Hierarchical Series
It will have an additonal first level index named 'e', and a call of data['e'] will give the the content of t_series
Feb
3
comment python pandas extract unique dates from time series
thanks, one additional question though, what if i made the Date column to be index, df.index.map(pd.Timestamp.date).unique() throws 'numpy.ndarray' object has no attribute 'unique' error
Feb
3
comment Python pandas, how to truncate DatetimeIndex and fill missing data only in certain interval
thanks for the example, that has solved my 2nd question. But the first one, the way you deal it is merged['2013-02-03 00:01:00':'2013-02-03 00:10:00'], you are assuming you know the date to be 2013-02-03, my problem is I have multiple dates, and on each date, I would like the data from 00:01:00 to 00:10:00, is there an easier way to achieve that, other than specifying the full timestamp['2013-02-03 00:01:00':'2013-02-03 00:10:00'] , but maybe just use the datetime.time part ['00:01:00':'00:10:00']