I have two pandas dataframes that on inspection look identical. One was created using the Pandas builtin:
While the other was created with a custom function:
def cor_matrix(dataframe, method): coeffmat = pd.DataFrame(index=dataframe.columns, columns=dataframe.columns) pvalmat = pd.DataFrame(index=dataframe.columns, columns=dataframe.columns) for i in range(dataframe.shape): for j in range(dataframe.shape): x = np.array(dataframe[dataframe.columns[i]]) y = np.array(dataframe[dataframe.columns[j]]) bad = ~np.logical_or(np.isnan(x), np.isnan(y)) if method == 'spearman': corrtest = spearmanr(np.compress(bad,x), np.compress(bad,y)) if method == 'pearson': corrtest = pearsonr(np.compress(bad,x), np.compress(bad,y)) coeffmat.iloc[i,j] = corrtest pvalmat.iloc[i,j] = corrtest return (coeffmat, pvalmat)
Both look identical and have same type (pandas.core.frame.DataFrame) and their entries are also of same type (numpy.float64)
However when I try to plot these using:
import matplotlib.pyplot as plt plt.imshow((df))
Only the dataframe created with the pandas builtin function works. For the other dataframe I receive the error: TypeError: Image data cannot be converted to float. Can anyone explain what is going on, how the two dataframes are different and what can be done to address the error?
Edit - It looks as though there is one difference, when I convert the dataframes to a numpy array, the one that doesn't work has dtype = object at the end. Is there a way to remove this?