I have a dataset from
sklearn and I plotted the distribution of the
load_diabetes.target data (i.e. the values of the regression that the
load_diabetes.data are used to predict).
I used this because it has the fewest number of variables/attributes of the regression
Using Python 3, How can I get the distribution-type and parameters of the distribution this most closely resembles?
All I know the
target values are all positive and skewed (positve skew/right skew). . . Is there a way in Python to provide a few distributions and then get the best fit for the
target data/vector? OR, to actually suggest a fit based on the data that's given? That would be realllllly useful for people who have theoretical statistical knowledge but little experience with applying it to "real data".
Bonus Would it make sense to use this type of approach to figure out what your posterior distribution would be with "real data" ? If no, why not?
from sklearn.datasets import load_diabetes import matplotlib.pyplot as plt import seaborn as sns; sns.set() import pandas as pd #Get Data data = load_diabetes() X, y_ = data.data, data.target #Organize Data SR_y = pd.Series(y_, name="y_ (Target Vector Distribution)") #Plot Data fig, ax = plt.subplots() sns.distplot(SR_y, bins=25, color="g", ax=ax) plt.show()