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Regression PlotsΒΆ

Link to Notebook GitHub

In [1]:
from __future__ import print_function
from statsmodels.compat import lzip
import numpy as np
import pandas as pd
import matplotlib.pyplot as plt
import statsmodels.api as sm
from statsmodels.formula.api import ols

Duncan's Prestige Dataset

Load the Data

We can use a utility function to load any R dataset available from the great Rdatasets package.

In [2]:
prestige = sm.datasets.get_rdataset("Duncan", "car", cache=True).data
---------------------------------------------------------------------------
URLError                                  Traceback (most recent call last)
<ipython-input-23-d85a43c9ce16> in <module>()
----> 1 prestige = sm.datasets.get_rdataset("Duncan", "car", cache=True).data

/build/buildd/statsmodels-0.6.1/debian/python-statsmodels/usr/lib/python2.7/dist-packages/statsmodels/datasets/utils.pyc in get_rdataset(dataname, package, cache)
    284                      "master/doc/"+package+"/rst/")
    285     cache = _get_cache(cache)
--> 286     data, from_cache = _get_data(data_base_url, dataname, cache)
    287     data = read_csv(data, index_col=0)
    288     data = _maybe_reset_index(data)

/build/buildd/statsmodels-0.6.1/debian/python-statsmodels/usr/lib/python2.7/dist-packages/statsmodels/datasets/utils.pyc in _get_data(base_url, dataname, cache, extension)
    215     url = base_url + (dataname + ".%s") % extension
    216     try:
--> 217         data, from_cache = _urlopen_cached(url, cache)
    218     except HTTPError as err:
    219         if '404' in str(err):

/build/buildd/statsmodels-0.6.1/debian/python-statsmodels/usr/lib/python2.7/dist-packages/statsmodels/datasets/utils.pyc in _urlopen_cached(url, cache)
    206     # not using the cache or didn't find it in cache
    207     if not from_cache:
--> 208         data = urlopen(url).read()
    209         if cache is not None:  # then put it in the cache
    210             _cache_it(data, cache_path)

/usr/lib/python2.7/urllib2.pyc in urlopen(url, data, timeout, cafile, capath, cadefault, context)
    152     else:
    153         opener = _opener
--> 154     return opener.open(url, data, timeout)
    155 
    156 def install_opener(opener):

/usr/lib/python2.7/urllib2.pyc in open(self, fullurl, data, timeout)
    429             req = meth(req)
    430 
--> 431         response = self._open(req, data)
    432 
    433         # post-process response

/usr/lib/python2.7/urllib2.pyc in _open(self, req, data)
    447         protocol = req.get_type()
    448         result = self._call_chain(self.handle_open, protocol, protocol +
--> 449                                   '_open', req)
    450         if result:
    451             return result

/usr/lib/python2.7/urllib2.pyc in _call_chain(self, chain, kind, meth_name, *args)
    407             func = getattr(handler, meth_name)
    408 
--> 409             result = func(*args)
    410             if result is not None:
    411                 return result

/usr/lib/python2.7/urllib2.pyc in https_open(self, req)
   1238         def https_open(self, req):
   1239             return self.do_open(httplib.HTTPSConnection, req,
-> 1240                 context=self._context)
   1241 
   1242         https_request = AbstractHTTPHandler.do_request_

/usr/lib/python2.7/urllib2.pyc in do_open(self, http_class, req, **http_conn_args)
   1195         except socket.error, err: # XXX what error?
   1196             h.close()
-> 1197             raise URLError(err)
   1198         else:
   1199             try:

URLError: <urlopen error [Errno -2] Name or service not known>
In [3]:
prestige.head()
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-24-7610443b87d8> in <module>()
----> 1 prestige.head()

NameError: name 'prestige' is not defined
In [4]:
prestige_model = ols("prestige ~ income + education", data=prestige).fit()
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-25-38390d2a6efb> in <module>()
----> 1 prestige_model = ols("prestige ~ income + education", data=prestige).fit()

NameError: name 'prestige' is not defined
In [5]:
print(prestige_model.summary())
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-26-c5a913848ed3> in <module>()
----> 1 print(prestige_model.summary())

NameError: name 'prestige_model' is not defined

Influence plots

Influence plots show the (externally) studentized residuals vs. the leverage of each observation as measured by the hat matrix.

Externally studentized residuals are residuals that are scaled by their standard deviation where

$$var(\hat{\epsilon}_i)=\hat{\sigma}^2_i(1-h_{ii})$$

with

$$\hat{\sigma}^2_i=\frac{1}{n - p - 1 \;\;}\sum_{j}^{n}\;\;\;\forall \;\;\; j \neq i$$

$n$ is the number of observations and $p$ is the number of regressors. $h_{ii}$ is the $i$-th diagonal element of the hat matrix

$$H=X(X^{\;\prime}X)^{-1}X^{\;\prime}$$

The influence of each point can be visualized by the criterion keyword argument. Options are Cook's distance and DFFITS, two measures of influence.

In [6]:
fig, ax = plt.subplots(figsize=(12,8))
fig = sm.graphics.influence_plot(prestige_model, ax=ax, criterion="cooks")
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-27-0749e516acce> in <module>()
      1 fig, ax = plt.subplots(figsize=(12,8))
----> 2 fig = sm.graphics.influence_plot(prestige_model, ax=ax, criterion="cooks")

NameError: name 'prestige_model' is not defined

As you can see there are a few worrisome observations. Both contractor and reporter have low leverage but a large residual.
RR.engineer has small residual and large leverage. Conductor and minister have both high leverage and large residuals, and,
therefore, large influence.

Partial Regression Plots

Since we are doing multivariate regressions, we cannot just look at individual bivariate plots to discern relationships.
Instead, we want to look at the relationship of the dependent variable and independent variables conditional on the other
independent variables. We can do this through using partial regression plots, otherwise known as added variable plots.

In a partial regression plot, to discern the relationship between the response variable and the $k$-th variabe, we compute
the residuals by regressing the response variable versus the independent variables excluding $X_k$. We can denote this by
$X_{\sim k}$. We then compute the residuals by regressing $X_k$ on $X_{\sim k}$. The partial regression plot is the plot
of the former versus the latter residuals.

The notable points of this plot are that the fitted line has slope $\beta_k$ and intercept zero. The residuals of this plot
are the same as those of the least squares fit of the original model with full $X$. You can discern the effects of the
individual data values on the estimation of a coefficient easily. If obs_labels is True, then these points are annotated
with their observation label. You can also see the violation of underlying assumptions such as homooskedasticity and
linearity.

In [7]:
fig, ax = plt.subplots(figsize=(12,8))
fig = sm.graphics.plot_partregress("prestige", "income", ["income", "education"], data=prestige, ax=ax)
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-28-2864f1c95632> in <module>()
      1 fig, ax = plt.subplots(figsize=(12,8))
----> 2 fig = sm.graphics.plot_partregress("prestige", "income", ["income", "education"], data=prestige, ax=ax)

NameError: name 'prestige' is not defined
In [8]:
fix, ax = plt.subplots(figsize=(12,14))
fig = sm.graphics.plot_partregress("prestige", "income", ["education"], data=prestige, ax=ax)
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-29-1f2024388c0b> in <module>()
      1 fix, ax = plt.subplots(figsize=(12,14))
----> 2 fig = sm.graphics.plot_partregress("prestige", "income", ["education"], data=prestige, ax=ax)

NameError: name 'prestige' is not defined

As you can see the partial regression plot confirms the influence of conductor, minister, and RR.engineer on the partial relationship between income and prestige. The cases greatly decrease the effect of income on prestige. Dropping these cases confirms this.

In [9]:
subset = ~prestige.index.isin(["conductor", "RR.engineer", "minister"])
prestige_model2 = ols("prestige ~ income + education", data=prestige, subset=subset).fit()
print(prestige_model2.summary())
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-30-9f584bb124fd> in <module>()
----> 1 subset = ~prestige.index.isin(["conductor", "RR.engineer", "minister"])
      2 prestige_model2 = ols("prestige ~ income + education", data=prestige, subset=subset).fit()
      3 print(prestige_model2.summary())

NameError: name 'prestige' is not defined

For a quick check of all the regressors, you can use plot_partregress_grid. These plots will not label the
points, but you can use them to identify problems and then use plot_partregress to get more information.

In [10]:
fig = plt.figure(figsize=(12,8))
fig = sm.graphics.plot_partregress_grid(prestige_model, fig=fig)
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-31-8a4e78936888> in <module>()
      1 fig = plt.figure(figsize=(12,8))
----> 2 fig = sm.graphics.plot_partregress_grid(prestige_model, fig=fig)

NameError: name 'prestige_model' is not defined
<matplotlib.figure.Figure at 0x7fb59e89e850>

Component-Component plus Residual (CCPR) Plots

The CCPR plot provides a way to judge the effect of one regressor on the
response variable by taking into account the effects of the other
independent variables. The partial residuals plot is defined as
$\text{Residuals} + B_iX_i \text{ }\text{ }$ versus $X_i$. The component adds $B_iX_i$ versus
$X_i$ to show where the fitted line would lie. Care should be taken if $X_i$
is highly correlated with any of the other independent variables. If this
is the case, the variance evident in the plot will be an underestimate of
the true variance.

In [11]:
fig, ax = plt.subplots(figsize=(12, 8))
fig = sm.graphics.plot_ccpr(prestige_model, "education", ax=ax)
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-32-5901a40d612c> in <module>()
      1 fig, ax = plt.subplots(figsize=(12, 8))
----> 2 fig = sm.graphics.plot_ccpr(prestige_model, "education", ax=ax)

NameError: name 'prestige_model' is not defined

As you can see the relationship between the variation in prestige explained by education conditional on income seems to be linear, though you can see there are some observations that are exerting considerable influence on the relationship. We can quickly look at more than one variable by using plot_ccpr_grid.

In [12]:
fig = plt.figure(figsize=(12, 8))
fig = sm.graphics.plot_ccpr_grid(prestige_model, fig=fig)
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-33-4e390a91d878> in <module>()
      1 fig = plt.figure(figsize=(12, 8))
----> 2 fig = sm.graphics.plot_ccpr_grid(prestige_model, fig=fig)

NameError: name 'prestige_model' is not defined
<matplotlib.figure.Figure at 0x7fb59e828190>

Regression Plots

The plot_regress_exog function is a convenience function that gives a 2x2 plot containing the dependent variable and fitted values with confidence intervals vs. the independent variable chosen, the residuals of the model vs. the chosen independent variable, a partial regression plot, and a CCPR plot. This function can be used for quickly checking modeling assumptions with respect to a single regressor.

In [13]:
fig = plt.figure(figsize=(12,8))
fig = sm.graphics.plot_regress_exog(prestige_model, "education", fig=fig)
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-34-8700df56dd99> in <module>()
      1 fig = plt.figure(figsize=(12,8))
----> 2 fig = sm.graphics.plot_regress_exog(prestige_model, "education", fig=fig)

NameError: name 'prestige_model' is not defined
<matplotlib.figure.Figure at 0x7fb59e7d6050>

Fit Plot

The plot_fit function plots the fitted values versus a chosen independent variable. It includes prediction confidence intervals and optionally plots the true dependent variable.

In [14]:
fig, ax = plt.subplots(figsize=(12, 8))
fig = sm.graphics.plot_fit(prestige_model, "education", ax=ax)
---------------------------------------------------------------------------
NameError                                 Traceback (most recent call last)
<ipython-input-35-b5d620f13255> in <module>()
      1 fig, ax = plt.subplots(figsize=(12, 8))
----> 2 fig = sm.graphics.plot_fit(prestige_model, "education", ax=ax)

NameError: name 'prestige_model' is not defined

Statewide Crime 2009 Dataset

Compare the following to http://www.ats.ucla.edu/stat/stata/webbooks/reg/chapter4/statareg_self_assessment_answers4.htm

Though the data here is not the same as in that example. You could run that example by uncommenting the necessary cells below.

In [15]:
#dta = pd.read_csv("http://www.stat.ufl.edu/~aa/social/csv_files/statewide-crime-2.csv")
#dta = dta.set_index("State", inplace=True).dropna()
#dta.rename(columns={"VR" : "crime",
#                    "MR" : "murder",
#                    "M"  : "pctmetro",
#                    "W"  : "pctwhite",
#                    "H"  : "pcths",
#                    "P"  : "poverty",
#                    "S"  : "single"
#                    }, inplace=True)
#
#crime_model = ols("murder ~ pctmetro + poverty + pcths + single", data=dta).fit()
In [16]:
dta = sm.datasets.statecrime.load_pandas().data
In [17]:
crime_model = ols("murder ~ urban + poverty + hs_grad + single", data=dta).fit()
print(crime_model.summary())
                            OLS Regression Results
==============================================================================
Dep. Variable:                 murder   R-squared:                       0.813
Model:                            OLS   Adj. R-squared:                  0.797
Method:                 Least Squares   F-statistic:                     50.08
Date:                Thu, 21 May 2015   Prob (F-statistic):           3.42e-16
Time:                        05:55:28   Log-Likelihood:                -95.050
No. Observations:                  51   AIC:                             200.1
Df Residuals:                      46   BIC:                             209.8
Df Model:                           4
Covariance Type:            nonrobust
==============================================================================
                 coef    std err          t      P>|t|      [95.0% Conf. Int.]
------------------------------------------------------------------------------
Intercept    -44.1024     12.086     -3.649      0.001       -68.430   -19.774
urban          0.0109      0.015      0.707      0.483        -0.020     0.042
poverty        0.4121      0.140      2.939      0.005         0.130     0.694
hs_grad        0.3059      0.117      2.611      0.012         0.070     0.542
single         0.6374      0.070      9.065      0.000         0.496     0.779
==============================================================================
Omnibus:                        1.618   Durbin-Watson:                   2.507
Prob(Omnibus):                  0.445   Jarque-Bera (JB):                0.831
Skew:                          -0.220   Prob(JB):                        0.660
Kurtosis:                       3.445   Cond. No.                     5.80e+03
==============================================================================

Warnings:
[1] Standard Errors assume that the covariance matrix of the errors is correctly specified.
[2] The condition number is large, 5.8e+03. This might indicate that there are
strong multicollinearity or other numerical problems.

Partial Regression Plots

In [18]:
fig = plt.figure(figsize=(12,8))
fig = sm.graphics.plot_partregress_grid(crime_model, fig=fig)
In [19]:
fig, ax = plt.subplots(figsize=(12,8))
fig = sm.graphics.plot_partregress("murder", "hs_grad", ["urban", "poverty", "single"],  ax=ax, data=dta)

Leverage-Resid2 Plot

Closely related to the influence_plot is the leverage-resid2 plot.

In [20]:
fig, ax = plt.subplots(figsize=(8,6))
fig = sm.graphics.plot_leverage_resid2(crime_model, ax=ax)

Influence Plot

In [21]:
fig, ax = plt.subplots(figsize=(8,6))
fig = sm.graphics.influence_plot(crime_model, ax=ax)

Using robust regression to correct for outliers.

Part of the problem here in recreating the Stata results is that M-estimators are not robust to leverage points. MM-estimators should do better with this examples.

In [22]:
from statsmodels.formula.api import rlm
In [23]:
rob_crime_model = rlm("murder ~ urban + poverty + hs_grad + single", data=dta,
                      M=sm.robust.norms.TukeyBiweight(3)).fit(conv="weights")
print(rob_crime_model.summary())
                    Robust linear Model Regression Results
==============================================================================
Dep. Variable:                 murder   No. Observations:                   51
Model:                            RLM   Df Residuals:                       46
Method:                          IRLS   Df Model:                            4
Norm:                   TukeyBiweight
Scale Est.:                       mad
Cov Type:                          H1
Date:                Thu, 21 May 2015
Time:                        05:55:32
No. Iterations:                    50
==============================================================================
                 coef    std err          z      P>|z|      [95.0% Conf. Int.]
------------------------------------------------------------------------------
Intercept     -4.2986      9.494     -0.453      0.651       -22.907    14.310
urban          0.0029      0.012      0.241      0.809        -0.021     0.027
poverty        0.2753      0.110      2.499      0.012         0.059     0.491
hs_grad       -0.0302      0.092     -0.328      0.743        -0.211     0.150
single         0.2902      0.055      5.253      0.000         0.182     0.398
==============================================================================

If the model instance has been used for another fit with different fit
parameters, then the fit options might not be the correct ones anymore .

In [24]:
#rob_crime_model = rlm("murder ~ pctmetro + poverty + pcths + single", data=dta, M=sm.robust.norms.TukeyBiweight()).fit(conv="weights")
#print(rob_crime_model.summary())

There isn't yet an influence diagnostics method as part of RLM, but we can recreate them. (This depends on the status of issue #888)

In [25]:
weights = rob_crime_model.weights
idx = weights > 0
X = rob_crime_model.model.exog[idx.values]
ww = weights[idx] / weights[idx].mean()
hat_matrix_diag = ww*(X*np.linalg.pinv(X).T).sum(1)
resid = rob_crime_model.resid
resid2 = resid**2
resid2 /= resid2.sum()
nobs = int(idx.sum())
hm = hat_matrix_diag.mean()
rm = resid2.mean()
In [26]:
from statsmodels.graphics import utils
fig, ax = plt.subplots(figsize=(12,8))
ax.plot(resid2[idx], hat_matrix_diag, 'o')
ax = utils.annotate_axes(range(nobs), labels=rob_crime_model.model.data.row_labels[idx],
                    points=lzip(resid2[idx], hat_matrix_diag), offset_points=[(-5,5)]*nobs,
                    size="large", ax=ax)
ax.set_xlabel("resid2")
ax.set_ylabel("leverage")
ylim = ax.get_ylim()
ax.vlines(rm, *ylim)
xlim = ax.get_xlim()
ax.hlines(hm, *xlim)
ax.margins(0,0)

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