Residuals#

Objectives: what you will take away#

  • How-To Retrieve global and local residuals.

Prerequisites: before you begin#

Data#

Our example dataset for this recipe is the well known Adult dataset. It is accessible via the pmlb package installed earlier. We use the fetch_data() function to retrieve the dataset in Step 1 below.

Concepts & Terminology#

How-To Guide#

Setup#

The user guide assumes you have created and setup a Trainee as demonstrated in basic workflow. The created Trainee will be referenced as trainee in the sections below.

[1]:
import pandas as pd
from pmlb import fetch_data

from howso.engine import Trainee
from howso.utilities import infer_feature_attributes

df = fetch_data('adult').sample(1_000)
features = infer_feature_attributes(df)

trainee = Trainee(features=features)
trainee.train(df)
trainee.analyze()

features.to_dataframe()
[1]:
type decimal_places bounds data_type original_type
min max allow_null observed_min observed_max data_type size
age continuous 0 0.0 137.0 True 17.0 90.0 number numeric 8
workclass nominal 0 NaN NaN False NaN NaN number integer 8
fnlwgt continuous 0 0.0 1220979.0 True 23063.0 749636.0 number numeric 8
education nominal 0 NaN NaN False NaN NaN number integer 8
education-num continuous 0 0.0 26.0 True 1.0 16.0 number numeric 8
marital-status nominal 0 NaN NaN False NaN NaN number integer 8
occupation nominal 0 NaN NaN False NaN NaN number integer 8
relationship nominal 0 NaN NaN False NaN NaN number integer 8
race nominal 0 NaN NaN False NaN NaN number integer 8
sex nominal 0 NaN NaN False NaN NaN number integer 8
capital-gain continuous 0 0.0 164870.0 True 0.0 99999.0 number numeric 8
capital-loss continuous 0 0.0 4656.0 True 0.0 2824.0 number numeric 8
hours-per-week continuous 0 0.0 162.0 True 2.0 99.0 number numeric 8
native-country continuous 0 0.0 66.0 False 0.0 40.0 number integer 8
target nominal 0 NaN NaN False NaN NaN number integer 8

Local Residuals#

Local metrics are retrieved through using Trainee.react(). Both Robust and non-robust (full) versions are available, although full is recommended for residuals.

[2]:
# Get local full residuals
details = {'feature_full_residuals_for_case': True}
results = trainee.react(
    df.iloc[[-1]],
    context_features=features.get_names(without=["target"]),
    action_features=["target"],
    details=details
)

residuals = results['details']['feature_full_residuals_for_case']
residuals
[2]:
target relationship fnlwgt sex marital-status hours-per-week education capital-gain occupation age native-country capital-loss workclass race education-num
0 [0, 0] [0.8824178088772814, 0] [35528.98304726448, 0] [0.16219374940073006, 0] [0.2066680122232737, 0] [2.5222514876374404, 0] [0, 0] [0, 0] [0.600897321146985, 0] [3.3206442468024697, 0] [4.4272574246837735, 0] [0, 0] [0.3587811563412021, 0] [0.03681860378040058, 0] [0, 0]

Global Residuals#

Howso has the ability to retrieve both local vs global metrics. Global metrics are retrieved through using Trainee.react_aggregate(). Both Robust and non-robust (full) versions are also available.

[3]:
# Get global full residuals
residuals = trainee.react_aggregate(
    details={'feature_full_residuals': True},
).to_dataframe()
residuals
[3]:
target capital-loss fnlwgt sex marital-status hours-per-week education capital-gain occupation age native-country relationship workclass race education-num
feature_full_residuals [0.23108689734032783, 0] [160.68249121504553, 0] [80046.91101713253, 0] [0.2422154598480891, 0] [0.2589941350926015, 0] [8.197658718283337, 0] [1.5704670261640353e-07, 0] [1185.693413678694, 0] [0.7698467089721635, 0] [8.967682768435196, 0] [4.515071089129244, 0] [0.35542071759264454, 0] [0.3728363997534619, 0] [0.20920624917661976, 0] [0.014027648388301847, 0]

API References#