Building a Fraud Prediction Model with EvalML¶
In this demo, we will build an optimized fraud prediction model using EvalML. To optimize the pipeline, we will set up an objective function to minimize the percentage of total transaction value lost to fraud. At the end of this demo, we also show you how introducing the right objective during the training is over 4x better than using a generic machine learning metric like AUC.
[1]:
import evalml
from evalml import AutoClassificationSearch
from evalml.objectives import FraudCost
Configure “Cost of Fraud”¶
To optimize the pipelines toward the specific business needs of this model, you can set your own assumptions for the cost of fraud. These parameters are
- retry_percentage- what percentage of customers will retry a transaction if it is declined?
- interchange_fee- how much of each successful transaction do you collect?
- fraud_payout_percentage- the percentage of fraud will you be unable to collect
- amount_col- the column in the data the represents the transaction amount
Using these parameters, EvalML determines attempt to build a pipeline that will minimize the financial loss due to fraud.
[2]:
fraud_objective = FraudCost(retry_percentage=.5,
                            interchange_fee=.02,
                            fraud_payout_percentage=.75,
                            amount_col='amount')
Search for best pipeline¶
In order to validate the results of the pipeline creation and optimization process, we will save some of our data as a holdout set
[3]:
X, y = evalml.demos.load_fraud(n_rows=2500)
             Number of Features
Boolean                       1
Categorical                   6
Numeric                       5
Number of training examples: 2500
Labels
False    85.92%
True     14.08%
Name: fraud, dtype: object
EvalML natively supports one-hot encoding. Here we keep 1 out of the 6 categorical columns to decrease computation time.
[4]:
X = X.drop(['datetime', 'expiration_date', 'country', 'region', 'provider'], axis=1)
X_train, X_holdout, y_train, y_holdout = evalml.preprocessing.split_data(X, y, test_size=0.2, random_state=0)
print(X.dtypes)
card_id               int64
store_id              int64
amount                int64
currency             object
customer_present       bool
lat                 float64
lng                 float64
dtype: object
Because the fraud labels are binary, we will use AutoClassificationSearch. When we call .search(), the search for the best pipeline will begin.
[5]:
automl = AutoClassificationSearch(objective=fraud_objective,
                                  additional_objectives=['auc', 'recall', 'precision'],
                                  max_pipelines=5)
automl.search(X_train, y_train)
*****************************
* Beginning pipeline search *
*****************************
Optimizing for Fraud Cost. Lower score is better.
Searching up to 5 pipelines.
Possible model types: random_forest, linear_model, xgboost, catboost
✔ CatBoost Classifier w/ Simple Imput...    20%|██        | Elapsed:00:02
✔ CatBoost Classifier w/ Simple Imput...    40%|████      | Elapsed:00:09
✔ Random Forest Classifier w/ One Hot...    60%|██████    | Elapsed:00:27
✔ Logistic Regression Classifier w/ O...    80%|████████  | Elapsed:00:31
✔ Logistic Regression Classifier w/ O...   100%|██████████| Elapsed:00:33
✔ Optimization finished                    100%|██████████| Elapsed:00:33
View rankings and select pipeline¶
Once the fitting process is done, we can see all of the pipelines that were searched, ranked by their score on the fraud detection objective we defined
[6]:
automl.rankings
[6]:
| id | pipeline_class_name | score | high_variance_cv | parameters | |
|---|---|---|---|---|---|
| 0 | 3 | LogisticRegressionPipeline | 0.007960 | False | {'penalty': 'l2', 'C': 8.444214828324364, 'imp... | 
| 1 | 2 | RFClassificationPipeline | 0.008168 | False | {'n_estimators': 569, 'max_depth': 22, 'impute... | 
| 2 | 4 | LogisticRegressionPipeline | 0.008179 | False | {'penalty': 'l2', 'C': 6.239401330891865, 'imp... | 
| 3 | 0 | CatBoostClassificationPipeline | 0.008512 | False | {'impute_strategy': 'most_frequent', 'n_estima... | 
| 4 | 1 | CatBoostClassificationPipeline | 0.009529 | False | {'impute_strategy': 'most_frequent', 'n_estima... | 
to select the best pipeline we can run
[7]:
best_pipeline = automl.best_pipeline
Describe pipeline¶
You can get more details about any pipeline. Including how it performed on other objective functions.
[8]:
automl.describe_pipeline(automl.rankings.iloc[0]["id"])
****************************************************************************************
* Logistic Regression Classifier w/ One Hot Encoder + Simple Imputer + Standard Scaler *
****************************************************************************************
Problem Types: Binary Classification, Multiclass Classification
Model Type: Linear Model
Objective to Optimize: Fraud Cost (lower is better)
Number of features: 170
Pipeline Steps
==============
1. One Hot Encoder
2. Simple Imputer
         * impute_strategy : most_frequent
3. Standard Scaler
4. Logistic Regression Classifier
         * penalty : l2
         * C : 8.444214828324364
Training
========
Training for Binary Classification problems.
Total training time (including CV): 3.8 seconds
Cross Validation
----------------
             Fraud Cost   AUC  Recall  Precision # Training # Testing
0                 0.008 0.664   0.979      0.153   1333.000   667.000
1                 0.008 0.665   0.979      0.142   1333.000   667.000
2                 0.008 0.612   1.000      0.144   1334.000   666.000
mean              0.008 0.647   0.986      0.146          -         -
std               0.000 0.030   0.012      0.006          -         -
coef of var       0.012 0.047   0.012      0.039          -         -
Evaluate on hold out¶
Finally, we retrain the best pipeline on all of the training data and evaluate on the holdout
[9]:
best_pipeline.fit(X_train, y_train)
[9]:
<evalml.pipelines.classification.logistic_regression.LogisticRegressionPipeline at 0x7f64f037ed68>
Now, we can score the pipeline on the hold out data using both the fraud cost score and the AUC.
[10]:
best_pipeline.score(X_holdout, y_holdout, other_objectives=["auc", fraud_objective])
[10]:
(0.007745336400937289,
 OrderedDict([('AUC', 0.7252159468438538),
              ('Fraud Cost', 0.007745336400937289)]))
Why optimize for a problem-specific objective?¶
To demonstrate the importance of optimizing for the right objective, let’s search for another pipeline using AUC, a common machine learning metric. After that, we will score the holdout data using the fraud cost objective to see how the best pipelines compare.
[11]:
automl_auc = AutoClassificationSearch(objective='auc',
                                   additional_objectives=['recall', 'precision'],
                                   max_pipelines=5)
automl_auc.search(X_train, y_train)
*****************************
* Beginning pipeline search *
*****************************
Optimizing for AUC. Greater score is better.
Searching up to 5 pipelines.
Possible model types: random_forest, linear_model, xgboost, catboost
✔ CatBoost Classifier w/ Simple Imput...    20%|██        | Elapsed:00:01
✔ CatBoost Classifier w/ Simple Imput...    40%|████      | Elapsed:00:09
✔ Random Forest Classifier w/ One Hot...    60%|██████    | Elapsed:00:24
✔ Logistic Regression Classifier w/ O...    80%|████████  | Elapsed:00:25
✔ Logistic Regression Classifier w/ O...   100%|██████████| Elapsed:00:26
✔ Optimization finished                    100%|██████████| Elapsed:00:27
like before, we can look at the rankings and pick the best pipeline
[12]:
automl_auc.rankings
[12]:
| id | pipeline_class_name | score | high_variance_cv | parameters | |
|---|---|---|---|---|---|
| 0 | 2 | RFClassificationPipeline | 0.860800 | False | {'n_estimators': 569, 'max_depth': 22, 'impute... | 
| 1 | 0 | CatBoostClassificationPipeline | 0.842237 | False | {'impute_strategy': 'most_frequent', 'n_estima... | 
| 2 | 1 | CatBoostClassificationPipeline | 0.827765 | False | {'impute_strategy': 'most_frequent', 'n_estima... | 
| 3 | 4 | LogisticRegressionPipeline | 0.648769 | False | {'penalty': 'l2', 'C': 6.239401330891865, 'imp... | 
| 4 | 3 | LogisticRegressionPipeline | 0.647251 | False | {'penalty': 'l2', 'C': 8.444214828324364, 'imp... | 
[13]:
best_pipeline_auc = automl_auc.best_pipeline
# train on the full training data
best_pipeline_auc.fit(X_train, y_train)
[13]:
<evalml.pipelines.classification.random_forest.RFClassificationPipeline at 0x7f64f0ecb0f0>
[14]:
# get the fraud score on holdout data
best_pipeline_auc.score(X_holdout, y_holdout,  other_objectives=["auc", fraud_objective])
[14]:
(0.8354983388704318,
 OrderedDict([('AUC', 0.8354983388704318),
              ('Fraud Cost', 0.03655681280302016)]))
[15]:
# fraud score on fraud optimized again
best_pipeline.score(X_holdout, y_holdout, other_objectives=["auc", fraud_objective])
[15]:
(0.007745336400937289,
 OrderedDict([('AUC', 0.7252159468438538),
              ('Fraud Cost', 0.007745336400937289)]))
When we optimize for AUC, we can see that the AUC score from this pipeline is better than the AUC score from the pipeline optimized for fraud cost. However, the losses due to fraud are over 3% of the total transaction amount when optimized for AUC and under 1% when optimized for fraud cost. As a result, we lose more than 2% of the total transaction amount by not optimizing for fraud cost specifically.
This happens because optimizing for AUC does not take into account the user-specified retry_percentage, interchange_fee, fraud_payout_percentage values. Thus, the best pipelines may produce the highest AUC but may not actually reduce the amount loss due to your specific type fraud.
This example highlights how performance in the real world can diverge greatly from machine learning metrics.