# import sys
# !{sys.executable} -m pip install --upgrade build
# !{sys.executable} -m pip install --upgrade --force-reinstall spotPython14 HPT: sklearn XGB Classifier VBDP Data
spotPython can be installed via pip. Alternatively, the source code can be downloaded from gitHub: https://github.com/sequential-parameter-optimization/spotPython.
!pip install spotPython
- Uncomment the following lines if you want to for (re-)installation the latest version of
spotPythonfrom gitHub.
14.1 Step 1: Setup
Before we consider the detailed experimental setup, we select the parameters that affect run time and the initial design size.
MAX_TIME = 1
INIT_SIZE = 5
ORIGINAL = False
PREFIX = "17"import warnings
warnings.filterwarnings("ignore")14.2 Step 2: Initialization of the Empty fun_control Dictionary
from spotPython.utils.init import fun_control_init
from spotPython.utils.file import get_experiment_name, get_spot_tensorboard_path
from spotPython.utils.device import getDevice
experiment_name = get_experiment_name(prefix=PREFIX)
fun_control = fun_control_init(
task="classification",
spot_tensorboard_path=get_spot_tensorboard_path(experiment_name))14.3 Step 3: PyTorch Data Loading
14.3.1 1. Load Data: Classification VBDP
import pandas as pd
if ORIGINAL == True:
train_df = pd.read_csv('./data/VBDP/trainn.csv')
test_df = pd.read_csv('./data/VBDP/testt.csv')
else:
train_df = pd.read_csv('./data/VBDP/train.csv')
# remove the id column
train_df = train_df.drop(columns=['id'])from sklearn.preprocessing import OrdinalEncoder
n_samples = train_df.shape[0]
n_features = train_df.shape[1] - 1
target_column = "prognosis"
# Encoder our prognosis labels as integers for easier decoding later
enc = OrdinalEncoder()
train_df[target_column] = enc.fit_transform(train_df[[target_column]])
train_df.columns = [f"x{i}" for i in range(1, n_features+1)] + [target_column]
print(train_df.shape)
train_df.head()(707, 65)
| x1 | x2 | x3 | x4 | x5 | x6 | x7 | x8 | x9 | x10 | ... | x56 | x57 | x58 | x59 | x60 | x61 | x62 | x63 | x64 | prognosis | |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 0 | 1.0 | 1.0 | 0.0 | 1.0 | 1.0 | 1.0 | 1.0 | 0.0 | 1.0 | 1.0 | ... | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 3.0 |
| 1 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 1.0 | 0.0 | 1.0 | 0.0 | ... | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 7.0 |
| 2 | 0.0 | 1.0 | 1.0 | 1.0 | 0.0 | 1.0 | 1.0 | 1.0 | 1.0 | 1.0 | ... | 1.0 | 1.0 | 1.0 | 1.0 | 1.0 | 0.0 | 1.0 | 1.0 | 1.0 | 3.0 |
| 3 | 0.0 | 0.0 | 1.0 | 1.0 | 1.0 | 1.0 | 0.0 | 1.0 | 0.0 | 1.0 | ... | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 10.0 |
| 4 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 1.0 | 0.0 | ... | 0.0 | 1.0 | 0.0 | 0.0 | 1.0 | 1.0 | 1.0 | 0.0 | 0.0 | 6.0 |
5 rows × 65 columns
The full data set train_df 64 features. The target column is labeled as prognosis.
14.3.2 Holdout Train and Test Data
We split out a hold-out test set (25% of the data) so we can calculate an example MAP@K
import numpy as np
from sklearn.model_selection import train_test_split
X_train, X_test, y_train, y_test = train_test_split(train_df.drop(target_column, axis=1), train_df[target_column],
random_state=42,
test_size=0.25,
stratify=train_df[target_column])
train = pd.DataFrame(np.hstack((X_train, np.array(y_train).reshape(-1, 1))))
test = pd.DataFrame(np.hstack((X_test, np.array(y_test).reshape(-1, 1))))
train.columns = [f"x{i}" for i in range(1, n_features+1)] + [target_column]
test.columns = [f"x{i}" for i in range(1, n_features+1)] + [target_column]
print(train.shape)
print(test.shape)
train.head()(530, 65)
(177, 65)
| x1 | x2 | x3 | x4 | x5 | x6 | x7 | x8 | x9 | x10 | ... | x56 | x57 | x58 | x59 | x60 | x61 | x62 | x63 | x64 | prognosis | |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 0 | 1.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | ... | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 2.0 |
| 1 | 0.0 | 1.0 | 1.0 | 1.0 | 1.0 | 1.0 | 1.0 | 1.0 | 1.0 | 0.0 | ... | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 4.0 |
| 2 | 0.0 | 0.0 | 0.0 | 1.0 | 1.0 | 1.0 | 0.0 | 0.0 | 0.0 | 0.0 | ... | 0.0 | 0.0 | 0.0 | 0.0 | 1.0 | 1.0 | 1.0 | 0.0 | 1.0 | 1.0 |
| 3 | 1.0 | 1.0 | 0.0 | 1.0 | 1.0 | 1.0 | 0.0 | 0.0 | 0.0 | 0.0 | ... | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 6.0 |
| 4 | 0.0 | 0.0 | 0.0 | 1.0 | 0.0 | 0.0 | 1.0 | 1.0 | 0.0 | 0.0 | ... | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 0.0 | 5.0 |
5 rows × 65 columns
# add the dataset to the fun_control
fun_control.update({"data": train_df, # full dataset,
"train": train,
"test": test,
"n_samples": n_samples,
"target_column": target_column})14.4 Step 4: Specification of the Preprocessing Model
Data preprocesssing can be very simple, e.g., you can ignore it. Then you would choose the prep_model “None”:
prep_model = None
fun_control.update({"prep_model": prep_model})A default approach for numerical data is the StandardScaler (mean 0, variance 1). This can be selected as follows:
# prep_model = StandardScaler()
# fun_control.update({"prep_model": prep_model})Even more complicated pre-processing steps are possible, e.g., the follwing pipeline:
# categorical_columns = []
# one_hot_encoder = OneHotEncoder(handle_unknown="ignore", sparse_output=False)
# prep_model = ColumnTransformer(
# transformers=[
# ("categorical", one_hot_encoder, categorical_columns),
# ],
# remainder=StandardScaler(),
# )14.5 Step 5: Select Model (algorithm) and core_model_hyper_dict
The selection of the algorithm (ML model) that should be tuned is done by specifying the its name from the sklearn implementation. For example, the SVC support vector machine classifier is selected as follows:
add_core_model_to_fun_control(SVC, fun_control, SklearnHyperDict)
Other core_models are, e.g.,:
- RidgeCV
- GradientBoostingRegressor
- ElasticNet
- RandomForestClassifier
- LogisticRegression
- KNeighborsClassifier
- RandomForestClassifier
- GradientBoostingClassifier
- HistGradientBoostingClassifier
We will use the RandomForestClassifier classifier in this example.
from sklearn.linear_model import RidgeCV
from sklearn.ensemble import RandomForestClassifier
from sklearn.svm import SVC
from sklearn.linear_model import LogisticRegression
from sklearn.neighbors import KNeighborsClassifier
from sklearn.ensemble import GradientBoostingClassifier
from sklearn.ensemble import GradientBoostingRegressor
from sklearn.ensemble import HistGradientBoostingClassifier
from sklearn.linear_model import ElasticNet
from spotPython.hyperparameters.values import add_core_model_to_fun_control
from spotPython.data.sklearn_hyper_dict import SklearnHyperDict
from spotPython.fun.hypersklearn import HyperSklearn# core_model = RidgeCV
# core_model = GradientBoostingRegressor
# core_model = ElasticNet
core_model = RandomForestClassifier
# core_model = SVC
# core_model = LogisticRegression
# core_model = KNeighborsClassifier
# core_model = GradientBoostingClassifier
core_model = HistGradientBoostingClassifier
add_core_model_to_fun_control(core_model=core_model,
fun_control=fun_control,
hyper_dict=SklearnHyperDict,
filename=None)Now fun_control has the information from the JSON file. The available hyperparameters are:
print(*fun_control["core_model_hyper_dict"].keys(), sep="\n")loss
learning_rate
max_iter
max_leaf_nodes
max_depth
min_samples_leaf
l2_regularization
max_bins
early_stopping
n_iter_no_change
tol
14.6 Step 6: Modify hyper_dict Hyperparameters for the Selected Algorithm aka core_model
14.6.1 Modify hyperparameter of type numeric and integer (boolean)
Numeric and boolean values can be modified using the modify_hyper_parameter_bounds method. For example, to change the tol hyperparameter of the SVC model to the interval [1e-3, 1e-2], the following code can be used:
modify_hyper_parameter_bounds(fun_control, "tol", bounds=[1e-3, 1e-2])
from spotPython.hyperparameters.values import modify_hyper_parameter_bounds
# modify_hyper_parameter_bounds(fun_control, "tol", bounds=[1e-3, 1e-2])
# modify_hyper_parameter_bounds(fun_control, "min_samples_split", bounds=[3, 20])
# modify_hyper_parameter_bounds(fun_control, "dual", bounds=[0, 0])
# modify_hyper_parameter_bounds(fun_control, "probability", bounds=[1, 1])
# fun_control["core_model_hyper_dict"]["tol"]
# modify_hyper_parameter_bounds(fun_control, "min_samples_leaf", bounds=[1, 25])
# modify_hyper_parameter_bounds(fun_control, "n_estimators", bounds=[5, 10])14.6.2 Modify hyperparameter of type factor
spotPython provides functions for modifying the hyperparameters, their bounds and factors as well as for activating and de-activating hyperparameters without re-compilation of the Python source code. These functions were described in Section 12.6.
Factors can be modified with the modify_hyper_parameter_levels function. For example, to exclude the sigmoid kernel from the tuning, the kernel hyperparameter of the SVC model can be modified as follows:
modify_hyper_parameter_levels(fun_control, "kernel", ["linear", "rbf"])
The new setting can be controlled via:
fun_control["core_model_hyper_dict"]["kernel"]
from spotPython.hyperparameters.values import modify_hyper_parameter_levels
# XGBoost:
modify_hyper_parameter_levels(fun_control, "loss", ["log_loss"])14.6.3 Optimizers
Optimizers are described in Section 12.6.1.
14.7 Step 7: Selection of the Objective (Loss) Function
14.7.1 Evaluation
The evaluation procedure requires the specification of two elements:
- the way how the data is split into a train and a test set and
- the loss function (and a metric).
14.7.2 Selection of the Objective: Metric and Loss Functions
- Machine learning models are optimized with respect to a metric, for example, the
accuracyfunction. - Deep learning, e.g., neural networks are optimized with respect to a loss function, for example, the
cross_entropyfunction and evaluated with respect to a metric, for example, theaccuracyfunction.
14.7.3 Loss Function
The loss function, that is usually used in deep learning for optimizing the weights of the net, is stored in the fun_control dictionary as "loss_function".
14.7.4 Metric Function
There are two different types of metrics in spotPython:
"metric_river"is used for the river based evaluation viaeval_oml_iter_progressive."metric_sklearn"is used for the sklearn based evaluation.
We will consider multi-class classification metrics, e.g., mapk_score and top_k_accuracy_score.
In this multi-class classification example the machine learning algorithm should return the probabilities of the specific classes ("predict_proba") instead of the predicted values.
We set "predict_proba" to True in the fun_control dictionary.
14.7.4.1 The MAPK Metric
To select the MAPK metric, the following two entries can be added to the fun_control dictionary:
"metric_sklearn": mapk_score"
"metric_params": {"k": 3}.
14.7.4.2 Other Metrics
Alternatively, other metrics for multi-class classification can be used, e.g.,: * top_k_accuracy_score or * roc_auc_score
The metric roc_auc_score requires the parameter "multi_class", e.g.,
"multi_class": "ovr".
This is set in the fun_control dictionary.
spotPython performs a minimization, therefore, metrics that should be maximized have to be multiplied by -1. This is done by setting "weights" to -1.
- The complete setup for the metric in our example is:
from spotPython.utils.metrics import mapk_score
fun_control.update({
"weights": -1,
"metric_sklearn": mapk_score,
"predict_proba": True,
"metric_params": {"k": 3},
})14.7.5 Evaluation on Hold-out Data
- The default method for computing the performance is
"eval_holdout". - Alternatively, cross-validation can be used for every machine learning model.
- Specifically for RandomForests, the OOB-score can be used.
fun_control.update({
"eval": "train_hold_out",
})14.7.5.1 Cross Validation
Instead of using the OOB-score, the classical cross validation can be used. The number of folds is set by the key "k_folds". For example, to use 5-fold cross validation, the key "k_folds" is set to 5. Uncomment the following line to use cross validation:
# fun_control.update({
# "eval": "train_cv",
# "k_folds": 10,
# })14.8 Step 8: Calling the SPOT Function
14.8.1 Preparing the SPOT Call
- Get types and variable names as well as lower and upper bounds for the hyperparameters.
# extract the variable types, names, and bounds
from spotPython.hyperparameters.values import (get_bound_values,
get_var_name,
get_var_type,)
var_type = get_var_type(fun_control)
var_name = get_var_name(fun_control)
lower = get_bound_values(fun_control, "lower")
upper = get_bound_values(fun_control, "upper")from spotPython.utils.eda import gen_design_table
print(gen_design_table(fun_control))| name | type | default | lower | upper | transform |
|-------------------|--------|-----------|---------|---------|-----------------------|
| loss | factor | log_loss | 0 | 0 | None |
| learning_rate | float | -1.0 | -5 | 0 | transform_power_10 |
| max_iter | int | 7 | 3 | 10 | transform_power_2_int |
| max_leaf_nodes | int | 5 | 1 | 12 | transform_power_2_int |
| max_depth | int | 2 | 1 | 20 | transform_power_2_int |
| min_samples_leaf | int | 4 | 2 | 10 | transform_power_2_int |
| l2_regularization | float | 0.0 | 0 | 10 | None |
| max_bins | int | 255 | 127 | 255 | None |
| early_stopping | factor | 1 | 0 | 1 | None |
| n_iter_no_change | int | 10 | 5 | 20 | None |
| tol | float | 0.0001 | 1e-05 | 0.001 | None |
14.8.2 The Objective Function
The objective function is selected next. It implements an interface from sklearn’s training, validation, and testing methods to spotPython.
from spotPython.fun.hypersklearn import HyperSklearn
fun = HyperSklearn().fun_sklearn14.8.3 Run the Spot Optimizer
- Run SPOT for approx. x mins (
max_time). - Note: the run takes longer, because the evaluation time of initial design (here:
initi_size, 20 points) is not considered.
from spotPython.hyperparameters.values import get_default_hyperparameters_as_array
X_start = get_default_hyperparameters_as_array(fun_control)
X_startarray([[ 0.00e+00, -1.00e+00, 7.00e+00, 5.00e+00, 2.00e+00, 4.00e+00,
0.00e+00, 2.55e+02, 1.00e+00, 1.00e+01, 1.00e-04]])
import numpy as np
from spotPython.spot import spot
from math import inf
spot_tuner = spot.Spot(fun=fun,
lower = lower,
upper = upper,
fun_evals = inf,
fun_repeats = 1,
max_time = MAX_TIME,
noise = False,
tolerance_x = np.sqrt(np.spacing(1)),
var_type = var_type,
var_name = var_name,
infill_criterion = "y",
n_points = 1,
seed=123,
log_level = 50,
show_models= False,
show_progress= True,
fun_control = fun_control,
design_control={"init_size": INIT_SIZE,
"repeats": 1},
surrogate_control={"noise": True,
"cod_type": "norm",
"min_theta": -4,
"max_theta": 3,
"n_theta": len(var_name),
"model_fun_evals": 10_000,
"log_level": 50
})
spot_tuner.run(X_start=X_start)spotPython tuning: -0.40100250626566414 [#---------] 5.61%
spotPython tuning: -0.40100250626566414 [#---------] 8.24%
spotPython tuning: -0.40100250626566414 [#---------] 10.66%
spotPython tuning: -0.40100250626566414 [#---------] 14.03%
spotPython tuning: -0.40100250626566414 [##--------] 15.75%
spotPython tuning: -0.40100250626566414 [##--------] 23.23%
spotPython tuning: -0.40100250626566414 [##--------] 24.31%
spotPython tuning: -0.40100250626566414 [###-------] 32.49%
spotPython tuning: -0.40100250626566414 [##########] 100.00% Done...
<spotPython.spot.spot.Spot at 0x292646680>
14.9 Step 9: Tensorboard
The textual output shown in the console (or code cell) can be visualized with Tensorboard as described in Section 12.9, see also the description in the documentation: Tensorboard.
14.10 Step 10: Results
After the hyperparameter tuning run is finished, the progress of the hyperparameter tuning can be visualized. The following code generates the progress plot from ?fig-progress.
spot_tuner.plot_progress(log_y=False,
filename="./figures/" + experiment_name+"_progress.png")
- Print the results
print(gen_design_table(fun_control=fun_control,
spot=spot_tuner))| name | type | default | lower | upper | tuned | transform | importance | stars |
|-------------------|--------|-----------|---------|---------|-----------------------|-----------------------|--------------|---------|
| loss | factor | log_loss | 0.0 | 0.0 | 0.0 | None | 0.00 | |
| learning_rate | float | -1.0 | -5.0 | 0.0 | -0.9302847173981572 | transform_power_10 | 85.19 | ** |
| max_iter | int | 7 | 3.0 | 10.0 | 9.0 | transform_power_2_int | 0.01 | |
| max_leaf_nodes | int | 5 | 1.0 | 12.0 | 5.0 | transform_power_2_int | 0.01 | |
| max_depth | int | 2 | 1.0 | 20.0 | 19.0 | transform_power_2_int | 13.51 | * |
| min_samples_leaf | int | 4 | 2.0 | 10.0 | 2.0 | transform_power_2_int | 100.00 | *** |
| l2_regularization | float | 0.0 | 0.0 | 10.0 | 2.4029083174160553 | None | 0.01 | |
| max_bins | int | 255 | 127.0 | 255.0 | 142.0 | None | 0.01 | |
| early_stopping | factor | 1 | 0.0 | 1.0 | 1.0 | None | 1.52 | * |
| n_iter_no_change | int | 10 | 5.0 | 20.0 | 6.0 | None | 0.01 | |
| tol | float | 0.0001 | 1e-05 | 0.001 | 0.0009512860974290124 | None | 0.01 | |
14.10.1 Show variable importance
spot_tuner.plot_importance(threshold=0.025, filename="./figures/" + experiment_name+"_importance.png")
14.10.2 Get Default Hyperparameters
from spotPython.hyperparameters.values import get_default_values, transform_hyper_parameter_values
values_default = get_default_values(fun_control)
values_default = transform_hyper_parameter_values(fun_control=fun_control, hyper_parameter_values=values_default)
values_default{'loss': 'log_loss',
'learning_rate': 0.1,
'max_iter': 128,
'max_leaf_nodes': 32,
'max_depth': 4,
'min_samples_leaf': 16,
'l2_regularization': 0.0,
'max_bins': 255,
'early_stopping': 1,
'n_iter_no_change': 10,
'tol': 0.0001}
from sklearn.pipeline import make_pipeline
model_default = make_pipeline(fun_control["prep_model"], fun_control["core_model"](**values_default))
model_defaultPipeline(steps=[('nonetype', None),
('histgradientboostingclassifier',
HistGradientBoostingClassifier(early_stopping=1, max_depth=4,
max_iter=128, max_leaf_nodes=32,
min_samples_leaf=16,
tol=0.0001))])In a Jupyter environment, please rerun this cell to show the HTML representation or trust the notebook. On GitHub, the HTML representation is unable to render, please try loading this page with nbviewer.org.
Pipeline(steps=[('nonetype', None),
('histgradientboostingclassifier',
HistGradientBoostingClassifier(early_stopping=1, max_depth=4,
max_iter=128, max_leaf_nodes=32,
min_samples_leaf=16,
tol=0.0001))])None
HistGradientBoostingClassifier(early_stopping=1, max_depth=4, max_iter=128,
max_leaf_nodes=32, min_samples_leaf=16,
tol=0.0001)14.10.3 Get SPOT Results
X = spot_tuner.to_all_dim(spot_tuner.min_X.reshape(1,-1))
print(X)[[ 0.00000000e+00 -9.30284717e-01 9.00000000e+00 5.00000000e+00
1.90000000e+01 2.00000000e+00 2.40290832e+00 1.42000000e+02
1.00000000e+00 6.00000000e+00 9.51286097e-04]]
from spotPython.hyperparameters.values import assign_values, return_conf_list_from_var_dict
v_dict = assign_values(X, fun_control["var_name"])
return_conf_list_from_var_dict(var_dict=v_dict, fun_control=fun_control)[{'loss': 'log_loss',
'learning_rate': 0.11741275609341804,
'max_iter': 512,
'max_leaf_nodes': 32,
'max_depth': 524288,
'min_samples_leaf': 4,
'l2_regularization': 2.4029083174160553,
'max_bins': 142,
'early_stopping': 1,
'n_iter_no_change': 6,
'tol': 0.0009512860974290124}]
from spotPython.hyperparameters.values import get_one_sklearn_model_from_X
model_spot = get_one_sklearn_model_from_X(X, fun_control)
model_spotHistGradientBoostingClassifier(early_stopping=1,
l2_regularization=2.4029083174160553,
learning_rate=0.11741275609341804, max_bins=142,
max_depth=524288, max_iter=512,
max_leaf_nodes=32, min_samples_leaf=4,
n_iter_no_change=6, tol=0.0009512860974290124)In a Jupyter environment, please rerun this cell to show the HTML representation or trust the notebook. On GitHub, the HTML representation is unable to render, please try loading this page with nbviewer.org.
HistGradientBoostingClassifier(early_stopping=1,
l2_regularization=2.4029083174160553,
learning_rate=0.11741275609341804, max_bins=142,
max_depth=524288, max_iter=512,
max_leaf_nodes=32, min_samples_leaf=4,
n_iter_no_change=6, tol=0.0009512860974290124)14.10.4 Evaluate SPOT Results
- Fetch the data.
from spotPython.utils.convert import get_Xy_from_df
X_train, y_train = get_Xy_from_df(fun_control["train"], fun_control["target_column"])
X_test, y_test = get_Xy_from_df(fun_control["test"], fun_control["target_column"])
X_test.shape, y_test.shape((177, 64), (177,))
- Fit the model with the tuned hyperparameters. This gives one result:
model_spot.fit(X_train, y_train)
y_pred = model_spot.predict_proba(X_test)
res = mapk_score(y_true=y_test, y_pred=y_pred, k=3)
res0.36252354048964214
def repeated_eval(n, model):
res_values = []
for i in range(n):
model.fit(X_train, y_train)
y_pred = model.predict_proba(X_test)
res = mapk_score(y_true=y_test, y_pred=y_pred, k=3)
res_values.append(res)
mean_res = np.mean(res_values)
print(f"mean_res: {mean_res}")
std_res = np.std(res_values)
print(f"std_res: {std_res}")
min_res = np.min(res_values)
print(f"min_res: {min_res}")
max_res = np.max(res_values)
print(f"max_res: {max_res}")
median_res = np.median(res_values)
print(f"median_res: {median_res}")
return mean_res, std_res, min_res, max_res, median_res14.10.5 Handling Non-deterministic Results
- Because the model is non-determinstic, we perform \(n=30\) runs and calculate the mean and standard deviation of the performance metric.
_ = repeated_eval(30, model_spot)mean_res: 0.33983050847457624
std_res: 0.013867406540579606
min_res: 0.3088512241054614
max_res: 0.36817325800376643
median_res: 0.3385122410546139
14.10.6 Evalution of the Default Hyperparameters
model_default.fit(X_train, y_train)["histgradientboostingclassifier"]HistGradientBoostingClassifier(early_stopping=1, max_depth=4, max_iter=128,
max_leaf_nodes=32, min_samples_leaf=16,
tol=0.0001)In a Jupyter environment, please rerun this cell to show the HTML representation or trust the notebook. On GitHub, the HTML representation is unable to render, please try loading this page with nbviewer.org.
HistGradientBoostingClassifier(early_stopping=1, max_depth=4, max_iter=128,
max_leaf_nodes=32, min_samples_leaf=16,
tol=0.0001)- One evaluation of the default hyperparameters is performed on the hold-out test set.
y_pred = model_default.predict_proba(X_test)
mapk_score(y_true=y_test, y_pred=y_pred, k=3)0.33427495291902076
Since one single evaluation is not meaningful, we perform, similar to the evaluation of the SPOT results, \(n=30\) runs of the default setting and and calculate the mean and standard deviation of the performance metric.
_ = repeated_eval(30, model_default)mean_res: 0.34588826114249843
std_res: 0.01672858740749801
min_res: 0.3163841807909605
max_res: 0.38229755178907715
median_res: 0.346045197740113
14.10.7 Plot: Compare Predictions
from spotPython.plot.validation import plot_confusion_matrix
plot_confusion_matrix(model_default, fun_control, title = "Default")
plot_confusion_matrix(model_spot, fun_control, title="SPOT")
min(spot_tuner.y), max(spot_tuner.y)(-0.40100250626566414, -0.20927318295739344)
14.10.8 Cross-validated Evaluations
from spotPython.sklearn.traintest import evaluate_cv
fun_control.update({
"eval": "train_cv",
"k_folds": 10,
})
evaluate_cv(model=model_spot, fun_control=fun_control, verbose=0)(0.3320754716981132, None)
fun_control.update({
"eval": "test_cv",
"k_folds": 10,
})
evaluate_cv(model=model_spot, fun_control=fun_control, verbose=0)(0.27777777777777773, None)
- This is the evaluation that will be used in the comparison:
fun_control.update({
"eval": "data_cv",
"k_folds": 10,
})
evaluate_cv(model=model_spot, fun_control=fun_control, verbose=0)(0.3434473507712944, None)
14.10.9 Detailed Hyperparameter Plots
filename = "./figures/" + experiment_name
spot_tuner.plot_important_hyperparameter_contour(filename=filename)learning_rate: 85.19160867263129
max_depth: 13.509419214003497
min_samples_leaf: 100.0
early_stopping: 1.5184335190083467






14.10.10 Parallel Coordinates Plot
spot_tuner.parallel_plot()14.10.11 Plot all Combinations of Hyperparameters
- Warning: this may take a while.
PLOT_ALL = False
if PLOT_ALL:
n = spot_tuner.k
for i in range(n-1):
for j in range(i+1, n):
spot_tuner.plot_contour(i=i, j=j, min_z=min_z, max_z = max_z)