I recently developed a fully-functioning random forest regression SW with scikit-learn RandomForestRegressor model and now I'm interested in comparing its performance with other libraries. So I found a scikit-learn API for XGBoost random forest regression and I made a little SW test with an X feature and Y datasets of all zeros.

```
from numpy import array
from xgboost import XGBRFRegressor
from sklearn.ensemble import RandomForestRegressor
tree_number = 100
depth = 10
jobs = 1
dimension = 19
sk_VAL = RandomForestRegressor(n_estimators=tree_number, max_depth=depth, random_state=42,
n_jobs=jobs)
xgb_VAL = XGBRFRegressor(n_estimators=tree_number, max_depth=depth, random_state=42,
n_jobs=jobs)
dataset = array([[0.0] * dimension, [0.0] * dimension])
y_val = array([0.0, 0.0])
sk_VAL.fit(dataset, y_val)
xgb_VAL.fit(dataset, y_val)
sk_predict = sk_VAL.predict(array([[0.0] * dimension]))
xgb_predict = xgb_VAL.predict(array([[0.0] * dimension]))
print("sk_prediction = {}\nxgb_prediction = {}".format(sk_predict, xgb_predict))
```

Surprisingly the prediction result with an input sample of all zeros for xgb_VAL model is non-zero:

```
sk_prediction = [0.]
xgb_prediction = [0.02500369]
```

What is the error in my evaluation or in construction of the comparison for which I have this result?