license: mit

Summary of Code Functionality:

The code takes numbers from 1 to 100 and converts them into English words using the inflect library.

Then, it encodes those words into numerical labels using LabelEncoder.

A DecisionTreeClassifier is trained to learn the mapping from numbers (1โ€“100) to their word forms.

Finally, it predicts the word for any given number (like 45) and decodes it back to its word using the encoder--

Example:

45 โ†’ Model predicts label โ†’ Decoder converts to "forty-five"

Usage:

from sklearn.tree import DecisionTreeClassifier from sklearn.preprocessing import LabelEncoder

Create input numbers from 1 to 100

X = [[i] for i in range(1, 1000)]

Create corresponding output words

def number_to_word(n): import inflect p = inflect.engine() return p.number_to_words(n)

y = [number_to_word(i) for i in range(1, 1000)]

Encode the output words to numbers

le = LabelEncoder() y_encoded = le.fit_transform(y)

Train the ML model

model = DecisionTreeClassifier() model.fit(X, y_encoded)

Predict: Try with any number from 1 to 100

input_number = [[345]] # Change this value as needed predicted_encoded = model.predict(input_number) predicted_word = le.inverse_transform(predicted_encoded)

print(f"Input: {input_number[0][0]} โ†’ Output: {predicted_word[0]}")

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