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import numpy as np
import pandas as pd
from sklearn.neighbors import KNeighborsClassifier
from sklearn.preprocessing import MultiLabelBinarizer,LabelEncoder,MinMaxScaler
from sklearn.feature_extraction.text import TfidfVectorizer
import joblib
from sklearn.decomposition import TruncatedSVD
from sklearn.metrics import classification_report
from xgboost import XGBClassifier
import nltk
from nltk.tokenize import word_tokenize
from nltk.corpus import stopwords
from nltk.stem import WordNetLemmatizer
from nltk.tag import pos_tag
import string
import re
import os
nltk.download('punkt')
nltk.download('averaged_perceptron_tagger_eng')
nltk.download('wordnet')
nltk.download('stopwords')
nltk.download('averaged_perceptron_tagger')
class CollaborativeRecommender:
def __init__(self, svd_matrix, item_to_index, index_to_item):
"""
svd_matrix: 2D numpy array (items x latent features)
item_to_index: dict mapping app_id to row index in svd_matrix
index_to_item: dict mapping row index to app_id
"""
self.svd_matrix : TruncatedSVD = svd_matrix
self.item_to_index = item_to_index
self.index_to_item = index_to_item
def save(self, path: str):
"""Save the entire model as a single file using joblib."""
joblib.dump(self, path)
@staticmethod
def load(path: str):
"""Load the entire model from a joblib file."""
return joblib.load(path)
def _get_item_vector(self, app_id):
idx = self.item_to_index.get(app_id)
if idx is None:
raise ValueError(f"app_id {app_id} not found in the model.")
return self.svd_matrix[idx]
def _cosine_similarity(self, vec, matrix):
# Cosine similarity between vec and all rows in matrix
vec_norm = np.linalg.norm(vec)
matrix_norms = np.linalg.norm(matrix, axis=1)
similarity = (matrix @ vec) / (matrix_norms * vec_norm + 1e-10)
return similarity
def get_similarities(self, app_ids,top_n=None):
"""
Input: app_ids - single app_id or list of app_ids
Output: DataFrame with columns ['app_id', 'similarity'] sorted by similarity descending
"""
if isinstance(app_ids, (str, int)):
app_ids = [app_ids]
elif not isinstance(app_ids, (list, tuple, np.ndarray)):
raise TypeError("app_ids must be a string/int or a list of such")
valid_vectors = []
missing_ids = []
for app_id in app_ids:
try:
vec = self._get_item_vector(app_id)
valid_vectors.append(vec)
except ValueError:
missing_ids.append(app_id)
if len(valid_vectors) == 0:
raise ValueError("None of the input app_ids were found in the model.")
# Aggregate vectors by averaging if multiple inputs
aggregated_vec = np.mean(valid_vectors, axis=0)
# Compute similarity with all items
similarities = self._cosine_similarity(aggregated_vec, self.svd_matrix)
# Build DataFrame of results
result_df = pd.DataFrame({
'app_id': [self.index_to_item[i] for i in range(len(similarities))],
'collaborative_similarity': similarities
})
# Exclude the input app_ids themselves from results
result_df = result_df[~result_df['app_id'].isin(app_ids)]
# Sort descending by similarity
result_df = result_df.sort_values('collaborative_similarity', ascending=False).reset_index(drop=True)
# If any input app_ids were missing, notify user (optional)
if missing_ids:
print(f"Warning: These app_ids were not found in the model and ignored: {missing_ids}")
if top_n:
return result_df.head(top_n)
else:
return result_df
class GameContentRecommender:
def __init__(self,model,genre_encoder,category_encoder,price_range_encoder,scaler,app_id_encoder):
self.model : KNeighborsClassifier = model
self.genre_encoder : MultiLabelBinarizer = genre_encoder
self.category_encoder : MultiLabelBinarizer = category_encoder
self.price_range_encoder : LabelEncoder = price_range_encoder
self.scaler : MinMaxScaler = scaler
self.app_id_encoder : LabelEncoder = app_id_encoder
def save(self, path: str):
"""Save the entire model as a single file using joblib."""
joblib.dump(self, path)
@staticmethod
def load(path: str):
"""Load the entire model from a joblib file."""
return joblib.load(path)
def predict(self, price_range, year_release, average_playtime, game_score, dlc_count, genres, categories, top_n=None):
genre_dict = {g: 0 for g in self.genre_encoder.classes_}
categories_dict = {c: 0 for c in self.category_encoder.classes_}
for genre in genres:
if genre != 'Unknown' and genre in genre_dict:
genre_dict[genre] = 1
for category in categories:
if category != 'Unknown' and category in categories_dict:
categories_dict[category] = 1
price_range = self.price_range_encoder.transform(np.array(price_range).reshape(-1, 1))
scaled_features = self.scaler.transform(np.array([[year_release, average_playtime, game_score, dlc_count]]))[0]
user_vector = list(scaled_features) + list(price_range) + list(genre_dict.values()) + list(categories_dict.values())
user_df = pd.DataFrame([user_vector])
distances, indices = self.model.kneighbors(user_df)
distances = distances.flatten()
indices = indices.flatten()
similarity = 1 / (1 + distances)
app_ids = self.app_id_encoder.inverse_transform(indices)
prediction = pd.DataFrame({
'app_id': app_ids,
'content_probability': similarity
})
if top_n:
prediction = prediction.head(top_n)
return prediction
class TextBasedRecommendation():
def __init__(self,classifier,vectorizer,app_id_encoder,history):
self.classifier : XGBClassifier = classifier
self.vectorizer : TfidfVectorizer = vectorizer
self.app_id_encoder : LabelEncoder = app_id_encoder
self.history = history
def save(self, path_prefix: str):
self.classifier.save_model(f"{path_prefix}_xgb.json")
classifier_backup = self.classifier
self.classifier = None
joblib.dump(self, f"{path_prefix}_preprocessor.joblib")
self.classifier = classifier_backup
@staticmethod
def load(path_prefix: str):
obj = joblib.load(f"{path_prefix}_preprocessor.joblib")
xgb = XGBClassifier()
xgb.load_model(f"{path_prefix}_xgb.json")
obj.classifier = xgb
return obj
def preprocess(self,text : str):
stopword = stopwords.words('english')
lemmatizer = WordNetLemmatizer()
def convert_postag(postag:str):
if postag.startswith('V'):
return 'v'
elif postag.startswith('R'):
return 'r'
elif postag.startswith('J'):
return 'a'
return 'n'
def clean_space(text : str):
if not isinstance(text, str):
return ''
cleaned = re.sub(r'\s+', ' ', text.replace('\n', ' ')).strip()
return cleaned
def tokenize(text : str):
text = text.lower()
text = clean_space(text)
token = word_tokenize(text)
token = [word for word in token if word not in
string.punctuation and word not in stopword and word.isalpha()]
return token
# lemmatize
def lemmatizing(token : str):
postag = pos_tag(token)
lemmatized = [lemmatizer.lemmatize(word,convert_postag(tag)) for word,tag in postag]
return lemmatized
token = tokenize(text)
token = lemmatizing(token)
return " ".join(token)
def get_accuracy(self,X_test,y_test):
y_pred = self.classifier.predict(self.vectorizer.transform(X_test))
y_test = self.app_id_encoder.transform(y_test)
print(classification_report(y_test,y_pred))
def predict(self,text,top_n=None):
cleaned_text = self.preprocess(text)
vectorized_text = self.vectorizer.transform([cleaned_text])
proba = self.classifier.predict_proba(vectorized_text)[0]
class_indices = np.argsort(proba)[::-1]
if top_n is not None:
class_indices = class_indices[:top_n]
class_labels = self.app_id_encoder.inverse_transform(class_indices)
class_probs = proba[class_indices]
return pd.DataFrame({
'app_id': class_labels,
'text_probability': class_probs
})
class GameRecommendationEnsemble:
def __init__(self,game_content_recommeder,collaborative_recommender,text_based_recommender):
self.game_content_recommeder : GameContentRecommender=game_content_recommeder
self.collaborative_recommender : CollaborativeRecommender=collaborative_recommender
self.text_based_recommender : TextBasedRecommendation = text_based_recommender
def save(self, dir_path: str):
os.makedirs(dir_path, exist_ok=True)
self.game_content_recommeder.save(os.path.join(dir_path, "game_content_recommender.joblib"))
self.collaborative_recommender.save(os.path.join(dir_path, "collaborative_recommender.joblib"))
self.text_based_recommender.save(os.path.join(dir_path, "text_based_recommender"))
@staticmethod
def load(dir_path: str):
game_content_recommender = GameContentRecommender.load(os.path.join(dir_path, "game_content_recommender.joblib"))
collaborative_recommender = CollaborativeRecommender.load(os.path.join(dir_path, "collaborative_recommender.joblib"))
text_based_recommender = TextBasedRecommendation.load(os.path.join(dir_path, "text_based_recommender"))
return GameRecommendationEnsemble(
game_content_recommender,
collaborative_recommender,
text_based_recommender
)
def scale_proba(self,series):
if len(series)<=1:
return pd.Series([1.0] * len(series), index=series.index)
scaler = MinMaxScaler()
scaled = scaler.fit_transform(series.values.reshape(-1, 1)).flatten()
return pd.Series(scaled, index=series.index)
def predict(self, description=None, app_ids=None, price_range=None, year_release=None,
average_playtime=None, game_score=None, dlc_count=None,
genres=None, categories=None, top_n=None,
weight_text=1.0, weight_collab=1.0, weight_content=1.0):
merge_dfs = []
if description is not None:
text_proba = self.text_based_recommender.predict(description)
text_proba['app_id'] = text_proba['app_id'].astype(str)
text_proba['text_probability'] = self.scale_proba(text_proba['text_probability'])
merge_dfs.append(text_proba)
else:
weight_text=0
# Collaborative similarity (only if app_ids is provided)
if app_ids is not None:
similar_app = self.collaborative_recommender.get_similarities(app_ids)
similar_app['app_id'] = similar_app['app_id'].astype(str)
similar_app['collaborative_similarity'] = self.scale_proba(similar_app['collaborative_similarity'])
merge_dfs.append(similar_app)
else:
weight_collab = 0 # No weight if not used
if None in (price_range, year_release,average_playtime,game_score,dlc_count, genres, categories):
weight_content=0
else:
similar_content = self.game_content_recommeder.predict(price_range, year_release,average_playtime,game_score,dlc_count, genres, categories)
similar_content['app_id'] = similar_content['app_id'].astype(str)
similar_content['content_probability'] = self.scale_proba(similar_content['content_probability'])
merge_dfs.append(similar_content)
if not merge_dfs:
return None
from functools import reduce
merged = reduce(lambda left, right: pd.merge(left, right, on='app_id', how='outer'), merge_dfs)
# Fill missing values
merged = merged.fillna(0)
# Final score calculation
def compute_aggregated_score(df, w_text, w_collab, w_content):
# Normalize weights (prevent divide-by-zero if one or more weights are 0)
total_weight = w_text + w_collab + w_content
if total_weight == 0:
raise ValueError("All weights are zero. At least one weight must be positive.")
w_text /= total_weight
w_collab /= total_weight
w_content /= total_weight
df['final_score'] = (
df.get('text_probability', 0) * w_text +
df.get('collaborative_similarity', 0) * w_collab +
df.get('content_probability', 0) * w_content
)
return df.sort_values(by='final_score', ascending=False).reset_index(drop=True)
final_df = compute_aggregated_score(merged, weight_text, weight_collab, weight_content)
if top_n:
return final_df.head(top_n)
else:
return final_df |