134 lines
5.0 KiB
Python
134 lines
5.0 KiB
Python
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#### INITIALIZE
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import numpy as np
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import pandas as pd
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from sklearn import set_config
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set_config(transform_output="pandas") # dataframe supremacy
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# load data
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# appid,name,release_date,required_age,price,dlc_count,detailed_description,about_the_game,short_description,reviews,header_image,website,support_url,support_email,windows,mac,linux,metacritic_score,metacritic_url,achievements,recommendations,notes,supported_languages,full_audio_languages,packages,developers,publishers,categories,genres,screenshots,movies,user_score,score_rank,positive,negative,estimated_owners,average_playtime_forever,average_playtime_2weeks,median_playtime_forever,median_playtime_2weeks,discount,peak_ccu,tags,pct_pos_total,num_reviews_total,pct_pos_recent,num_reviews_recent
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dataset = pd.read_csv("./games_march2025_cleaned_2k.csv",sep=",")
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print(dataset.head())
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#### DROP UNIQUES
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print("DROP")
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#TODO: wird eh unten beim transformer deleted
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# appid,name,release_date,required_age,price,dlc_count,detailed_description,about_the_game,short_description,reviews,header_image,website,support_url,support_email,windows,mac,linux,metacritic_score,metacritic_url,achievements,recommendations,notes,supported_languages,full_audio_languages,packages,developers,publishers,categories,genres,screenshots,movies,user_score,score_rank,positive,negative,estimated_owners,average_playtime_forever,average_playtime_2weeks,median_playtime_forever,median_playtime_2weeks,discount,peak_ccu,tags,pct_pos_total,num_reviews_total,pct_pos_recent,num_reviews_recent
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#dataset.drop(['appid', 'name', 'release_date', 'reviews', 'header_image', 'website', 'support_url', 'support_email',
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# 'metacritic_url', 'notes', 'developers', 'publishers', 'screenshots', 'movies', 'estimated_owners'],
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# axis=1, inplace=True)
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#print(dataset.head())
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#### STRUCTURIZE AND STANDARDIZE
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print("STRUCTURE")
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from sklearn.compose import ColumnTransformer
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from sklearn.preprocessing import FunctionTransformer
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# desc, genres, tags
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column_transformer = ColumnTransformer([
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# merge all descriptions
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('desc', FunctionTransformer(lambda X: X.fillna('').agg(' '.join, axis=1).to_frame(name="desc")),
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['detailed_description', 'about_the_game', 'short_description']),
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# genre -> actual genre, but very coarse
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# tags -> user defined tags; title num list
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#TODO: decide whether we drop tags
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('pass', 'passthrough', ['genres']),#, 'tags'
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],
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verbose_feature_names_out=False
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)
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dataset = column_transformer.fit_transform(dataset)
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print(dataset)
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#### SET MISSING VALUES
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print("SETMISS")
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# Setting missing numeric values to the mean
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dataset.fillna(dataset.mean(numeric_only=True), inplace=True)
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# Setting missing text values to 'Unknown'
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dataset.fillna('', inplace=True)
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# Setting missing values in other columns to NaN
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dataset.dropna(inplace=True)
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##### STRUCTURIZE GENRES to onehot
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from sklearn.preprocessing import MultiLabelBinarizer
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import ast
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#serialize array
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dataset['genres'] = dataset['genres'].map(lambda s: ast.literal_eval(s))
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print(dataset['genres']) # in py but not yet onehotenc
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# MultiLabelBinarizer does onehotenc for arrays
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mlb_genres = MultiLabelBinarizer()
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genres_encoded = mlb_genres.fit_transform(dataset.pop('genres'))
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genres_count = len(mlb_genres.classes_) # for multi-label classifiction later
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genres_df = pd.DataFrame(genres_encoded, columns=mlb_genres.classes_)
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print(genres_df)
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#dataset = pd.concat([dataset, genres_df], axis=1)
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#print(dataset)
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#### convert text to bag of words
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## Count vs Tfidf vectorizer
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from sklearn.feature_extraction.text import TfidfVectorizer
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vectorizer = TfidfVectorizer()
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tfidf_matrix = vectorizer.fit_transform(dataset['desc']) # matrix
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tfidf_df = pd.DataFrame(tfidf_matrix.toarray(), columns=vectorizer.get_feature_names_out())
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print(tfidf_df)
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##### MODEL
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print("MODEL")
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from sklearn.linear_model import LogisticRegression
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from sklearn.multioutput import MultiOutputClassifier
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from sklearn.metrics import classification_report
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X = tfidf_df
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y = genres_df
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# cleanup datapoints that dont have a target value (all target columns are 0)
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mask = y.sum(axis=1).map(lambda x: x > 0)
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#print((mask == False).sum()) #31 cases with all target columns 0
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X_clean = X[mask]
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y_clean = y[mask]
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# Split dataset
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from sklearn.model_selection import train_test_split
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X_train, X_test, y_train, y_test = train_test_split(X_clean, y_clean, random_state=0)
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# we want to have multiple possible outputs (multi-label-classficiation) -> multioutputclassifier
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# logi regression is our base system
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# n_jobs=1 since there seems to be some multithreading join issue in sklearn (or my pc is too bad)
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multi_target_clf = MultiOutputClassifier(LogisticRegression(max_iter=1337, random_state=0), n_jobs=1)
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# model training
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multi_target_clf.fit(X_train, y_train)
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# predict against test data
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y_pred = multi_target_clf.predict(X_test)
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# print prec, recall, f1 etc
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print(classification_report(y_test, y_pred, zero_division=0.0))
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#print(f"Trainingsdaten: {X_train.shape}, Testdaten: {X_test.shape}")
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