Euclidean Distances n stuff
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@@ -1,10 +1,11 @@
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# Instantiating Main Python Script File
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# Collects stuff from the rest of the scripts
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import pandas as pd
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import scout
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import numpy as np
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import seaborn as sns
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import digger, gunner
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# containment breach
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import scipy as scp
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import digger, gunner, scout
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# Instantiating globals to be used in other files
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global games_merged_dat
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@@ -48,6 +49,7 @@ NA_col_list = [
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"JP_Sales",
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"Other_Sales",
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"Global_Sales",
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"PAL_Sales",
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"GameName",
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"Review",
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"Console",
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@@ -57,6 +59,7 @@ GLO_col_list = [
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"JP_Sales",
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"Other_Sales",
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"NA_Sales",
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"PAL_Sales",
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"GameName",
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"Review",
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"Console",
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@@ -96,18 +99,30 @@ print(
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games_sales_split_dur.head(5),
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games_sales_split_pos.head(5),
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)
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# Required to use binning for cleaning, idk
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# https://towardsdatascience.com/data-preprocessing-with-python-pandas-part-5-binning-c5bd5fd1b950
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# Also need to transform using Z-score (normal distr go brrrr lmao), or min-max
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# Need similarity and dissimialrity, scipy time
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# Load merged gammas
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# Required to use binning for cleaning, idk (DONE LESGOOOOOOOOOOOOOOOOOOOO)
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# https://towardsdatascience.com/data-preprocessing-with-python-pandas-part-5-binning-c5bd5fd1b950
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gammas = pd.read_csv("datasets/videogames/games_merged.csv")
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labels = ["smol", "epik", "larg"]
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gammas = digger.slam_dunk(gammas, "Critic_Score", labels=labels)
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# gammas = gammas[gammas["Genre"].isna() == False]
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# gammas = scout.cure_depression(gammas)
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# Also need to transform using Z-score (normal distr go brrrr lmao), or min-max
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# ah, scheiße
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# nvm, done, kekW
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gammas['Critic_Score'] = scout.scaling_zscore(gammas, 'Critic_Score')
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print(gammas['Critic_Score'].head(10))
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# Saving all into a file
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gammas.to_csv("output.csv", index=False)
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# Need similarity and dissimialrity, scipy time
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# Selecting 5 random rows
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chosen_idx = np.random.choice(len(gammas), replace = False, size = 5)
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sample_rows = gammas.iloc[chosen_idx]
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print(sample_rows.head())
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scout.dissimilarity(sample_rows.select_dtypes(include = np.number))
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@@ -2,6 +2,8 @@
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from sklearn.linear_model import LinearRegression
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from sklearn.impute import SimpleImputer
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from sklearn import preprocessing
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from scipy.spatial import distance
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import scipy.stats as stats
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import numpy as np
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import pandas as pd
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@@ -43,9 +45,16 @@ def regression_expression(dataset, column, missing_value):
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# https://scikit-learn.org/stable/modules/preprocessing.html#preprocessing
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# That helps ^
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# This boi should work, idk i'm implementing blindly
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def scaling_zscore(datashitter, col):
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scaler = preprocessing.StandardScaler().fit(datashitter[col])
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return scaler.transform(datashitter[col])
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def scaling_zscore(dataframe, col):
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return stats.zscore(dataframe[col],axis = 0, nan_policy= "omit")
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def dissimilarity(row_arr):
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for i in len(row_arr):
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print("| ")
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for j in len(row_arr):
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eucDist = distance.euclidean(row_arr.iloc[i], row_arr.iloc[j])
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print(f"Dissim {i}{j}: {eucDist} |")
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print("\n")
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def scaling_range(datashitter, col):
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nonnull = datashitter[col].isna()
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