Dlasza praca nad logiką obliczeniową
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@ -3,9 +3,9 @@ import pandas as pd
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from math import sqrt
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# Funkcja zwraca prawdopodobieństwo zdobycia gola
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def LogisticRegression_predict_proba(position_x, position_y, angle, match_minute, Number_Intervening_Opponents, Number_Intervening_Teammates, isFoot, isHead):
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def LogisticRegression_predict_proba(position_x, position_y, distance_to_goalM, angle, match_minute, Number_Intervening_Opponents, Number_Intervening_Teammates, isFoot, isHead):
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distance_to_goalM = sqrt(( (position_x**2) + (position_y**2)))
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# distance_to_goalM = sqrt(( (position_x**2) + (position_y**2)))
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model = load('regresja_logistyczna.joblib')
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X_new = pd.DataFrame(columns=['position_x', 'position_y', 'distance_to_goalM', 'angle','match_minute', 'Number_Intervening_Opponents','Number_Intervening_Teammates', 'isFoot', 'isHead'])
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@ -14,7 +14,79 @@ def LogisticRegression_predict_proba(position_x, position_y, angle, match_minute
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#kolejne modele
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def xgboost_predict_proba():
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def xgboost_predict_proba(minute, position_name, shot_body_part_name, shot_technique_name,
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shot_type_name, shot_first_time, shot_one_on_one,
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shot_aerial_won, shot_deflected, shot_open_goal,
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shot_follows_dribble, shot_redirect, x1, y1,
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number_of_players_opponents, number_of_players_teammates,
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angle, distance, x_player_opponent_Goalkeeper,
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x_player_opponent_8, x_player_opponent_1, x_player_opponent_2,
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x_player_opponent_3, x_player_teammate_1, x_player_opponent_4,
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x_player_opponent_5, x_player_opponent_6, x_player_teammate_2,
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x_player_opponent_9, x_player_opponent_10, x_player_opponent_11,
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x_player_teammate_3, x_player_teammate_4, x_player_teammate_5,
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x_player_teammate_6, x_player_teammate_7, x_player_teammate_8,
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x_player_teammate_9, x_player_teammate_10,
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y_player_opponent_Goalkeeper, y_player_opponent_8,
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y_player_opponent_1, y_player_opponent_2, y_player_opponent_3,
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y_player_teammate_1, y_player_opponent_4, y_player_opponent_5,
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y_player_opponent_6, y_player_teammate_2, y_player_opponent_9,
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y_player_opponent_10, y_player_opponent_11, y_player_teammate_3,
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y_player_teammate_4, y_player_teammate_5, y_player_teammate_6,
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y_player_teammate_7, y_player_teammate_8, y_player_teammate_9,
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y_player_teammate_10, x_player_opponent_7, y_player_opponent_7,
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x_player_teammate_Goalkeeper, y_player_teammate_Goalkeeper,
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shot_kick_off):
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model = load('xgboost.joblib')
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X_new = pd.DataFrame(columns=['minute', 'position_name', 'shot_body_part_name', 'shot_technique_name',
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'shot_type_name', 'shot_first_time', 'shot_one_on_one',
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'shot_aerial_won', 'shot_deflected', 'shot_open_goal',
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'shot_follows_dribble', 'shot_redirect', 'x1', 'y1',
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'number_of_players_opponents', 'number_of_players_teammates',
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'angle', 'distance', 'x_player_opponent_Goalkeeper',
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'x_player_opponent_8', 'x_player_opponent_1', 'x_player_opponent_2',
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'x_player_opponent_3', 'x_player_teammate_1', 'x_player_opponent_4',
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'x_player_opponent_5', 'x_player_opponent_6', 'x_player_teammate_2',
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'x_player_opponent_9', 'x_player_opponent_10', 'x_player_opponent_11',
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'x_player_teammate_3', 'x_player_teammate_4', 'x_player_teammate_5',
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'x_player_teammate_6', 'x_player_teammate_7', 'x_player_teammate_8',
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'x_player_teammate_9', 'x_player_teammate_10',
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'y_player_opponent_Goalkeeper', 'y_player_opponent_8',
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'y_player_opponent_1', 'y_player_opponent_2', 'y_player_opponent_3',
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'y_player_teammate_1', 'y_player_opponent_4', 'y_player_opponent_5',
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'y_player_opponent_6', 'y_player_teammate_2', 'y_player_opponent_9',
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'y_player_opponent_10', 'y_player_opponent_11', 'y_player_teammate_3',
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'y_player_teammate_4', 'y_player_teammate_5', 'y_player_teammate_6',
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'y_player_teammate_7', 'y_player_teammate_8', 'y_player_teammate_9',
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'y_player_teammate_10', 'x_player_opponent_7', 'y_player_opponent_7',
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'x_player_teammate_Goalkeeper', 'y_player_teammate_Goalkeeper',
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'shot_kick_off'])
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X_new.loc[len(X_new.index)] = [minute, position_name, shot_body_part_name, shot_technique_name,
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shot_type_name, shot_first_time, shot_one_on_one,
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shot_aerial_won, shot_deflected, shot_open_goal,
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shot_follows_dribble, shot_redirect, x1, y1,
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number_of_players_opponents, number_of_players_teammates,
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angle, distance, x_player_opponent_Goalkeeper,
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x_player_opponent_8, x_player_opponent_1, x_player_opponent_2,
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x_player_opponent_3, x_player_teammate_1, x_player_opponent_4,
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x_player_opponent_5, x_player_opponent_6, x_player_teammate_2,
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x_player_opponent_9, x_player_opponent_10, x_player_opponent_11,
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x_player_teammate_3, x_player_teammate_4, x_player_teammate_5,
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x_player_teammate_6, x_player_teammate_7, x_player_teammate_8,
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x_player_teammate_9, x_player_teammate_10,
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y_player_opponent_Goalkeeper, y_player_opponent_8,
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y_player_opponent_1, y_player_opponent_2, y_player_opponent_3,
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y_player_teammate_1, y_player_opponent_4, y_player_opponent_5,
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y_player_opponent_6, y_player_teammate_2, y_player_opponent_9,
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y_player_opponent_10, y_player_opponent_11, y_player_teammate_3,
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y_player_teammate_4, y_player_teammate_5, y_player_teammate_6,
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y_player_teammate_7, y_player_teammate_8, y_player_teammate_9,
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y_player_teammate_10, x_player_opponent_7, y_player_opponent_7,
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x_player_teammate_Goalkeeper, y_player_teammate_Goalkeeper,
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shot_kick_off]
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return model.predict_proba(X_new)[0][1].round(2)
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@ -1,12 +1,26 @@
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from flask import Flask, request, jsonify
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from flask_cors import CORS
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from modele.modele import LogisticRegression_predict_proba
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from modele.modele import LogisticRegression_predict_proba, xgboost_predict_proba
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import math
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app = Flask(__name__)
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CORS(app)
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app.config['CORS_HEADERS'] = 'Content-Type'
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def loc2angle(x, y):
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rads = math.atan(7.32 * x / (x**2 + (y - 34)**2 - (7.32/2)**2))
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rads = math.pi + rads if rads < 0 else rads
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deg = math.degrees(rads)
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return deg
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def loc2distance(x, y):
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return math.sqrt(x**2 + (y - 34)**2)
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def loc2locdistance(x1, y1, x2, y2):
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return math.sqrt((x1 - x2)**2 + (y1 - y2)**2)
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# model Api
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# @app.route("/members")
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# def members():
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@ -16,6 +30,51 @@ app.config['CORS_HEADERS'] = 'Content-Type'
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# @app.route("/LRegresion<x>&<y>")
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@app.route("/get_model", methods = ['GET'])
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# def get_model():
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# # x = int(x[0:2])
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# # y = int(y[0:2])
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# x = request.args.get('x', type=float)
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# y = request.args.get('y', type=float)
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# ## change model on xgboost
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# ## add angle, match minutes and number of players
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# angle = loc2angle(x = x, y = y)
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# dist = loc2distance(x = x, y = y)
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# if y is None and x is None:
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# return jsonify({"error": "Brak wymaganych parametrów"}), 400
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# response = xgboost_predict_proba(minute = 20, position_name, shot_body_part_name, shot_technique_name,
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# shot_type_name, shot_first_time, shot_one_on_one,
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# shot_aerial_won, shot_deflected, shot_open_goal,
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# shot_follows_dribble, shot_redirect, x1 = x, y1 = y,
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# number_of_players_opponents, number_of_players_teammates,
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# angle = angle, distance = dist, x_player_opponent_Goalkeeper,
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# x_player_opponent_8, x_player_opponent_1, x_player_opponent_2,
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# x_player_opponent_3, x_player_teammate_1, x_player_opponent_4,
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# x_player_opponent_5, x_player_opponent_6, x_player_teammate_2,
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# x_player_opponent_9, x_player_opponent_10, x_player_opponent_11,
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# x_player_teammate_3, x_player_teammate_4, x_player_teammate_5,
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# x_player_teammate_6, x_player_teammate_7, x_player_teammate_8,
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# x_player_teammate_9, x_player_teammate_10,
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# y_player_opponent_Goalkeeper, y_player_opponent_8,
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# y_player_opponent_1, y_player_opponent_2, y_player_opponent_3,
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# y_player_teammate_1, y_player_opponent_4, y_player_opponent_5,
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# y_player_opponent_6, y_player_teammate_2, y_player_opponent_9,
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# y_player_opponent_10, y_player_opponent_11, y_player_teammate_3,
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# y_player_teammate_4, y_player_teammate_5, y_player_teammate_6,
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# y_player_teammate_7, y_player_teammate_8, y_player_teammate_9,
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# y_player_teammate_10, x_player_opponent_7, y_player_opponent_7,
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# x_player_teammate_Goalkeeper, y_player_teammate_Goalkeeper,
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# shot_kick_off)
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# #print(x)
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# #print(y)
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# #print(response)
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# res = str(response)
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# #return {"response":res}
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# return jsonify({"response":res})
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def get_model():
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# x = int(x[0:2])
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@ -25,12 +84,16 @@ def get_model():
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## change model on xgboost
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## add angle, match minutes and number of players
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angle = loc2angle(x = x, y = y)
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dist = loc2distance(x = x, y = y)
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if y is None and x is None:
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return jsonify({"error": "Brak wymaganych parametrów"}), 400
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response = LogisticRegression_predict_proba(position_x=x,
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position_y=y,
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angle = 13.67,
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distance_to_goalM = dist,
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angle = angle,
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match_minute=13,
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Number_Intervening_Opponents=3,
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Number_Intervening_Teammates=0,
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@ -114,7 +114,7 @@ loc2angle <- function(x, y) {
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# distance to goal
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loc2distance <- function(x, y) {
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sqrt(x^2 + y^2)
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sqrt(x^2 + (y - 34)^2)
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}
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# distance between two points on the pitch
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@ -345,5 +345,5 @@ cols <- names(data3_final)[grepl(pattern, names(data3_final))]
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data_final <- data3_final %>% unnest(all_of(cols))
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skimr::skim(data_final)
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write_csv(data_final, file = "data/final_data.csv")
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# df_test <- read.csv("data/final_data.csv", nrows = 100)
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df_test <- read.csv("data/final_data.csv", nrows = 1000)
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##################### The fourth dataset ##############################
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