Advertisement
lancernik

AISD5

Apr 22nd, 2019
110
0
Never
Not a member of Pastebin yet? Sign Up, it unlocks many cool features!
text 2.17 KB | None | 0 0
  1. # -*- coding: utf-8 -*-
  2. """
  3. Created on Mon Apr 22 12:12:18 2019
  4.  
  5. @author: lancernik
  6. """
  7.  
  8. # Zadanie 1
  9. #
  10. #import numpy as np
  11. #from sklearn.linear_model import LinearRegression
  12. #from sklearn.model_selection import train_test_split
  13. #import matplotlib.pyplot as plt
  14. #
  15. #a = np.array([10, 20, 30, 40, 50, 60, 70, 80, 90]).reshape(-1,1)
  16. #b = np.array([300,350,500,700,800,850,900,1000,1200]).reshape(-1,1)
  17. #
  18. #def regress(x,y):
  19. # model = LinearRegression()
  20. # model.fit(x,y)
  21. # model.predict([[100]])
  22. #
  23. # x_test = np.linspace(x[0],x[-1])
  24. # y_pred = model.predict(x_test[:,None])
  25. #
  26. # plt.scatter(x,y)
  27. # plt.plot(x_test,y_pred,'r')
  28. # plt.legend(['Regresja', 'Kropeczki'])
  29. # plt.show()
  30. #
  31. #regress(a,b)
  32. #
  33.  
  34.  
  35.  
  36. #Zadanie 2
  37. #
  38. #import csv
  39. #import os
  40. #
  41. #
  42. #def regress(x,y):
  43. # model = LinearRegression()
  44. # model.fit(x,y)
  45. # model.predict([[1]])
  46. #
  47. # x_test = np.linspace(min(x),max(x))
  48. # y_pred = model.predict(x_test[:,None])
  49. #
  50. # plt.scatter(x,y, marker='*', s=10)
  51. # plt.plot(x_test,y_pred,'r')
  52. # plt.legend(['Regresja', 'Kropeczki'])
  53. # plt.show()
  54. #
  55. #
  56. #
  57. #
  58. #current_dir = os.path.abspath(os.path.dirname(__file__))
  59. #data_path = os.path.join(current_dir, "Data")
  60. #csv_path = os.path.join(data_path, "Advertising.csv")
  61. #
  62. #
  63. #
  64. #
  65. #with open(csv_path) as csv_file:
  66. # output_dict = dict()
  67. # csv_reader = csv.reader(csv_file)
  68. # first_row = next(csv_reader)
  69. # for item in first_row:
  70. # output_dict[item] = []
  71. # for item in csv_reader:
  72. # for i in range(len(item)):
  73. # try:
  74. # output_dict[first_row[i]].append(float(item[i]))
  75. # except:
  76. # output_dict[first_row[i]].append(item[i])
  77. #
  78. # for key in output_dict.keys():
  79. # try:
  80. # output_dict[key] = np.array(output_dict[key], dtype=np.float)
  81. # except:
  82. # pass
  83. #
  84. #
  85. #tv = output_dict['TV'].reshape(-1,1)
  86. #sales = output_dict['sales'].reshape(-1,1)
  87. #radio = output_dict['radio'].reshape(-1,1)
  88. #newspaper = output_dict['newspaper'].reshape(-1,1)
  89. #
  90. #
  91. #
  92. #regress(tv,sales)
  93. #regress(radio,sales)
  94. #regress(newspaper, sales)
Advertisement
Add Comment
Please, Sign In to add comment
Advertisement