Gender
stringclasses 2
values | Ever_Married
stringclasses 2
values | Age
int64 18
89
| Graduated
stringclasses 2
values | Profession
stringclasses 9
values | Work_Experience
float64 0
14
⌀ | Spending_Score
stringclasses 3
values | Family_Size
float64 1
9
⌀ | Var_1
stringclasses 7
values | __FeatEng_target__
stringclasses 4
values | __index_level_0__
int64 1
8.06k
|
|---|---|---|---|---|---|---|---|---|---|---|
Female
|
Yes
| 71
|
Yes
|
Lawyer
| 8
|
High
| 2
|
Cat_6
|
C
| 1
|
Male
|
Yes
| 43
|
Yes
|
Executive
| 1
|
High
| 4
|
Cat_6
|
B
| 3
|
Female
|
No
| 28
|
Yes
|
Engineer
| 1
|
Low
| 6
|
Cat_2
|
A
| 5
|
Male
|
Yes
| 71
|
Yes
|
Artist
| 0
|
High
| 2
|
Cat_6
|
B
| 6
|
Male
| null | 61
|
Yes
|
Artist
| 1
|
Average
| 5
|
Cat_6
|
C
| 8
|
Male
|
Yes
| 51
|
Yes
|
Entertainment
| 0
|
Low
| 3
| null |
D
| 9
|
Female
|
No
| 26
|
Yes
|
Marketing
| 0
|
Low
| 2
|
Cat_3
|
A
| 10
|
Male
|
Yes
| 53
|
Yes
|
Artist
| 6
|
Average
| 2
|
Cat_6
|
C
| 12
|
Male
|
Yes
| 67
|
Yes
|
Executive
| 1
|
Low
| 2
|
Cat_6
|
A
| 13
|
Male
|
Yes
| 71
|
Yes
|
Lawyer
| 1
|
High
| 2
|
Cat_6
|
C
| 14
|
Male
|
Yes
| 76
|
Yes
|
Lawyer
| 0
|
Low
| 2
|
Cat_6
|
A
| 15
|
Female
|
No
| 52
|
Yes
|
Artist
| null |
Low
| 1
|
Cat_6
|
C
| 16
|
Female
|
Yes
| 58
|
Yes
|
Artist
| 0
|
Average
| 5
|
Cat_6
|
C
| 17
|
Female
|
Yes
| 31
|
No
|
Engineer
| 8
|
Low
| 2
|
Cat_4
|
C
| 19
|
Female
|
No
| 25
|
Yes
|
Healthcare
| 0
|
Low
| 1
|
Cat_6
|
D
| 23
|
Male
|
Yes
| 52
|
Yes
|
Executive
| 1
|
High
| 4
|
Cat_6
|
C
| 24
|
Male
|
No
| 31
|
Yes
|
Healthcare
| 0
|
Low
| 4
|
Cat_6
|
D
| 27
|
Male
|
Yes
| 49
|
Yes
|
Artist
| 1
|
Low
| 2
|
Cat_3
|
A
| 28
|
Male
|
No
| 32
|
Yes
|
Artist
| 1
|
Low
| 2
|
Cat_6
|
A
| 30
|
Female
|
Yes
| 46
|
Yes
|
Marketing
| null |
High
| 3
|
Cat_6
|
B
| 31
|
Male
|
No
| 19
|
No
|
Healthcare
| 0
|
Low
| 3
|
Cat_6
|
D
| 32
|
Female
|
No
| 29
|
No
|
Homemaker
| 0
|
Low
| 4
|
Cat_4
|
A
| 34
|
Male
|
Yes
| 36
|
Yes
|
Artist
| 0
|
High
| 3
|
Cat_6
|
C
| 35
|
Male
|
Yes
| 43
|
Yes
|
Artist
| 1
|
Low
| 2
|
Cat_6
|
B
| 39
|
Female
|
Yes
| 70
|
Yes
|
Engineer
| 0
|
High
| 2
|
Cat_6
|
B
| 40
|
Male
|
No
| 29
|
Yes
|
Doctor
| 1
|
Low
| 4
|
Cat_6
|
C
| 41
|
Male
|
Yes
| 40
|
Yes
|
Artist
| 1
|
Average
| 2
|
Cat_4
|
C
| 42
|
Female
|
No
| 33
|
Yes
|
Engineer
| null |
Low
| 5
|
Cat_7
|
D
| 43
|
Male
|
Yes
| 28
|
Yes
|
Artist
| 9
|
Average
| 2
|
Cat_6
|
A
| 45
|
Female
|
Yes
| 76
|
Yes
|
Marketing
| 0
|
Low
| 2
|
Cat_6
|
B
| 46
|
Male
|
Yes
| 73
|
Yes
|
Executive
| 1
|
High
| 2
|
Cat_6
|
B
| 47
|
Male
|
Yes
| 50
|
Yes
|
Doctor
| 1
|
Low
| 2
|
Cat_6
|
C
| 48
|
Female
|
No
| 49
|
Yes
|
Engineer
| 9
|
Low
| 1
|
Cat_6
|
A
| 49
|
Male
|
Yes
| 65
|
Yes
|
Lawyer
| 11
|
High
| 2
|
Cat_6
|
C
| 50
|
Male
|
Yes
| 57
|
Yes
|
Artist
| 1
|
Average
| 5
|
Cat_6
|
C
| 51
|
Male
|
Yes
| 59
|
Yes
|
Executive
| 1
|
High
| 5
|
Cat_6
|
C
| 52
|
Female
|
No
| 32
|
Yes
|
Engineer
| 0
|
Low
| 3
|
Cat_6
|
D
| 55
|
Female
|
No
| 19
|
No
|
Healthcare
| 0
|
Low
| 5
|
Cat_2
|
D
| 56
|
Female
|
No
| 86
|
Yes
|
Lawyer
| 1
|
Low
| 1
|
Cat_6
|
A
| 58
|
Male
|
Yes
| 52
|
No
|
Entertainment
| 1
|
Average
| 4
|
Cat_3
|
B
| 61
|
Male
|
Yes
| 53
|
Yes
|
Artist
| 3
|
Average
| 4
|
Cat_6
|
C
| 62
|
Male
|
No
| 25
|
Yes
|
Healthcare
| 0
|
Low
| null |
Cat_4
|
D
| 63
|
Male
|
Yes
| 61
|
Yes
|
Entertainment
| 11
|
Average
| 3
|
Cat_6
|
A
| 64
|
Female
|
Yes
| 45
|
Yes
|
Artist
| 8
|
Average
| 2
| null |
B
| 65
|
Female
|
Yes
| 52
|
Yes
|
Doctor
| 1
|
Low
| 3
|
Cat_4
|
B
| 66
|
Female
| null | 33
|
No
|
Healthcare
| 2
|
Low
| 3
|
Cat_2
|
C
| 68
|
Female
|
No
| 40
|
Yes
|
Artist
| null |
Low
| 1
|
Cat_2
|
B
| 69
|
Male
|
Yes
| 25
|
Yes
| null | null |
Low
| null |
Cat_7
|
A
| 70
|
Female
|
Yes
| 86
|
Yes
|
Lawyer
| 1
|
Low
| 2
|
Cat_6
|
C
| 72
|
Male
|
Yes
| 53
|
Yes
|
Artist
| 1
|
Average
| 4
|
Cat_6
|
C
| 77
|
Female
|
No
| 37
|
Yes
|
Doctor
| 1
|
Low
| 1
|
Cat_4
|
A
| 79
|
Male
|
Yes
| 58
|
Yes
|
Doctor
| 0
|
Average
| 2
|
Cat_6
|
C
| 82
|
Male
|
No
| 28
|
Yes
|
Doctor
| 1
|
Low
| 9
|
Cat_4
|
B
| 86
|
Male
|
Yes
| 49
|
Yes
|
Artist
| 1
|
Average
| 3
|
Cat_6
|
C
| 87
|
Male
|
No
| 20
|
No
|
Healthcare
| 1
|
Low
| 5
|
Cat_2
|
D
| 88
|
Male
| null | 47
| null |
Executive
| 1
|
Average
| 5
|
Cat_4
|
B
| 89
|
Male
|
Yes
| 40
|
Yes
|
Executive
| null |
High
| 4
|
Cat_6
|
A
| 92
|
Female
|
No
| 30
|
No
|
Healthcare
| 0
|
Low
| 9
|
Cat_6
|
C
| 93
|
Female
|
No
| 39
|
Yes
|
Entertainment
| 7
|
Low
| 1
|
Cat_6
|
A
| 94
|
Female
|
Yes
| 47
|
Yes
|
Artist
| 0
|
Low
| 3
|
Cat_6
|
C
| 95
|
Male
|
Yes
| 53
|
No
|
Executive
| 0
|
Average
| 5
|
Cat_4
|
B
| 98
|
Female
|
No
| 22
|
No
|
Healthcare
| 1
|
Low
| 9
|
Cat_4
|
D
| 99
|
Female
|
Yes
| 78
|
No
|
Lawyer
| 1
|
Low
| 1
|
Cat_5
|
A
| 100
|
Female
|
Yes
| 47
|
No
|
Engineer
| 8
|
Average
| 5
|
Cat_4
|
B
| 104
|
Female
|
Yes
| 35
|
No
|
Engineer
| 0
|
Average
| 5
|
Cat_4
|
D
| 106
|
Male
|
Yes
| 50
|
Yes
|
Artist
| 0
|
Low
| 2
|
Cat_6
|
B
| 107
|
Male
|
Yes
| 47
|
No
|
Executive
| null |
High
| 4
|
Cat_4
|
B
| 109
|
Female
|
No
| 38
|
Yes
|
Healthcare
| 0
|
Low
| 2
|
Cat_6
|
C
| 110
|
Male
| null | 81
|
No
|
Executive
| null |
High
| 2
|
Cat_4
|
A
| 114
|
Female
|
Yes
| 49
|
No
|
Engineer
| 1
|
Average
| 4
|
Cat_6
|
A
| 116
|
Male
|
Yes
| 52
|
Yes
|
Engineer
| 1
|
Average
| 3
|
Cat_4
|
C
| 117
|
Male
|
No
| 32
|
No
|
Healthcare
| 8
|
Low
| 4
| null |
C
| 119
|
Female
|
Yes
| 73
|
Yes
|
Artist
| null |
Average
| 3
|
Cat_3
|
C
| 122
|
Female
|
Yes
| 63
|
Yes
|
Artist
| 0
|
Average
| 3
|
Cat_6
|
C
| 123
|
Male
|
No
| 35
|
Yes
|
Doctor
| 0
|
Low
| 1
|
Cat_6
|
D
| 124
|
Male
|
Yes
| 46
|
Yes
|
Artist
| 0
|
Average
| 2
|
Cat_6
|
B
| 126
|
Male
|
Yes
| 45
|
Yes
|
Entertainment
| 4
|
Average
| 3
|
Cat_2
|
B
| 129
|
Male
|
Yes
| 56
|
Yes
|
Executive
| 0
|
High
| 1
|
Cat_6
|
B
| 130
|
Male
|
Yes
| 46
|
No
|
Entertainment
| 1
|
High
| 3
|
Cat_6
|
B
| 133
|
Female
|
No
| 28
|
No
|
Healthcare
| 0
|
Low
| 4
|
Cat_6
|
D
| 134
|
Female
|
No
| 20
|
No
|
Doctor
| 1
|
Low
| 6
|
Cat_6
|
D
| 135
|
Female
|
No
| 32
|
Yes
|
Engineer
| 0
|
Low
| 2
|
Cat_6
|
D
| 137
|
Female
|
No
| 51
|
Yes
|
Artist
| 0
|
Low
| 1
|
Cat_3
|
A
| 138
|
Female
|
No
| 41
|
No
|
Engineer
| 9
|
Low
| 1
|
Cat_6
|
A
| 139
|
Male
|
Yes
| 56
|
No
|
Lawyer
| 0
|
High
| 3
|
Cat_3
|
A
| 140
|
Female
|
Yes
| 43
|
Yes
|
Artist
| 0
|
Average
| 4
|
Cat_6
|
C
| 141
|
Male
|
No
| 27
|
Yes
|
Healthcare
| 1
|
Low
| 3
|
Cat_6
|
D
| 144
|
Female
|
No
| 22
|
No
|
Marketing
| 1
|
Low
| 2
|
Cat_1
|
D
| 145
|
Female
|
No
| 25
|
No
|
Engineer
| 1
|
Low
| 1
|
Cat_4
|
A
| 151
|
Male
|
Yes
| 86
|
No
|
Executive
| 0
|
High
| 2
|
Cat_6
|
A
| 152
|
Female
|
No
| 28
|
Yes
|
Healthcare
| null |
Low
| 5
|
Cat_6
|
B
| 153
|
Male
|
Yes
| 72
|
Yes
|
Executive
| 0
|
High
| 2
|
Cat_6
|
C
| 154
|
Female
|
Yes
| 49
|
Yes
|
Artist
| 0
|
Average
| 4
|
Cat_6
|
C
| 156
|
Male
|
No
| 53
|
No
|
Engineer
| 1
|
Low
| 3
|
Cat_4
|
A
| 157
|
Female
|
No
| 43
|
Yes
|
Homemaker
| 14
|
Low
| 1
|
Cat_6
|
D
| 160
|
Male
|
No
| 19
|
No
|
Healthcare
| 1
|
Low
| 4
|
Cat_6
|
D
| 161
|
Female
|
Yes
| 36
|
No
|
Artist
| 1
|
Average
| 4
|
Cat_4
|
B
| 164
|
Female
|
Yes
| 38
|
No
|
Engineer
| 1
|
Low
| 2
|
Cat_4
|
A
| 165
|
Male
|
Yes
| 35
|
Yes
|
Artist
| 1
|
Average
| 2
|
Cat_6
|
B
| 170
|
Male
|
Yes
| 36
|
No
|
Doctor
| 0
|
Average
| 2
|
Cat_7
|
A
| 171
|
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