The following table consists of training data from an employee database. The data have been generalized. For example, “31 . . . 35” for age represents the age range of 31 to 35. For a given row entry, count represents the number of data tuples having the values for department, status, age, and salary given in that row.
Let status be the class label attribute.
(a) How would you modify the basic decision tree algorithm to take into consideration the count of each generalized data tuple (i.e., of each row entry)?
(b) Use your algorithm to construct a decision tree from the given data.
(c) Given a data tuple having the values “systems”, “26. . . 30”, and “46–50K” for the attributes department, age, and salary, respectively, what would a na¨ıve Bayesian classification of the status for the tuple be?
Answers
Answered by
9
Answer:
translate what do you do I get ✅✅ ed tv to this regard RX e ct ycu nothingood ☺️☺️☺️☺️ and the same thing you are in my
Answered by
0
Answer:
Hzhhzshshshshshaha88888
Similar questions
Psychology,
1 month ago
English,
1 month ago
English,
1 month ago
Computer Science,
2 months ago
Physics,
9 months ago
French,
9 months ago
Math,
9 months ago