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Databricks Certified Professional Data Scientist Exam - Topic 3 Question 95 Discussion
Databricks Certified Professional Data Scientist Exam - Topic 3 Question 95 Discussion
Actual exam question for Databricks's Databricks Certified Professional Data Scientist exam
Question #: 95
Topic #: 3
[All Databricks Certified Professional Data Scientist Questions]
Select the choice where Regression algorithms are not best fit
A
When the dimension of the object given
B
Weight of the person is given
C
Temperature in the atmosphere
D
Employee status
Regression algorithms are usually employed when the data points are inherently numerical variables (such as the dimensions of an object the weight of a person, or the temperature in the atmosphere) but unlike Bayesian algorithms, they're not very good for categorical data (such as employee status or credit score description).
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Apr 01, 2026, 08:09 AM
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Magdalene
1 hour ago
I remember that regression is used for numerical data, so I think D) Employee status might be the right choice since it's categorical.
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Magdalene
1 hour ago