Decide Fast & Get 50% Flat Discount on This 2024Friday | Limited Time Offer - Ends In COUPON CODE: 2024Friday

Practice Databricks Databricks-Certified-Professional-Data-Scientist Exam Questions

    1. Page: 1/28
      Total 138 Questions
    Question No 1
    Feature Hashing approach is "SGD - based classifiers avoid the need to predetermine vector size by simply picking a reasonable size and shoehorning the training data into vectors of that size" now with large vectors or with multiple locations per feature in Feature hashing?
    Choose the Choices:


    Question No 2
    What are the advantages of the Hashing Features?
    Choose the Choices:


    Question No 3
    Question - 3: In machine learning, feature hashing, also known as the hashing trick (by analogy to the kernel trick), is a fast and space - efficient way of vectorizing features (such as the words in a language), i.e., turning arbitrary features into indices in a vector or matrix. It works by applying a hash function to the features and using their hash values modulo the number of features as indices directly, rather than looking the indices up in an associative array. So what is the primary reason of the hashing trick for building classifiers?
    Choose the Choices:


    Question No 4
    Suppose A, B , and C are events. The probability of A given B , relative to P(|C), is the same as the probability of A given B and C (relative to P ). That is,
    Choose the Choices:


    Question No 5
    What is the considerable difference between L1 and L2 regularization?
    Choose the Choices:



    1. Page: 1/28
      Total 138 Questions