Sampling Techniques In Data Science

Description

A Quiz on 8 different types of Sampling Techniques in Data Science.
Vishakha Achmare
Quiz by Vishakha Achmare, updated more than 1 year ago
Vishakha Achmare
Created by Vishakha Achmare almost 4 years ago
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Resource summary

Question 1

Question
___________ is the collection of the elements which has some or the other characteristic in common. Number of elements in the ___________ is the size of the _________.
Answer
  • Population
  • Sample

Question 2

Question
_________ is the subset of the population. The process of selecting a ________ is known as sampling. Number of elements in the _________ is the _________ size.
Answer
  • Sample.
  • Population.

Question 3

Question
Sampling is done to draw __________
Answer
  • Conclusions about populations from samples.
  • It enables us to determine a population’s characteristics by directly observing only a portion (or sample) of the population.
  • Both

Question 4

Question
Steps Involved in Sampling are:
Answer
  • Write down the answers
  • Check them later.

Question 5

Question
Define Target population, Sampling Frame, Sampling Technique, and Sample Size.
Answer
  • Write the answers down
  • Check them later

Question 6

Question
Sampling techniques are grouped into two categories as:
Answer
  • Write your answers down
  • Check them later.

Question 7

Question
___________ technique uses randomization to make sure that every element of the population gets an equal chance to be part of the selected sample. It’s alternatively known as random sampling.
Answer
  • Non- Probability Sampling
  • Probability Sampling

Question 8

Question
Types of Probability Sampling are:
Answer
  • Simple Random Sampling, Stratified sampling
  • Systematic sampling, Cluster Sampling
  • Multi stage Sampling
  • All of the above

Question 9

Question
In _____________ Sampling: Every element has an equal chance of getting selected to be the part of the sample and it is used when we don’t have any kind of prior information about the target population.
Answer
  • Simple Random
  • Cluster Sampling

Question 10

Question
Limitations of Simple Random Sampling are:
Answer
  • write the answer down
  • check them later

Question 11

Question
In ___________ sampling, the first individual is selected randomly and others are selected using a fixed ‘sampling interval’.
Answer
  • Systematic Sampling
  • Stratified Sampling

Question 12

Question
___________ divides the elements of the population into small subgroups (strata) based on the similarity in such a way that the elements within the group are homogeneous and heterogeneous among the other subgroups formed. Then the elements are randomly selected from each of these strata. We also need to have prior information about the population to create subgroups.
Answer
  • Stratified Sampling
  • Cluster Sampling

Question 13

Question
In ___________ sampling entire population is divided into clusters or sections and then the clusters are randomly selected. All the elements of the cluster are used for sampling. Clusters are identified using details such as age, sex, location etc. This type of sampling is used when we focus on a specific region or area.
Answer
  • Cluster Sampling
  • Quota Sampling

Question 14

Question
Single Stage Cluster Sampling: We randomly select clusters and then from those selected clusters we randomly select elements for sampling. Two Stage Cluster Sampling: Entire cluster is selected randomly for sampling.
Answer
  • True
  • False

Question 15

Question
__________ Sampling is the combination of one or more methods described before. It is a combination of Simple Random sampling, Sampling Stratified sampling, Systematic sampling Cluster Sampling any of these sampling methods.
Answer
  • Purposive Sampling
  • Multi-Stage Sampling

Question 16

Question
________ Sampling technique does not rely on randomization. This technique is more reliant on the researcher’s ability to select elements for a sample. The outcome of sampling might be biased and makes it difficult for all the elements of the population to be part of the sample equally. This type of sampling is also known as non-random sampling.
Answer
  • Probability Sampling
  • Non-Probability Sampling

Question 17

Question
___________ Samples are selected based on the availability. This method is used when the availability of sample is rare and also costly. So based on the convenience samples are selected.
Answer
  • Convenience Sampling
  • Purposive Sampling

Question 18

Question
____________ is based on the intention or the purpose of study. Only those elements will be selected from the population which suits the best for the purpose of our study.
Answer
  • Quota Sampling
  • Purposive Sampling

Question 19

Question
_________ sampling depends on some pre-set standard. It selects the representative sample from the population. The proportion of characteristics/traits in the sample should be the same as the population. Elements are selected until exact proportions of certain types of data are obtained or sufficient data in different categories is collected.
Answer
  • Quota Sampling
  • Snowball Sampling

Question 20

Question
______________ also known as selective sampling. It depends on the judgment of the experts when choosing whom to ask to participate.
Answer
  • Judgment Sampling
  • Convenience Sampling

Question 21

Question
In _____________ Existing people are asked to nominate further people known to them so that the sample increases in size like a rolling snowball. This method of sampling is effective when a sampling frame is difficult to identify.
Answer
  • Snowball Sampling
  • Judgment Sampling
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