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Understanding Sampling And Its Types In Data Science
Understanding Sampling And Its Types In Data Science

September 14, 2022

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Introduction

Data is produced in huge volumes in this technological and digital era. The number of data sources is growing as time goes on. The data sets taken directly from the sources can be in different forms because of the enormous amount of data and the variety of data sources. The raw data comes in a variety of formats and forms. The formats of the data collected from various organizations can differ. While some data may be in text format, others may be in image format. To clean up the data and make it more consistent. Additionally, data science and machine learning models struggle to feed large data sets.

What is sampling?

The data preprocessing method known as sampling is frequently used to select a small subset of data from a large data set. This selected subset primarily represents the entire data set. 

To put it another way, sampling is the small portion of the data set that exhibits all of the characteristics of the original data set. Sampling is used to cope with data sets and machine learning model complexity. Various data scientists employ this method to address the problem of noise in the data set. These methods can frequently resolve the consistency issue in a particular data set. The sampling technique is applied to address each of these issues.

Types of Sampling

  1. Probability Sampling

Data science and machine learning frequently use probability sampling, also known as random sampling. In data science and machine learning, it is the most popular kind of sampling. Every element in this sampling has an equal chance of being chosen for the particular sample. The data scientists choose the required data elements from the entire population of data elements in this sampling randomly. After feeding the data set, random sampling can sometimes provide you with high accuracy. In other cases, the performance of the data science model using random sampling can be very poor. Thus, random sampling should always be carried out with great care to ensure that the chosen data records accurately represent the entire data set.

 

  1. Stratified Sampling

Another popular type of sampling frequently used in data science is stratified sampling. In this kind of sampling, the initial stage involves splitting the data records into equal portions. The data scientist then selects data records at random for each group up to the necessary number in the following stage. This type of sampling is mainly considered better than random sampling.

 

  1. Cluster Sampling

Here is another kind of sampling frequently employed in machine learning and data science. In this type, the entire data set's population is separated into particular clusters based on similarity. The random sampling method can then be used to select various elements from each cluster. The elements in each cluster can be chosen using a variety of parameters by the data scientists. For instance, the elements in each cluster could be chosen according to location or gender. This kind of sampling can assist in resolving several sampling-related issues. The specific type of sampling can improve the model's accuracy.

  1. Multi-Stage Sampling

This kind of sampling would be the culmination of the various sampling techniques previously covered. The entire data set population is segmented into clusters for this sampling. Sub-clusters are then created from these clusters. Until the end, this process is continued, and no cluster can be divided. When the clustering process is finished, we can choose particular components from each sub-cluster to include in the sampling. Even though it takes time, this sampling method is far superior to all others. It does so because it employs various sampling techniques.

  1. Non-Probability Sampling

The primary type of sampling employed by researchers is non-probability sampling. It is probability sampling's opposite. The data elements or records in this sampling are not chosen at random; instead, the data scientists select the samples without assigning an equal probability to each element. The elements' chances of being chosen are not equal in this method. Instead of doing this, the data scientists choose the samples from the data set using different criteria.

Conclusion

This article taught us about the idea of sampling, the procedures involved in sampling, and the various sampling techniques. Both the statistical and data-driven worlds can benefit from sampling. If you are curious to learn more about the field of data science and start a career, 

 


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