UrbanPro

Learn Data Science from the Best Tutors

  • Affordable fees
  • 1-1 or Group class
  • Flexible Timings
  • Verified Tutors

Search in

What are missing data and how can they be handled?

Asked by Last Modified  

Follow 1
Answer

Please enter your answer

Missing data refers to the absence of values in a dataset where information is expected to be present. Missing data can occur for various reasons, including data entry errors, equipment malfunction, survey non-response, or intentional omission. Handling missing data is crucial for accurate and meaningful...
read more

Missing data refers to the absence of values in a dataset where information is expected to be present. Missing data can occur for various reasons, including data entry errors, equipment malfunction, survey non-response, or intentional omission. Handling missing data is crucial for accurate and meaningful data analysis and modeling. Here are some common techniques for dealing with missing data:

  1. Deletion:

    • Listwise Deletion: Remove entire rows with missing values. This approach is straightforward but may lead to a significant loss of data.
    • Column (Variable) Deletion: Remove entire columns with a high percentage of missing values. This is suitable when the missing data is concentrated in specific variables.
  2. Imputation:

    • Mean, Median, or Mode Imputation: Replace missing values with the mean, median, or mode of the observed values in the variable. This method is simple but may not be suitable for variables with skewed distributions.
    • Linear Regression Imputation: Predict missing values using a linear regression model based on other variables.
    • K-Nearest Neighbors (KNN) Imputation: Replace missing values with the average of the K-nearest neighbors in the feature space.
    • Multiple Imputation: Generate multiple imputed datasets and analyze each separately, combining the results to account for uncertainty introduced by imputation.
  3. Interpolation:

    • Use interpolation methods to estimate missing values based on the pattern of observed values in the dataset. Time-series data often benefits from interpolation techniques.
  4. Predictive Modeling:

    • Train a predictive model (e.g., a machine learning model) to predict missing values based on other features in the dataset. The model is trained on instances with observed values and then used to predict missing values.
  5. Missing-Value Indicators:

    • Create an indicator variable that flags whether a value is missing in a particular observation. This allows the model to consider missingness as a separate category.
  6. Domain-Specific Imputation:

    • Utilize domain-specific knowledge to impute missing values. For example, in medical data, a certain test result might be missing because it wasn't applicable to a particular patient.
  7. Hot-Deck Imputation:

    • Replace missing values with values from similar or neighboring observations. This method is particularly useful for categorical data.
  8. Data Augmentation:

    • For machine learning tasks, use techniques like data augmentation to artificially generate additional samples and mitigate the impact of missing data.
  9. Bootstrap Imputation:

    • Generate multiple bootstrap samples from the observed data, impute missing values in each sample, and analyze the results to account for variability introduced by missing data.
  10. Deep Learning Imputation:

    • Utilize deep learning models, such as autoencoders, to learn complex patterns in the data and impute missing values.

The choice of method depends on the nature of the data, the reason for missingness, and the impact on downstream analysis or modeling tasks. It's essential to carefully evaluate the implications of the chosen method and consider potential biases introduced during the imputation process. Additionally, documenting the imputation strategy is crucial for transparency and reproducibility in data analysis.

 
 
 
read less
Comments

Related Questions

What background is required for data science?
Data science includes AI ,MachineLearning ,Satictics, presentation technique and deployment tools . DS helps to predict the future trends, what measures can be taken. Anyone with python programming, Statistics and presentation skill.
Shivani
0 0
5
Hi, anyone personal tutor who can teach data science with 100% job guarantee?
Yes,we have sarted such program. The course is designed to make you expert in 4 month time(60 Hourse course+60 Hours project work) 1)Machine Learning 2) Deep learning ,NLP and Speech to text with expert...
Kunal

Currently I am working as a tester now, and looking to get trained in Data scientist.

Will that be a good decision, if I change my stream and move to data scientist field ?

Yes, I used to work in software testing in 2014. After, my master's from IIT Guwahati, now I am working as a research engineer in Machine learning domain. Data Science is a beautiful field. It involves...
Venkata

Now ask question in any of the 1000+ Categories, and get Answers from Tutors and Trainers on UrbanPro.com

Ask a Question

Related Lessons

Mathematics used in various Machine learning concepts
Mathematics is the building block for data science. This blog focuses on various mathematical concepts that are used in machine learning. The mathematical concepts used for machine learning are categorized...

Market Basket Analysis
Market Basket Analysis (MBA): Market Basket Analysis (MBA), also known as affinity analysis, is a technique to identify items likely to be purchased together. The introduction of electronic point of sale...

A Helpful Q&A Session on Big Data Hadoop Revealing If Not Now then Never!
Here is a Q & A session with our Director Amit Kataria, who gave some valuable suggestion regarding big data. What is big data? Big Data is the latest buzz as far as management is concerned....

What Is Cart?
CART means classification and regression tree. It is a non-parametric approach for developing a predictive model. What is meant by non-parametric is that in implementing this methodology, we do not have...

Data Scientist Survey by IBM for 2020
According to IBM, there will be an increase by 3,50,000 to 2,80,000 opening in year 2020. Finance and Professional service having expected growth by 60%

Recommended Articles

Business Process outsourcing (BPO) services can be considered as a kind of outsourcing which involves subletting of specific functions associated with any business to a third party service provider. BPO is usually administered as a cost-saving procedure for functions which an organization needs but does not rely upon to...

Read full article >

Microsoft Excel is an electronic spreadsheet tool which is commonly used for financial and statistical data processing. It has been developed by Microsoft and forms a major component of the widely used Microsoft Office. From individual users to the top IT companies, Excel is used worldwide. Excel is one of the most important...

Read full article >

Whether it was the Internet Era of 90s or the Big Data Era of today, Information Technology (IT) has given birth to several lucrative career options for many. Though there will not be a “significant" increase in demand for IT professionals in 2014 as compared to 2013, a “steady” demand for IT professionals is rest assured...

Read full article >

Information technology consultancy or Information technology consulting is a specialized field in which one can set their focus on providing advisory services to business firms on finding ways to use innovations in information technology to further their business and meet the objectives of the business. Not only does...

Read full article >

Looking for Data Science Classes?

Learn from the Best Tutors on UrbanPro

Are you a Tutor or Training Institute?

Join UrbanPro Today to find students near you
X

Looking for Data Science Classes?

The best tutors for Data Science Classes are on UrbanPro

  • Select the best Tutor
  • Book & Attend a Free Demo
  • Pay and start Learning

Learn Data Science with the Best Tutors

The best Tutors for Data Science Classes are on UrbanPro

This website uses cookies

We use cookies to improve user experience. Choose what cookies you allow us to use. You can read more about our Cookie Policy in our Privacy Policy

Accept All
Decline All

UrbanPro.com is India's largest network of most trusted tutors and institutes. Over 55 lakh students rely on UrbanPro.com, to fulfill their learning requirements across 1,000+ categories. Using UrbanPro.com, parents, and students can compare multiple Tutors and Institutes and choose the one that best suits their requirements. More than 7.5 lakh verified Tutors and Institutes are helping millions of students every day and growing their tutoring business on UrbanPro.com. Whether you are looking for a tutor to learn mathematics, a German language trainer to brush up your German language skills or an institute to upgrade your IT skills, we have got the best selection of Tutors and Training Institutes for you. Read more