GLOBAL RESEARCH SYNDICATE
No Result
View All Result
  • Login
  • Latest News
  • Consumer Research
  • Survey Research
  • Marketing Research
  • Industry Research
  • Data Collection
  • More
    • Data Analysis
    • Market Insights
  • Latest News
  • Consumer Research
  • Survey Research
  • Marketing Research
  • Industry Research
  • Data Collection
  • More
    • Data Analysis
    • Market Insights
No Result
View All Result
globalresearchsyndicate
No Result
View All Result
Home Data Analysis

COVID 19 Impact On Machine Learning Models

globalresearchsyndicate by globalresearchsyndicate
June 16, 2020
in Data Analysis
0
COVID 19 Impact On Machine Learning Models
0
SHARES
3
VIEWS
Share on FacebookShare on Twitter

A lot of business processes are functioning with the help of data science implementations, i.e. machine learning models, time series models, AI solutions etc. These models take into consideration the historical data as well as past trends. In the Pre-COVID arena, all models were working well with the changing environment. All predictions were serving the purpose of the task as desired. With the advent of 2020, COVID 19 emerged on this Earth and caused a major disruption in our usual modelling behaviour. 

COVID has affected every industry in a different way. For example, consumers have engaged in a lot of panic buying situations and supply hoarding due to the lockdown scenario in major parts of the world. Hence the consumer goods industry saw a heavy increase in supplies in the month of March and April. In western countries like the UK, US the ‘eating at home scenarios’ increased substantially. There was a major shift from eating outside to eating at home due to restricted movement for people.

The sales for most of the food products went up due to the situation. This sudden spike in sales has been very beneficial from the performance standpoint. The traditional models can no longer be used for sales predictions as they are unable to capture these unusual spikes in sales over the past two to three months. This is just one of the use cases. A similar kind of situation will be observed with respect to every industry. 



For solving this kind of a complex situation, some careful analysis will need to be undertaken by Analysts and Data Scientists. As these spikes as in the above case are infrequent numbers, they are classified as outliers. Outlier detection and analysis are terms which need to be researched so that we can arrive at a solution to the above problem. Outlier detection for this scenario is an easy process as it is visible on the graph explicitly. The major challenge will come around handling these outliers in the most efficient way.

There can be multiple ways to approach this. You can design a case by case solution where you can make different assumptions around the COVID scenario. The first scenario would be without COVID coming into the picture. The subsequent scenarios can be designed making assumptions until when COVID will last. The usual times series or linear regression models can be used but with some smoothing factors so that the predictions are in line with the expected sales and do not overrun expectations. The kind of outlier handling technique to be used depends on the modifications that you want to do. 


W3Schools


I have recently come across a few outlier handling techniques which can be used – 

  1. Bootstrapping methods – These are methods which allow you to boost model performance. It handles the outlier very efficiently. It has various implementations in Python. Some examples of Boosting method implementations are XgBoost, AdaBoost etc.
  2. Generalized Estimating Equations – This method is used when observations are possibly correlated within a cluster but uncorrelated across clusters. This helps in handling the outliers. It has an implementation in the statsmodels library in Python.
  3. M – Estimation Method – This is similar to linear regression but modifies the function by removing the square operation and replaces it with another function which helps us with dealing with the outliers. It has an implementation in the statsmodels library in Python.

These are a few of the methods which could be used for handling the outliers depending on the business scenario. Depending on the use case, the data points will display different behaviour. Referred to as “concept drift”, there are changes in human behaviour depending on the situation outside i.e. lockdown, self-isolation etc. Concept drift is affecting all kinds of industries, for example, fraud prediction scenarios cannot be implemented in the same ways as before. 

Models which have been deployed and productionalized work on the same old features and the historical data. Models in production don’t account for variables and don’t factor in evolving trends in the real world. But with the changing agile world circumstances, these models will not be able to make predictions according to the scenario. The models will have to be changed to incorporate the changing, agile environment so that they are able to provide the desired results and add value to the business.

Models need to be more adaptive and able to leverage business strategies in the best possible way. Models will become obsolete if not altered. There will have to be mechanisms in place for tracking the trends and the errors in model value predictions. Data Science needs to quickly adapt to the fast paced changes that are happening in the world due to the pandemic.

Companies have the right kind of data in place, but right now it’s all about the modifications that you make and leverage the data in the best way possible. Models will have to be agile and should be able to adapt to immediate emergencies like COVID etc. Data Science teams will need to make models dynamic so that they can be monitored to assess the situation. 

Provide your comments below

comments

Related Posts

How Machine Learning has impacted Consumer Behaviour and Analysis
Consumer Research

How Machine Learning has impacted Consumer Behaviour and Analysis

January 4, 2024
Market Research The Ultimate Weapon for Business Success
Consumer Research

Market Research: The Ultimate Weapon for Business Success

June 22, 2023
Unveiling the Hidden Power of Market Research A Game Changer
Consumer Research

Unveiling the Hidden Power of Market Research: A Game Changer

June 2, 2023
7 Secrets of Market Research Gurus That Will Blow Your Mind
Consumer Research

7 Secrets of Market Research Gurus That Will Blow Your Mind

May 8, 2023
The Shocking Truth About Market Research Revealed!
Consumer Research

The Shocking Truth About Market Research: Revealed!

April 25, 2023
market research, primary research, secondary research, market research trends, market research news,
Consumer Research

Quantitative vs. Qualitative Research. How to choose the Right Research Method for Your Business Needs

March 14, 2023
Next Post
Trending News 2020 Covid-19 impact on Specular Microscope Market Research Report with top key venders-Huntsman,SPI,BASF,United Coatings,Technical Urethanes

Trending News 2020 Covid-19 impact on Specular Microscope Market Research Report with top key venders-Huntsman,SPI,BASF,United Coatings,Technical Urethanes

Categories

  • Consumer Research
  • Data Analysis
  • Data Collection
  • Industry Research
  • Latest News
  • Market Insights
  • Marketing Research
  • Survey Research
  • Uncategorized

Recent Posts

  • Ipsos Revolutionizes the Global Market Research Landscape
  • How Machine Learning has impacted Consumer Behaviour and Analysis
  • Market Research: The Ultimate Weapon for Business Success
  • Privacy Policy
  • Terms of Use
  • Antispam
  • DMCA

Copyright © 2024 Globalresearchsyndicate.com

Welcome Back!

Login to your account below

Forgotten Password?

Retrieve your password

Please enter your username or email address to reset your password.

Log In
This website uses cookies to improve your experience. We'll assume you're ok with this, but you can opt-out if you wish. Cookie settingsACCEPT
Privacy & Cookies Policy

Privacy Overview

This website uses cookies to improve your experience while you navigate through the website. Out of these cookies, the cookies that are categorized as necessary are stored on your browser as they are essential for the working of basic functionalities of the website. We also use third-party cookies that help us analyze and understand how you use this website. These cookies will be stored in your browser only with your consent. You also have the option to opt-out of these cookies. But opting out of some of these cookies may have an effect on your browsing experience.
Necessary
Always Enabled
Necessary cookies are absolutely essential for the website to function properly. This category only includes cookies that ensures basic functionalities and security features of the website. These cookies do not store any personal information.
Non-necessary
Any cookies that may not be particularly necessary for the website to function and is used specifically to collect user personal data via analytics, ads, other embedded contents are termed as non-necessary cookies. It is mandatory to procure user consent prior to running these cookies on your website.
SAVE & ACCEPT
No Result
View All Result
  • Latest News
  • Consumer Research
  • Survey Research
  • Marketing Research
  • Industry Research
  • Data Collection
  • More
    • Data Analysis
    • Market Insights

Copyright © 2024 Globalresearchsyndicate.com