Cookies help us display personalized product recommendations and ensure you have great shopping experience.

By using this site, you agree to the Privacy Policy and Terms of Use.
Accept
SmartData CollectiveSmartData Collective
  • Analytics
    AnalyticsShow More
    data analytics for pharmacy trends
    How Data Analytics Is Tracking Trends in the Pharmacy Industry
    5 Min Read
    car expense data analytics
    Data Analytics for Smarter Vehicle Expense Management
    10 Min Read
    image fx (60)
    Data Analytics Driving the Modern E-commerce Warehouse
    13 Min Read
    big data analytics in transporation
    Turning Data Into Decisions: How Analytics Improves Transportation Strategy
    3 Min Read
    sales and data analytics
    How Data Analytics Improves Lead Management and Sales Results
    9 Min Read
  • Big Data
  • BI
  • Exclusive
  • IT
  • Marketing
  • Software
Search
© 2008-25 SmartData Collective. All Rights Reserved.
Reading: Predictive Analytics: 4 Primary Aspects of Predictive Analytics
Share
Notification
Font ResizerAa
SmartData CollectiveSmartData Collective
Font ResizerAa
Search
  • About
  • Help
  • Privacy
Follow US
© 2008-23 SmartData Collective. All Rights Reserved.
SmartData Collective > Analytics > Predictive Analytics > Predictive Analytics: 4 Primary Aspects of Predictive Analytics
AnalyticsPredictive Analytics

Predictive Analytics: 4 Primary Aspects of Predictive Analytics

Rehan Ijaz
Rehan Ijaz
5 Min Read
predictive analytics
Shutterstock Licensed Photo
SHARE

Predictive analytics, sometimes referred to as big data analytics, relies on aspects of data mining as well as algorithms to develop predictive models. These predictive models can be used by enterprise marketers to more effectively develop predictions of future user behaviors based on the sourced historical data.

Contents
  • 1. Data Sourcing
  • 2. Data Utility
  • 3. Deep Learning, Machine Learning, and Automation
  • 4. Objectives and Usage

These statistical models are growing as a result of the wide swaths of available current data as well as the advent of capable artificial intelligence and machine learning. The applications of predictive analytics are extensive and often require four key components to maintain effectiveness.

1. Data Sourcing

Fundamental to any aspect of data science, it’s difficult to develop accurate predictions or craft a decision tree if you’re garnering insights from inadequate data sources. That’s why, in any predictive analytics scenario, it’s critical that the data sources are capably and thoroughly vetted to ensure they are able to provide answers to high-level decision-making questions. Without big data in predictive analytics, these descriptive models can’t offer a competitive advantage or negotiate future outcomes.

During this stage, one of your best practices will be to identify data gaps in your outputs. You’ll also want to review the data’s regulatory components and privacy factors to determine the validity of a given source.

More Read

excel model failure
Don’t Gloat Over Excel Model Failures
Some thoughts on Next Generation Warranty Systems
IBM’s 2013 Vision Bodes Well for Finance
6 Amazing Cloud Based Data Modeling Tools to Try in 2017
How to Begin Analyzing Social Media

2. Data Utility

Once you’ve found the right data segments and you’re ready to develop a predictive analysis based on these large data sets, you need to determine exactly how useful your data is. For any marketing campaign or predictive analytics application, one of your better decisions may be to source information directly instead of relying on actionable insights provided by third parties. While third-party data can play a role in both optimization and conversions, it isn’t necessarily the most useful in the predictive analytics world. This can cause certain business problems with both your data points as well as your data analytics, web analytics, and response variable.

img

Regardless of your industry, whether it’s an enterprise insurance company, pharmaceuticals organization, or financial services provider, it could benefit you to gather your own data to predict future events. From a predictive analytics standpoint, you can be surer of its utility.

3. Deep Learning, Machine Learning, and Automation

Many business processes are trending towards the utility of the business intelligence sphere, especially where certain predictive analytics tools are concerned. However, many data scientists and business analysts can’t readily lean on automated regression techniques like logistic regression and linear regression. This stems, largely, from the fact that there are certain data regulations in place when it comes to marketing tech and predictive analytics software.

Few vendors have capably integrated some of these advanced analytics and data modeling features into their predictive analytics software since it’s difficult to regulate data automation compliance in real-time.

4. Objectives and Usage

Business users need to determine whether or not their predictive analytics are meeting key needs or if the raw data, customer responses, and analytics methods are providing false positives. Not only do you want to ensure that your predictive analytics tools are providing you with an accurate forecast after data preparation, but you also want to determine that you can correlate predictive analytics to your business objectives. Early adopters and practitioners that use past data and predictive analytics deployment without meeting key objectives are likely missing out on some of the key components of such a model.

img

On top of all of this, small businesses and enterprises alike need to understand that predictive analytics data sets are most effective not just for classification models or visualization but also for feature and service enhancement. Predictive models are sure to change the landscape or many businesses. From applying sensor data to using data points for smarter data analytics, there’s no telling just how much of an impact predictive models will have on countless industries.

Share This Article
Facebook Pinterest LinkedIn
Share
ByRehan Ijaz
Follow:
Rehan is an entrepreneur, business graduate, content strategist and editor overseeing contributed content at BigdataShowcase. He is passionate about writing stuff for startups. His areas of interest include digital business strategy and strategic decision making.

Follow us on Facebook

Latest News

intersection of data and patient care
How Healthcare Careers Are Expanding at the Intersection of Data and Patient Care
Big Data Exclusive
dedicated servers for ai businesses
5 Reasons AI-Driven Business Need Dedicated Servers
Artificial Intelligence Exclusive News
data analytics for pharmacy trends
How Data Analytics Is Tracking Trends in the Pharmacy Industry
Analytics Big Data Exclusive
ai call centers
Using Generative AI Call Center Solutions to Improve Agent Productivity
Artificial Intelligence Exclusive

Stay Connected

1.2kFollowersLike
33.7kFollowersFollow
222FollowersPin

You Might also Like

What Enterprises Can Learn from Major Events and Surprises in 2011

9 Min Read
data analytics with company cultures
Analytics

Company Cultures That Data-Driven Business Owners Can Learn Them

10 Min Read

New RockSolid product site

0 Min Read
Image
AnalyticsBig Data

Companies Can Do More With Big Data

4 Min Read

SmartData Collective is one of the largest & trusted community covering technical content about Big Data, BI, Cloud, Analytics, Artificial Intelligence, IoT & more.

AI and chatbots
Chatbots and SEO: How Can Chatbots Improve Your SEO Ranking?
Artificial Intelligence Chatbots Exclusive
data-driven web design
5 Great Tips for Using Data Analytics for Website UX
Big Data

Quick Link

  • About
  • Contact
  • Privacy
Follow US
© 2008-25 SmartData Collective. All Rights Reserved.
Go to mobile version
Welcome Back!

Sign in to your account

Username or Email Address
Password

Lost your password?