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An Overview of Predictive Analytics - MachinePulse

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Predictive analytics is the practice of extracting insights from the existing data set with the help data mining, statistical modeling and machine learning techniques and using it to predict unobserved/unknown events. MachinePulse offers end to end IoT hardware and software solutions for any requirement. They deploy solutions which enable our customers to breeze through Big Data with ease, which can help you optimize your business. Visit here to know more: – PowerPoint PPT presentation

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Title: An Overview of Predictive Analytics - MachinePulse


1
Predictive Analytics - An overview
  • Vijaykumar Adamapure
  • MachinePulse.

2
Agenda
  • Introduction to Big Data.
  • What is Analytics?
  • Overview of Predictive Analytics Techniques.
  • Business Applications of Predictive Analytics.
  • Predictive Analytics Tools in Market.

3
Gartner Hype Cycle
4
Things That Happen On Internet Every Sixty Seconds
5
Things That Happen Every Sixty Seconds
6
The 5 V's of Big Data
  • Big data is high-volume, high-velocity and
    high-variety information assets that demand
    cost-effective, innovative forms of information
    processing for enhanced insight and decision
    making.

7
Survey on Big Data Adoption Stages
8
What is Analytics?
9
Data Analysis OSEMN Process
  • OSEMN is an acronym that rhymes with awesome

Obtain Data
Scrub Data
Explore Data
Model Data
iNterpret Results
10
What is Predictive Analytics?
  • Predictive analytics is the practice of
    extracting insights from the existing data set
    with the help data mining, statistical modeling
    and machine learning techniques and using it to
    predict unobserved/unknown events.
  • Identifying cause-effect relationships across the
    variables from the historical data.
  • Discovering hidden insights and patterns with the
    help of data mining techniques.
  • Apply observed patterns to unknowns in the Past,
    Present or Future.

11
Predictive Analytics Process Cycle
12
Common Predictive Analytics Methods
  • Regression
  • Predicting output variable using its
    cause-effect relationship with input variables.
    OLS Regression, GLM, Random forests, ANN etc.
  • Classification
  • Predicting the item class. Decision Tree,
    Logistic Regression, ANN, SVM, Naïve Bayes
    classifier etc.
  • Time Series Forecasting
  • Predicting future time events given past
    history. AR, MA, ARIMA, Triple Exponential
    Smoothing, Holt-Winters etc.

13
Common Predictive Analytics Methods (Contd.)
  • Association rule mining
  • Mining items occurring together. Apriori
    Algorithm.
  • Clustering
  • Finding natural groups or clusters in the data.
    K-means, Hierarchical, Spectral, Density based EM
    algorithm Clustering etc.
  • Text mining
  • Model and structure the information content of
    textual sources. Sentiment Analysis, NLP

14
Evaluating Predictive Models
  • Need to check predictive models out of sample
    performance.
  • Model Assessment Hit Rate, Gini Coefficient, K-S
    Chart, Confusion Matrix, ROC Curve, Lift Chart,
    Gain Chart etc.

15
Business Applications of Predictive Analytics
Renewable Energy
Multi-channel sales
Finance
Smarter Healthcare
Factory Failures
Telecom
Traffic Control
Spam Filters
Manufacturing
Trading Analytics
Fraud and Risk
Retail Churn
16
Business Applications (Contd.)
  • Supply Chain
  • Simulate and optimize supply chain flows to
    reduce inventory.
  • Customer Profiling
  • Identify high valued customers and retain their
    loyalty.
  • Pricing
  • Identify the optimal price which will increase
    net profit.
  • Human Resources
  • Best Employees selection for particular tasks at
    optimal compensation. Employee churn retention.

17
Business Applications (Contd.)
  • Renewable Energy
  • Energy forecasting, electricity price
    forecasting, Predictive Maintenance, Operational
    cost minimization.
  • Financial Services
  • Approval of credit cards/ loan applications
    based on credit scoring models, Options pricing,
    Risk analysis etc.
  • E-Commerce
  • Identify cross-sell and upsell opportunities,
    increase transactions size, maximize campaign's
    response based CRM data.

18
Business Applications (Contd.)
  • Product Quality Control
  • Detect product quality issues in advance and
    prevent them.
  • Revenue Performance
  • Identify key drivers of revenue generation and
    optimization of revenue.
  • Fraud and Crime Detection
  • Detect fraud , criminal activity, insurance
    claims, tax evasion and credit card frauds.
  • HealthCare
  • Identify prevalence of particular disease to a
    patient based health conditions.

19
Predictive Analytics Tools in Market
20
Thank you!Visit http//www.machinepulse.comEma
il sales_at_machinepulse.com
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