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Introduction to
Business Analytics
1
• Analytics is a field which combines following into one -
1. Data,
2. Information technology,
3. Statistical analysis,
4. Quantitative methods and
5. Computer-based models
• This all are combined to provide decision makers all the
possible scenarios to make a well thought and
researched decision.
2
Meaning of Business Analytics
3
• Business analytics (BA) refers to
– “The skills, technologies, practices for continuous
developing new insights and understanding of business
performance based on data and statistical methods”.
– “the practice of exploration of an organization’s data with
emphasis on statistical analysis. Business analytics is used
by companies committed to data-driven decision making.
– “The statistical analysis of the data a business has
acquired in order to make decisions that are based
on evidence rather than a guess”.
– “A combination of data analytics, business
intelligence and computer programming. It is the
science of analysing data to find out patterns that
will be helpful in developing strategies”
4
Evolution of Business
Analytics
5
• Business analytics has been existence since very long time and has
evolved with availability of newer and better technologies.
• It has its roots in operations research, which was extensively used during
World War II. Operations research was an analytical way to look at data to
conduct military operations.
• Over a period of time, this technique started getting utilized for business.
Here operation’s research evolved into management science. Again, basis
for management science remained same as operation research in data,
decision making models, etc.
• As the economies started developing and companies
became more and more competitive, management
science evolved into-
– Business intelligence,
– Decision support systems and into
– PC software.
6
SIGNIFICANCE AND USAGES
OF BUSINESS ANALYITCS
7
when and where
• To make data-driven decisions
• Converts available data into valuable information.
• Eliminate guesswork
• Get faster answer to questions
• Get insight into customer behavior
• Get key business metrics reports
needed
• It impacts functioning of the whole organization. And
hence, can-
– Improve profitability of the business
– Increase market share and revenue and
– Provide better return to a shareholder
– Reduce overall cost
– Sustain in competition
– Monitor KPIs (Key Performance Indicators) and
– React to changing trends in real time
8
CHALLANGES FOR BUSINESS
ANALYITCS
 Business analytics depends on sufficient volumes of high
quality data.
 The difficulty in ensuring data quality.
 Data warehousing require a lot more storage space than
it did speed.
 Business analytics is becoming a tool that can influence
the outcome of customer interactions.
9
• Technology infrastructure and tools must be able to
handle the data and Business Analytics processes.
• Organizations should be prepared for the changes
that Business Analytics bring to current business and
technology operations.
Dr. Amitabh Mishra 10
Scope of Business Analytics
Dr. Amitabh Mishra 11
a wide range of
• Business analytics has
application and usages-
– Descriptive analysis
– Predictive analysis
– Prescriptive analysis
Descriptive Analysis
Dr. Amitabh Mishra 12
• This branch of Business Analytics analyses and finds
answer to the question-
“What has happened in the past?”.
• Descriptive analysis/ statistics performs the function
of “describing” or summarizing raw data to make it
easily understandable and interpretable by humans.
Predictive Analytics
13
• This branch of Business Analytics, uses forecasting
techniques and statistical models to find out-
What is going to happen in future?
• Predictive analysis helps us in predicting the future
course of events and taking necessary measures for the
same.
• Predictive analysis employ-
– Predictive modelling and Machine learning techniques.
• Predictive modeling uses statistics to predict outcomes.
• Machine learning(ML) statistical is the scientific
study of algorithms and models that computer systems use to
perform a specific task without using explicit instructions, relying
on patterns and inference instead. Machine learning algorithms
build a mathematical model based on sample data, known in order
to make predictions or decisions without being explicitly
programmed to perform the task.
14
Prescriptive Analytics
15
• This branch of Analytics, makes use of optimization and simulation
algorithms to find answer to the question-
“What should we do?”.
• Prescriptive Analysis is used to give advices on possible outcomes.
• This is a relatively new field of analytics that allows users to
recommend several different possible solutions to the problem and
to guide them about the best possible course of action.
USERS OF BUSINESS
ANALYITCS
16
1. Students
2. Business man
3. Accountants and Auditors
4. Organization/Companies/Group of industries/
Small firm
MAIN SOFTWARE USED FOR
BUSINESS ANALYITCS
17
1. MS-EXCEL
2. SPSS
3. R
4. SAS
5. E-views
• SPSS-
– SPSS Statistics is a software package used for statistical
analysis. Long produced by SPSS Inc., it was acquired by
IBM in 2009. The current versions (2014) are officially
named IBM SPSS Statistics.
• MS-EXCEL-
– Microsoft Excel is a spreadsheet application developed by
Microsoft for Microsoft Windows. It features calculation,
graphing tools, pivot tables, and a macro programming
language called Visual Basic for Applications.
18
MS-EXCEL in Business
Analytics
19
– Microsoft Excel is a spreadsheet application
developed by Microsoft for Microsoft Windows.
– It features
• Calculation,
• Graphing tools,
• Pivot tables, and
• A macro programming language called Visual Basic
The Business Analytic Process
20
Components of Business
Analytics
21
Components of
Business Analytics
• There are 6 major components/categories in
any analytics solution:
Data Mining
Text Mining
Forecasting
Predictive Analytics
Optimization
Visualization
• Data Mining – Create models by uncovering previously
unknown trends and pattern in vast amounts of data e.g.
detect insurance claims frauds, Retail Market basket
analysis.
• There are various statistical techniques through which data
mining is achieved.
– Classification (when we know on which variables to classify the
data e.g. age, demographics)
– Regression
– Clustering (when we don’t know on which factors to classify
data)
– Associations & Sequencing Models 22
• Text Mining – Discover and extract meaningful
patterns and relationships from text
collections. E.g.
– Understand sentiments of Customers on social
media sites like Twitter, Face book, Blogs, Call
centre scripts etc. which are used to improve the
Product or Customer service or understand how
competitors are doing.
23
• Forecasting – Analyze & forecast processes that take place
over the period of time. E.g.
– Predict seasonal energy demand using historical trends,
– Predict how many ice creams cones are required considering
demand
and deploy
• Predictive Analytics – Create, manage
predictive scoring models. E.g.
– Customer churn & retention,
– Credit Scoring,
– Predicting failure in shop floor machinery
24
• Optimization– Use of simulations techniques to
identify scenarios which will produce best results.
E.g.
– Sale price optimization,
– Identifying optimal Inventory for maximum fulfilment
& avoid stock outs.
• Visualization– Enhanced exploratory data
analysis & output of modelling results with highly
interactive statistical graphics.
25
26

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1-210217184339.pptx

  • 2. • Analytics is a field which combines following into one - 1. Data, 2. Information technology, 3. Statistical analysis, 4. Quantitative methods and 5. Computer-based models • This all are combined to provide decision makers all the possible scenarios to make a well thought and researched decision. 2
  • 3. Meaning of Business Analytics 3 • Business analytics (BA) refers to – “The skills, technologies, practices for continuous developing new insights and understanding of business performance based on data and statistical methods”. – “the practice of exploration of an organization’s data with emphasis on statistical analysis. Business analytics is used by companies committed to data-driven decision making.
  • 4. – “The statistical analysis of the data a business has acquired in order to make decisions that are based on evidence rather than a guess”. – “A combination of data analytics, business intelligence and computer programming. It is the science of analysing data to find out patterns that will be helpful in developing strategies” 4
  • 5. Evolution of Business Analytics 5 • Business analytics has been existence since very long time and has evolved with availability of newer and better technologies. • It has its roots in operations research, which was extensively used during World War II. Operations research was an analytical way to look at data to conduct military operations. • Over a period of time, this technique started getting utilized for business. Here operation’s research evolved into management science. Again, basis for management science remained same as operation research in data, decision making models, etc.
  • 6. • As the economies started developing and companies became more and more competitive, management science evolved into- – Business intelligence, – Decision support systems and into – PC software. 6
  • 7. SIGNIFICANCE AND USAGES OF BUSINESS ANALYITCS 7 when and where • To make data-driven decisions • Converts available data into valuable information. • Eliminate guesswork • Get faster answer to questions • Get insight into customer behavior • Get key business metrics reports needed
  • 8. • It impacts functioning of the whole organization. And hence, can- – Improve profitability of the business – Increase market share and revenue and – Provide better return to a shareholder – Reduce overall cost – Sustain in competition – Monitor KPIs (Key Performance Indicators) and – React to changing trends in real time 8
  • 9. CHALLANGES FOR BUSINESS ANALYITCS  Business analytics depends on sufficient volumes of high quality data.  The difficulty in ensuring data quality.  Data warehousing require a lot more storage space than it did speed.  Business analytics is becoming a tool that can influence the outcome of customer interactions. 9
  • 10. • Technology infrastructure and tools must be able to handle the data and Business Analytics processes. • Organizations should be prepared for the changes that Business Analytics bring to current business and technology operations. Dr. Amitabh Mishra 10
  • 11. Scope of Business Analytics Dr. Amitabh Mishra 11 a wide range of • Business analytics has application and usages- – Descriptive analysis – Predictive analysis – Prescriptive analysis
  • 12. Descriptive Analysis Dr. Amitabh Mishra 12 • This branch of Business Analytics analyses and finds answer to the question- “What has happened in the past?”. • Descriptive analysis/ statistics performs the function of “describing” or summarizing raw data to make it easily understandable and interpretable by humans.
  • 13. Predictive Analytics 13 • This branch of Business Analytics, uses forecasting techniques and statistical models to find out- What is going to happen in future? • Predictive analysis helps us in predicting the future course of events and taking necessary measures for the same.
  • 14. • Predictive analysis employ- – Predictive modelling and Machine learning techniques. • Predictive modeling uses statistics to predict outcomes. • Machine learning(ML) statistical is the scientific study of algorithms and models that computer systems use to perform a specific task without using explicit instructions, relying on patterns and inference instead. Machine learning algorithms build a mathematical model based on sample data, known in order to make predictions or decisions without being explicitly programmed to perform the task. 14
  • 15. Prescriptive Analytics 15 • This branch of Analytics, makes use of optimization and simulation algorithms to find answer to the question- “What should we do?”. • Prescriptive Analysis is used to give advices on possible outcomes. • This is a relatively new field of analytics that allows users to recommend several different possible solutions to the problem and to guide them about the best possible course of action.
  • 16. USERS OF BUSINESS ANALYITCS 16 1. Students 2. Business man 3. Accountants and Auditors 4. Organization/Companies/Group of industries/ Small firm
  • 17. MAIN SOFTWARE USED FOR BUSINESS ANALYITCS 17 1. MS-EXCEL 2. SPSS 3. R 4. SAS 5. E-views
  • 18. • SPSS- – SPSS Statistics is a software package used for statistical analysis. Long produced by SPSS Inc., it was acquired by IBM in 2009. The current versions (2014) are officially named IBM SPSS Statistics. • MS-EXCEL- – Microsoft Excel is a spreadsheet application developed by Microsoft for Microsoft Windows. It features calculation, graphing tools, pivot tables, and a macro programming language called Visual Basic for Applications. 18
  • 19. MS-EXCEL in Business Analytics 19 – Microsoft Excel is a spreadsheet application developed by Microsoft for Microsoft Windows. – It features • Calculation, • Graphing tools, • Pivot tables, and • A macro programming language called Visual Basic
  • 20. The Business Analytic Process 20
  • 21. Components of Business Analytics 21 Components of Business Analytics • There are 6 major components/categories in any analytics solution: Data Mining Text Mining Forecasting Predictive Analytics Optimization Visualization
  • 22. • Data Mining – Create models by uncovering previously unknown trends and pattern in vast amounts of data e.g. detect insurance claims frauds, Retail Market basket analysis. • There are various statistical techniques through which data mining is achieved. – Classification (when we know on which variables to classify the data e.g. age, demographics) – Regression – Clustering (when we don’t know on which factors to classify data) – Associations & Sequencing Models 22
  • 23. • Text Mining – Discover and extract meaningful patterns and relationships from text collections. E.g. – Understand sentiments of Customers on social media sites like Twitter, Face book, Blogs, Call centre scripts etc. which are used to improve the Product or Customer service or understand how competitors are doing. 23
  • 24. • Forecasting – Analyze & forecast processes that take place over the period of time. E.g. – Predict seasonal energy demand using historical trends, – Predict how many ice creams cones are required considering demand and deploy • Predictive Analytics – Create, manage predictive scoring models. E.g. – Customer churn & retention, – Credit Scoring, – Predicting failure in shop floor machinery 24
  • 25. • Optimization– Use of simulations techniques to identify scenarios which will produce best results. E.g. – Sale price optimization, – Identifying optimal Inventory for maximum fulfilment & avoid stock outs. • Visualization– Enhanced exploratory data analysis & output of modelling results with highly interactive statistical graphics. 25
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