This interactive, applications-driven will highlight the added value that data analytics can offer a professional as a decision support tool in management decision making. It will show the use of data analytics to support strategic initiatives; to inform on policy information; and to direct operational decision making. The course will emphasize applications of data analytics in management practice; focus on the valid interpretation of data analytics findings; and create a clearer understanding of how to integrate quantitative reasoning into management decision making. Exposure to the discipline of data analytics will ultimately promote greater confidence in the use of evidence-based information to support management decision making.
By the end of this course delegates will be able to:
- Appreciate data analytics in a decision support role
- Explain the scope and structure of data analytics
- Apply a cross-section of useful data analytics
- Interpret meaningfully and critically assess statistical evidence
- Identify relevant applications of data analytics in practice
Setting the Statistical Scene in Management
Competency Description: As a manager you need to develop quantitative reasoning skills to support evidence-based decision making.
Key behaviors:
- Appreciate the role of data analytics in management decision making
- Understand the scope and structure of data analytics
- Understand the importance of data quality and data integrity
- Develop a practical ability to prepare data for statistical analysis
- Be able to interpret summary tables and graphs to extract key information
Topics to be covered:
- Introduction: The quantitative landscape in management
- Thinking statistically about applications in management (identifying KPIs)
- The integrative elements of data analytics
- Data: The raw material of data analytics (types, quality and data preparation)
- Exploratory data analysis using excel (pivot tables)
- Using summary tables and visual displays to profile sample data
Evidence-based Observational Decision Making
Competency Description: As a manager you need to interpret summarized numerical sample evidence to support management decision making.
Key behaviors:
- Be able to interpret numeric sample descriptive measures to profile sample evidence
- Distinguish between different central location measures
- Understand how to quantify and interpret variability in data
- Recognize data outliers and their impact on data validity
- Identify influencing factors on key measures performance
Topics to be covered:
- Numeric descriptors to profile numeric sample data
- Central and non-central location measures
- Quantifying dispersion in sample data
- Examine the distribution of numeric measures (skewness and bimodal)
- Exploring relationships between numeric descriptors
- Breakdown analysis of numeric measures
Statistical Decision Making – Drawing Inferences from Sample Data
Competency Description: As a manager you need to distinguish between chance and genuine occurrences or relationships in practice based on sample evidence.
Key behaviors:
- Appreciate the fundamental concepts to infer sample evidence to business practice
- Understand how to manage (measure and interpret) business uncertainty
- Prepare and interpret confidence interval estimates of key performance measures
Topics to be covered:
- The foundations of statistical inference
- Quantifying uncertainty in data – the normal probability distribution
- The importance of sampling in inferential analysis
- Sampling methods (random-based sampling techniques)
- Understanding the sampling distribution concept
- Confidence interval estimation
Testing Statistical Decision Making – Drawing Inferences from Hypotheses
Competency Description: As a manager you need to demonstrate an ability to base management decisions on rigorously tested sample evidence.
Key behaviors:
- Be able to formulate management questions as testable statistical hypotheses
- Understand the principle and methodology of testing statistical hypotheses
- Be able to interpret statistical hypotheses conclusions in a management context
- Choose the appropriate hypotheses test for on a given management scenario
Topics to be covered:
- The rationale of hypotheses testing
- The hypothesis testing process and types of errors
- Single population tests (tests for a single mean)
- Two independent population tests of means
- Matched pairs test scenarios
- Comparing means across multiple populations
Predictive Decision Making - Statistical Modeling and Data Mining
Competency Description: As a manager you need to prepare forecasts or future estimates of key performance measures based on identified influencing factors.
Key behaviors:
- Understand the model-building environment
- Be able to identify significant influencing factors on a key performance measure
- Interpret the relative importance of each significant factor on the key performance measure
- Prepare future estimates / forecasts based on the identified relationships
- Appreciate the strategic value of mining large data sets of business activities
- Distinguish between goal-directed data mining and descriptive data mining
Topics to be covered:
- Exploiting statistical relationships to build prediction-based models
- Model building using regression analysis
- Model building process – the rationale and evaluation of regression models
- Data mining overview – its evolution
- Descriptive data mining – applications in management
- Predictive (goal-directed) data mining – management applications
- Descriptive data mining – applications in management
This course is suitable to a wide range of professionals but will greatly benefit:
- Professionals in management support roles
- Analysts who typically encounter data / analytical information regularly in their work environment
- Those who seek to derive greater decision making value from data analytics