Effective Business Decisions Using Data Analysis

Course Info

Length: 1 Week

Type: Online

Available Dates

Fees

  • Apr-29-2024

    1,350

  • May-06-2024

    1,350

  • June-03-2024

    1,350

  • July-29-2024

    1,350

  • Aug-05-2024

    1,350

  • Sep-30-2024

    1,350

  • Oct-07-2024

    1,350

  • Nov-04-2024

    1,350

  • Dec-30-2024

    1,350

Course Details

Course Outline

5 days course

Setting the Scene and Observational Decision Making
 
  • Setting the Quantitative Scene
  • The Decision Support Role of Quantitative Methods in Management
  • "Thinking Statistically" about Applications in Business Practice
  • The Elements and Scope of Quantitative Management
  • Data and the importance of Data Quality
Evidence-based Observational Decision Making
 
  • 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

 

  • 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
Statistical Decision Making – Drawing Inferences from Hypotheses Testing
 
  • 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
 
  • 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

Course Video