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Business Analytics in Practice

Business Analytics in Practice

Presented as a webinar in Ultimatern event held by Universitas Multimedia Nusantara on April 24, 2021. This session is targeted at undergraduate students to give more illustrations of real-world cases before starting internship programmes in business analytics related role.

Elvyna Tunggawan

April 24, 2021
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  1. How do I get here? Sep 2012 - June 2016

    Undergraduate study in Information Systems June 2016 - Feb 2020 Data Scientist March - Nov 2020 Master of Professional Studies in Data Science Dec 2020 - present Data Scientist
  2. Business analytics is the process of using quantitative methods to

    derive meaning from data in order to make informed business decisions. Source: Business Analytics: What It Is & Why It's Important | HBS Online
  3. You’ve applied that as well • Deciding which smartphone to

    buy • Planning out travel itineraries • Choosing a major on the university • … and many more
  4. Companies also have similar questions • Marketing: ◦ Which marketing

    channel should we focus on? ◦ Will this marketing campaign increase our sales? • Business / product development: ◦ Will this kind of business attract a new customer segment? ◦ Should we provide more payment methods? • … and many more
  5. Source: • Dashboard examples: The good, the bad and the

    ugly • 10 Dashboard Design Errors And How To Avoid Them
  6. Before diving into the data, always start with question(s) 1.

    Understand the end goal 2. Understand the current situation 3. Explore, generate hypothesis, and formulate the solution
  7. Are these what you need? • Traffic • Time on

    page • Session duration • Bounce rate Beware of vanity metrics various numbers that may look satisfying, but do not answer or provide action items to the business
  8. Situation assessment So far, we frequently send promotion emails that

    include a banner image of a female. After conducting further user research, we figured out that most of our existing customers are females between 18 and 30 years old. Acknowledging the customers demographic, we think that using a banner image of a male might increase the click rate of the emails -- hence, increasing the potential customers in the website. How to evaluate this hypothesis? Illustration of banner images (Source: Digital Marketing Institute)
  9. Why don’t we just observe the historical data? It’s not

    that costly -- we already have the data! However, the data may not be comparable • The campaigns were conducted at a different point of time on different group of users • Subject to bias and confounding variable
  10. 1. What is the success criteria of the experiment? 2.

    Who is the subject of the experiment? 3. Do we have a particular target population? 4. How large is the required sample size to achieve a conclusion? It determines how long we should run the experiment Experiment design is important! Source: Udacity A/B Testing Course
  11. "Data is what you need to do analytics. Information is

    what you need to do business." - John Owen
  12. Useful learning resources • Avinash Kaushik's blog • Lean Analytics

    Book – Use data to build a better startup faster • Factfulness: Ten Reasons We're Wrong About the World – and Why Things Are Better Than You Think by Hans Rosling • Udacity A/B Testing Course
  13. Look for useful references and create a high-quality presentation Find

    funny memes to be included in the slides Credits: @DoraemonHariIni