Top of Page

Figure 1. The scientific method is a way to get insights from your data

Getting Insights Using Data Science Skills and the Scientific Method

IBM is hosting their IBM Insight event next week in Las Vegas. The event will, no doubt, help companies understand how to use analytics to get insight from their data. I will be attending the event as their guest and will be sharing what I learn via social media. As a first step in sharing my knowledge about how to get insight from data, IBM asked me what I thought about the role of the data scientist in the Insight Economy. Generally speaking, I think that the role of data scientists is to extract value from data. Data scientists’ work helps improve how humans make decisions and how algorithms optimize outcomes. Through the collection, analysis and interpretation of data, data scientists extract empirically-based insights that augment and enhance how humans and algorithms work. Let me take a closer look how how businesses can get insight from their data.

Generating Insights: The Scientific Method

Figure 1. The scientific method is a way to get insights from your data

Figure 1. The scientific method is a way to get insights from your data

Scientists have been getting insight from data for centuries using the scientific method. Formally defined, the scientific method is a body of techniques for objectively investigating phenomena, acquiring new knowledge, or correcting and integrating previous knowledge. The scientific method includes the collection of empirical evidence, subject to specific principles of reasoning. The scientific method follows these general steps:

  1. Formulate a question or problem statement
  2. Generate a hypothesis that is testable
  3. Gather/Generate data to understand the phenomenon in question. Data can be generated through experimentation; when we can’t conduct true experiments, data are obtained through observations and measurements.
  4. Analyze data to test the hypotheses / Draw conclusions
  5. Communicate results to interested parties or take action (e.g., change processes) based on the conclusions. Additionally, the outcome of the scientific method can help us refine our hypotheses for further testing.

Despite the idea that Big Data will kill the need for theory and the scientific method, the human element is necessarily involved in the generation, collection and interpretation of data. Consider the overestimation that Google Flu Trends made regarding flu rates in 2012. More data will not magically give you better answers. The application of the scientific method helps us be honest with ourselves and minimizes the chances of us arriving at the wrong conclusion. The scientific method plays a critical role in understanding any data, irrespective of their size or speed or variety.

As Carl Sagan said, “Science is a way of thinking much more than it is a body of knowledge.” The scientific method is a way to help us understand how the world really works. To be of real, long-term value to business, analytics needs to be about understanding the causal links among the variables. Through trial and error, the scientific method helps shed light on identifying the reasons why variables are related to each other and the underlying processes that drive the observed relationships.

The Structure of Data Science Skills

datascienceblogskillsproficiency

Figure 2. 25 data science skills

We recently conducted a survey of over 500+ data professionals regarding data science skills. We asked these data professionals to rate their proficiency across 25 skills conventionally thought to be important in the field of data science (see Figure 2). While these 25 skills were logically divided into five distinct categories (Business, Technology, Programming, Math & Modeling and Statistics), a factor analysis of the 25 skills resulted in a clear three-factor solution, suggesting that the 25 skills can be grouped into three broad skill areas: 1) Business, 2) Technology / Programming and 3) Statistics / Math.

Figure 1. Application...

Figure 3. Application of the Scientific Method in a Big Data World Requires the Use of All Three Data Science Skills

When I map the three data science skills against the five steps of the scientific method, it’s clear why data science skills are so important in extracting insight from data. As you can see in Figure 3, proficiency in each of the three data science skills is required to successfully implement the scientific method as a way to get insights from data. Business knowledge is necessary to help formulate the right questions, generate hypotheses, gather data and communicate results. Technology/Programming skills are needed to gather/generate data and analyze data/test hypotheses. Finally, Statistics/Math skills are necessary to gather data, analyze data/test hypotheses and communicate results.

Figure 1.

Figure 4. Different types of data scientists (e.g., job role) have strengths in different skill areas.

No single data professional is an expert in all skill areas. Because data professionals tend to be very competent in one skill area, it’s imperative that data science teams have different types of data scientists, each addressing specific steps of the scientific method. We looked at four different types of data scientists: 1) business management, 2) developer, 3) creative and 4) researcher and found that each type of data scientist has strengths in different skill areas (see Figure 4).

Summary

In our Big Data world, businesses have access to a lot of data. They can extract useful insight from their data by following the scientific method. To do so, they need to employ different types of data professionals who have complementary skills that address each of the five steps of the scientific method: 1) formulate the problem, 2) generate hypotheses, 3) gather data, 4) analyze data and 5) communicate results. Organizations that adopt the scientific method will be better able to make sense of their data to help them understand how their business really works.

, ,

Trackbacks/Pingbacks

  1. Big Data 2016: Top 100 Influencers and Brands - January 17, 2017

    […] better to think of data science as a way of thinking, a way to extract insights using the scientific method. The data science way of thinking requires three different types of skills: 1) subject matter […]

  2. How can data scientists collaborate to build better business applications? - Clouds of Big Data - June 11, 2016

    […] support, effort and cohesion. Toward that end, I recommend data science team members review the scientific method to organize their collective efforts to extract insights from data. Additionally, while many […]

  3. How can data scientists collaborate to build better business applications? - CloudJocks - June 11, 2016

    […] support, effort and cohesion. Toward that end, I recommend data science team members review the scientific method to organize their collective efforts to extract insights from data. Additionally, while many […]

  4. improving Gender Diversity in Data Science | @bobehayes - January 20, 2016

    […] and more. We have learned much about the structure and practice of data science (see here, here and here). Here, I will present some of our research on gender differences among data […]

  5. Data Scientists and the Practice of Data Science | ContentMarketing - November 18, 2015

    […] in data to help make better decisions. I offered a more complete answer to that question in a prior post. Today, I want to share some more thoughts about other areas of the field of data science that we […]

  6. Data Scientists and the Practice of Data Science | AdsenseDashboard - November 18, 2015

    […] in data to help make better decisions. I offered a more complete answer to that question in a prior post. Today, I want to share some more thoughts about other areas of the field of data science that we […]

  7. Data Science is a Way of Thinking | @bobehayes - November 16, 2015

    […] in data to help make better decisions. I offered a more complete answer to that question in a prior post. Today, I want to share some more thoughts about other areas of the field of data science that we […]

  8. Getting Insights Using Data Science Skills and ... - November 5, 2015

    […] IBM is hosting their IBM Insight event next week in Las Vegas. The event will, no doubt, help companies understand how to use analytics to get insight from their data. I will be attending the event as their guest and will be sharing what I learn via social media.  […]

bob@businessoverbroadway.com | 206.372.5990

UA-23043697-1