Here is an excerpt from the transcript of a podcast during which Sasha Vesuvala , Nicholas Northcote, and Sean Brown discuss how to Improve strategic outcomes with advanced analytics for the McKinsey Quarterly, published by McKinsey & Company. To read the complete article, check out others, learn more about the firm, and sign up for email alerts, please click here.
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The third application is reducing bias in decision making. By using historical data about the strategic moves and performance of thousands of companies, business leaders can calibrate the likelihood of a strategy succeeding before allocating resources to it. For example, if you are planning a transformative merger, knowing that 70 percent of large acquisitions in the past decade destroyed value could be helpful. It would give you a fact base to challenge and stress-test the plan by asking questions like, what makes us different? Are we overestimating returns or synergies? What would it take to get execution right? The last one is using analytics to anticipate complex market dynamics. Tools such as agent-based modeling can help you understand how the actions of customers, competitors, regulators, and other market players could combine to affect demand, supply, and prices, allowing you to extract proprietary insights.
Sean Brown: Sagie, your company has developed an AI tool that mines online information for insights about trends, product applications, and business ideas. What inspired you to build SparkBeyond?
Sagie Davidovich: Less than a decade ago, it would be borderline impossible to build a machine that mines the web, which contains hundreds of billions of pages that include all sorts of documents, from patents and clinical trials to news publications and Wikipedia. But the web is imperfect. It is full of biases, contradictions, outdated or partial information, as well as inconsistencies in formats. We wanted to build a machine that could read the web, connect the dots, and synthesize insights, providing answers to complex research questions and creating coherent, holistic, and data-driven decision support. That was the journey we started a couple of years ago, and the partnership with McKinsey has helped us discover a new universe of applications.
Sean Brown: What types of problems or questions have clients used SparkBeyond to address?
Sagie Davidovich: Anything from discovering novel applications for existing chemicals or products to finding root causes of outcomes by identifying cause-and-effect relationships that exist on the web. In our work with pharma companies, there is a fascinating application around discovering pathways from a certain gene to a particular disease. While the results of these analyses may not appear in any single scientific article, by connecting the dots, we can uncover the path and make serendipitous discoveries. Another arena of applications relates to sustainable development goals, such as addressing the climate crisis, discovering how to drive sustainable agriculture, or fighting child detention through our pro bono work with NGOs and governments. When you have the web in a box, the universe of applications is quite unlimited.
Sean Brown: Sasha, you recently worked with a company that used SparkBeyond to answer some very specific strategic questions. What was the problem the company was trying to solve?
Sasha Vesuvala: It was a private-equity-owned materials company that specializes in superhard materials, and the challenge for it was growth. When we broke the problem down, we realized there were three issues within it. First, superhard materials is a constantly evolving space and it was important for this company to keep tabs on the next set of trending superhard materials so it could anticipate the industry’s and its customers’ changing requirements. The second question was, “We know X, Y, Z applications and, therefore, A, B, C customer segments for the materials we focus on. But are there niche applications out there that we do not know about or completely different customers segments for our materials?” This could present an opportunity for margin-accretive growth because it might not require significant R&D investment but simply mean capitalizing on the existing materials and know-how.
Given that this was a private-equity-owned company, it had a certain runway to generate this growth from the standpoint of revenue and market-cap multiple. If there were materials or applications that were important but could not be built organically in a reasonable time, they were open to inorganic growth. This is a fragmented space, and there are many specialists in individual materials, so the third question for the company was, “How do we identify the universe of potential acquisition targets or partners?”
Sean Brown: How did the company envision using SparkBeyond to get those answers?
Sasha Vesuvala: I want to underscore that we do not believe these are solely technology-driven answers. When it is an expert-plus machine, when the human continues to apply judgment, that’s when you get ideas that make sense. On question number one—help me identify the next set of trending superhard materials—we could tell the platform to research such materials. Many of them show tremendous momentum in patents, and that can be a leading indicator before the materials become widely applied commercially. That information could come from publications, the news, or, if you are in pharma or healthcare, from clinical trials or grants. In this case, SparkBeyond searched materials such as boron tribromide and new processes being used to treat or create these superhard materials.
This helped us identify materials such as nanodiamonds that this company found of great interest. It was also interested in exploring new technologies and processes that could give it a head start. Think of it as being able to do thousands of expert calls in minutes. As long as the information is out there, the machine will find the answers because it can read incredibly fast at the level of a first-year university student. SparkBeyond differs from your traditional web search in that it does not return individual links that you need to click through but actually returns answers. We could also define the sources by, for example, telling the platform to focus only on patents and publications if we were interested in scientific information.
Sean Brown: So how did the company use the answers the search tool provided?
Sasha Vesuvala: The next important question was about what these materials were used for. There were about 10,000 applications for the 78 materials we picked, which is obviously too many. The company was aware of classic applications, such as cutting or weight-resistant tools, but it had not considered biomedical applications for its products. For example, some of these superhard materials are used in hip joints, dental drills, and dental implants. Additionally, some materials have additional properties. Some happen to be incredibly porous and have applications in, for example, CO2 scrubbing. We were able to come up with 30 to 35 ideas that the company thought were relevant and wanted to evaluate.
We also asked the platform, “Who produces these products?”—companies that could be potential partners or acquisition targets. On the first pass, the platform generated a long list of 1,800-plus producers globally, including in some markets where the company was interested in making inroads, particularly in Asia.
Sean Brown: What share of the applications that the company focused on were new?
Sasha Vesuvala: Conservatively, 60 to 70 percent of applications that the company prioritized were new, and it had not considered them in the past. Now, the sources of all these insights are on the web, in patents, or journals, but not necessarily in journals that a traditional hard-materials R&D scientist or business-development manager looks at.
Sean Brown: Very interesting. Let’s move on to another area where advanced analytics help with strategy development. Nic, how do executives use analytics tools to reduce bias in strategic decisions?
Nicholas Northcote: One of the greatest difficulties with strategy is that human behavior, whether consciously or not, often gets in the way of good choices. We call this the social side of strategy, and there are two parts to it. The first is the fact that strategy is the wrong problem for human brains. We are dealing with novel decisions under uncertainty, and this is fertile ground for cognitive biases—everything from overconfidence in our abilities to anchoring on what worked in the recent past to being overly optimistic or unduly risk averse. These biases can lead us to form skewed judgments. The second part of the social side is that strategy is exactly the right problem for human games. Everyone has their own financial, career, and emotional incentives. When these incentives are not aligned with the company’s goals, it leads to behaviors that are not conducive to choices that maximize shareholder value. Additionally, strategy discussions often become battles for resources, where getting a plan approved is more important than debating strategic assumptions or alternatives.
Sean Brown: So how can advanced analytics help overcome these biases?
Nicholas Northcote: In three words, the outside view. The idea was originally proposed by world-famous psychologist and Nobel laureate Daniel Kahneman and his research partner Amos Tversky. They noticed what they called the planning fallacy: the fact that even experienced planners are overly optimistic in their forecasts for some of the reasons I mentioned before. For example, when building a business plan for a capital project or an acquisition, even experienced people underestimate costs, overestimate revenues or synergies, and therefore overestimate returns. Kahneman and Tversky argued, and proved, that by complementing project-specific projections, or business cases, with external data from a distribution of outcomes in similar cases, one can combat the overoptimism.
This can be done in strategy, too. By studying historical data from thousands of companies that describe their strategic initiatives and performance, you can understand the likelihood of a strategy succeeding. This view can reveal that your plan may be too optimistic—in other words, few companies achieved the outcomes you want—which you can use as a fact base to motivate bigger, bolder moves to meet your aspiration or alternately reduce your performance expectations.
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Here is a direct link to the complete article.
Sagie Davidovich is the cofounder and CEO of SparkBeyond; Nicholas Northcote is an alumnus of McKinsey’s Brussels office; and Sasha Vesuvala is an associate partner in the Mumbai office. Sean Brown, global director of communications for the Strategy and Corporate Finance practice, is based in Boston.