Setting the right sales targets for employees is a difficult balancing act, with long-term consequences on growth and morale.
Setting a target too low, making it easily achievable, might cause an an employee to not put in the effort. Setting a target too high can be equally problematic. “Then there is no chance of meeting it,” says Doug J. Chung, MBA Class of 1962 Associate Professor of Business Administration in the Marketing unit at Harvard Business School. "The salesperson will be discouraged, and just as unlikely to work to their full potential."
Chung’s prime area of research lies in finding the sweet spot between these two undesirable outcomes, and determining how compensation can motivate salespeople best. In a recent Harvard Business Review article, Chung and several executives from the consulting firm McKinsey & Co explored a new way to thread that needle: using advanced analytics that incorporate artificial intelligence (AI).
“Chung has seen companies dramatically improve productivity after adopting advanced analytics to guide compensation.”
In an ideal world, a company would use trial and error to set the best sales targets for employees, experimenting until they hit the right formula. In reality, that’s problematic, says Chung.
“If you want to know if a compensation plan is working or not, you need to change the compensation plan and observe and measure the change in productivity, using a control group of employees that does not experience the change,” he says. “Firms typically don’t want to do that because once you change it, it’s very difficult to change it back. Also, experimenting with a select group of employees is deemed as unfair.”
Past performance doesn’t guarantee future returns
Most companies rely on past performance, setting an employee’s goal slightly higher than their sales for the previous year, a term known as “ratcheting the quotas.” But that, too, can have its drawbacks.
“Suppose I got over the quota by 20 percent, then my quota next year will be 120 percent of this year’s,” Chung says. That approach encourages employees to do only the minimum necessary to get their bonus, lest the company sets a too-high goal next year.
“An employee says I know I can do 120 percent, but I am not going to do it,” Chung says. “You are penalizing the high performers.”
Besides, a compensation plan that ratchets up slowly at a consistent rate, related to the firm’s growth objectives, only works in a stable market, in a stable industry, in a stable region. “That’s a lot of ‘ifs,’” Chung says.
Putting artificial intelligence to work
Artificial intelligence—an array of approaches that rely on computer systems and algorithms to handle human tasks—allows companies to use multiple variables to compute the best targets for employees, often in real time. Many companies have started using machine-learning algorithms to construct AI systems.
Such algorithms can take two forms:
- Supervised learning. In this approach, using labeled data, the algorithm learns to predict the outcome from the input data.
- Unsupervised learning. In this case, using unlabeled data, the algorithm learns the inherent structure from the input data.
Either machine learning approach is only as good as the humans who are setting the objectives and managing the data. Companies that succeed with AI tend to:
Consider the company’s broader goal. It’s important that the company first determine its overarching goal, Chung says. “It could be that we need to increase our revenue by 10 percent, even if we incur a loss, or it could be our revenues are fine, but we need to improve our profit,” he says.
For example, a US industrial service company was losing 20 percent of its customers every year. Through research, its leaders realized that when customers stayed with the company for six months, their odds of leaving declined. Reducing that churn became part of that company’s overall goal. “They put in a proxy that they wanted to not only acquire customers, but retain them as well.”
Identify and collect as much relevant data as possible. Once executives set an overall goal, they can feed data into an AI system that sets an individual goal for each employee. “The more data that goes in, the more accurate a prediction we can have,” Chung says.
Variables that companies might use include employee data, such as average and past year’s sales; macroeconomic indicators, such as GDP growth and consumer price index; and industry-specific measures, such as growth of competing companies or countries. Firms can also process and use unstructured data, such as text from documents.
“There is so much data we can use,” Chung says. “For example, average temperature—you may think it has nothing to do with sales, but if the temperature is too high, you don’t go into the field so often, so it does.”
Develop an algorithm that goes deep. Large firms may be able to design their own in-house machine learning algorithms to employ their AI system. Smaller firms can contract one of the many consulting companies that offers AI services.
Whatever route a company goes, the right algorithm will use the data to generate a number for each employee. That figure can include an overall target, as well as specific targets for each product line to maximize an employee’s productivity while striving towards the company’s overall goal. While this process is automated, field sales mangers might need to fine tune the final number.
From resistance to productivity
The success of using such a system, Chung says, depends on two things: the amount of data a company includes, so as to create the most accurate measures, and management’s confidence, which helps foster buy-in by sales employees.
“You get a lot of pushback at the initial stages,” says Chung. “You can see people who get a higher quota saying, this is not right.”
When companies stick with the program, however, Chung has seen such resistance from employees lessen over time.
About the Author
Michael Blanding is a writer based in the Boston area.
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