B2B Customer Churn Prediction With AI

B2B Customer Churn Prediction With AI

Churn Prediction means detecting which customers are likely to leave a service or to cancel a subscription to a service.

BACKGROUND AND CHALLENGES:

Following the economic downturn caused by the COVID-19 pandemic, an industrial tool supplier had seen revenues drop by more than $200M across 10,000+ clients due to 10% of customers reducing their orders.

The company realized that churn reduction would be critical to reclaiming this lost revenue. If they could identify which customers were at risk of reducing their orders or leaving altogether, they could take preventive measures through targeted marketing campaigns or discount policies.

However, identifying “at-risk” clients manually was problematic. With over 10,000 customers, a high volume of accounts needed to be monitored at once. In addition, there were several different early indicators of churn derived from a host of data sources. Finally, it was necessary to spot these indicators in customers’ risk exemplifying behavior.

It became self-evident that manual processes would not suffice. The task seemed overwhelming until the company discovered that AI and machine learning could provide the answer.

The Problem With Churn Prediction in Industrial Supplies

Churn behavior is challenging to identify and prevent, particularly with physical rather than digital products. Early indicators with materials supply are derived only from ordering behavior, payment data, and feedback on support forums and customer service portals. These factors produce thousands of data points and are not straightforward to measure, compare and analyze.

Most customers “vote with their feet” and rarely leave feedback on why they no longer use a product or service. Even if it were possible to conduct exit interviews to determine why customers left, it is usually too late to win them back. The client knew that it was vital to develop methods to provide early warnings for churn-like behavior so that customers at risk of defecting were identified and addressed as soon as possible.

Many companies lack workable strategies for churn reduction because they use reactive, costly methods to address the problem. While proactive customer engagement accounts for more than a quarter (28%) of support interactions, only 28% of companies have proactive engagement efforts in place.

THE SOLUTION

Predictive Analytics leverages AI models to uncover behavior patterns used to assign risk scores. AI performs exceptionally well at pattern recognition and can detect patterns humans may not have considered. A model is trained based on a pool of data of customers who have reduced their orders significantly, moved to a rival supplier, or otherwise demonstrated a high risk for churn. Using Machine Learning, the model identifies patterns of behavior preceding these signals, effectively learning what early warning indicators to identify. When subsequently directed at the data pool of existing customers, the model can use these confirmed patterns to identify the cohort which is most at risk of churn. Identifying at-risk clients allows human customer support, marketing, or sales staff to intervene and hopefully turn some vacillating or withdrawing accounts around.

Steps Taken to Implement an AI Solution

To make the above process work, several steps had to be undertaken:

• Available data had to be identified and cleaned to ensure proper comparisons. The team had to identify missing data, align formats, and ensure there was sufficient information to track patterns.

• The model needed training on a sample data pool to learn and generate the patterns against the entire customer data.

• The team determined a process for determining which customers flagged as “at-risk” would be part of a recovery effort.

Because an AI-based model can perform the analysis in days or a few weeks, the business had to have ready processes to address at-risk clients as quickly as possible. If there are discount or retention campaigns, these must be ready to roll. The data can quickly become outdated, requiring the process to be rerun if the moment isn’t promptly seized.

WHY WeDevTeam (Nexa)
WeDevTeam (Nexa) provided the client with a unique approach combining business-focused assistance and technological automation. The business assistance consisted of identifying “soft business goals” and building a churn reduction strategy to be deployed as part of the company’s workflow. The automation component leveraged AI Automation software to create a predictive model to score at-risk clients in a matter of days.

AI-Driven Churn Reduction 10x Faster than Manual Analysis

Another major factor in the success of our churn reduction measures was how easily it could be incorporated within the client’s ongoing sales and marketing functions.

Previously, tens of millions of data rows had to be scoured for self-evident risk indicators that human analysts could discover.

AI-empowered methods achieved the same task more than ten times faster than human counterparts while providing greater accuracy, better insights, and more in-depth analysis. While manually analyzing order histories, calendar data, demographics, and customer complaints originally took six to ten months, after implementing the AI model, the process was performed in fourteen days.

Creating a Churn Prevention Plan with Iterative Analysis for Deeper Insight

The two-week analytic timeframe included iterative analysis, with the participation of LoB (Line of Business) officers:

• First Iteration: Customers were segmented into distinct patterns of behavior.

• Second Iteration: Cohorts that exemplified higher churn risk were identified amongst those segments

For example, delayed deliveries of two days or longer would indicate high churn risk, as would a high volume of customer service complaints or an increase in goods returned.

These indicators allowed the client to formulate churn mitigation strategies directly to target specific cohorts. Identifying these high-risk incidents and behaviors allowed the client to create a churn prevention plan and take prompt action.

This would simultaneously improve the client’s services and processes while retaining more customers. Using WeDevTeam (Nexa) ’s methods would achieve these ends over ten times faster than conventional human analysis.

RESULTS

• Over $40 Million of revenue recovered annually.

• More than 50 churn risk behavioral patterns were identified.

• 10x Faster analytic process instituted (14 days rather than months)

These efforts resulted in over $40 million of recovered revenue. After fourteen days, the company was left with a quick process to incorporate into their sales and customer service workflow regularly. Furthermore, the client now had insights into what factors most frequently drove some customers away or led them to reduce expenditure. While some aspects would be challenging to mitigate due to an inflationary economy, other churn-related factors proved much easier to address. New insights allowed the company to sharpen the skills of customer service, sales, and marketing teams, empowering them with actionable insight and providing time to act.

As you take hold of your digital thread in 2023 and accelerate digital transformation in your organization, look to Digital Marketing Nomad as a partner for key intelligence and capabilities in your ongoing success.

Ready to take the next step? Drop us a line at office@dvelopdigital.com

To view or add a comment, sign in

More articles by Alexandra Nicolau

Insights from the community

Others also viewed

Explore topics