Machine learning is a subset of artificial intelligence that involves training algorithms to recognize patterns, make decisions, and predict outcomes based on data. In other words, it involves systems that process incoming data, recognize recurring trends, and automatically refine their responses to new information with the goal of generating solutions and addressing issues.
Machine learning can be broadly categorized into three main types, each with its unique approach and application areas:
Machine learning is revolutionizing marketing by leveraging data for insights and automating decisions, thereby improving customer insights and the impact of campaigns. In the sections below, we will delve into a few among many concrete examples of how machine learning is applied in performance marketing:
Predicting Customer Lifetime Value: This involves calculating the total revenue a customer is expected to generate for a business throughout their relationship. A prime example is Amazon, which uses data on customers' purchase histories, browsing activities, and feedback on products to predict their future purchasing behaviors and identify customers with the most potential value.
Forecasting Churn Rates: This process identifies the probability of customers ceasing to use a service or product. For instance, Verizon is able to anticipate customers’ churn rate by analyzing aspects such as call quality issues, interactions with customer service, and fluctuations in billing amounts, enabling them to intervene early with customized promotions, offers, or improvements in services to maintain customer loyalty.
Segmenting Customers: This strategy involves dividing customers into groups that share similar traits, behaviors, or preferences. Netflix, for example, applies machine learning to segment its viewers by analyzing their viewing habits, preferred genres, how often they stream content, and the devices they use, which helps to enhance recommendation algorithms and develop targeted marketing campaigns for various segments.
Applying Predictive Analytics: This technique predicts future trends and outcomes by analyzing past and present data. Walmart, for instance, uses predictive analytics to optimize its inventory management by examining past sales data, considering seasonal variations, and incorporating information about local events and promotions to ensure stores are stocked appropriately.
With the potential of Machine Learning, Airbridge is planning to enhance how you understand and interact with your app’s user data.
Airbridge offers an advanced AI-driven marketing mix model that not only aggregates data but also predicts future trends and fills in missing information. It can accurately interpret marketing performance, including in scenarios of data acquisition failures, to forecast retention and revenue effectively. Additionally, Airbridge has introduced a consulting service with experienced data experts to aid in data collection and interpretation, especially in restricted environments. This service aims to maximize data potential and provide accurate, comprehensive insights. Do not miss out on this opportunity to use Airbridge’s AI features by booking a demo now.