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Predictive analytics

What is predictive analytics?

What is predictive analytics?

Predictive analytics combines historical data, machine learning algorithms, and statistical techniques to forecast future customer behaviors and trends. Predictive analytics predict customer needs, preferences, and actions – so businesses can create more personalized, effective marketing and customer engagement strategies.

Why is predictive analytics important?

Why is predictive analytics important?

With predictive analytics, businesses can deepen their understanding of customers, anticipate their needs, and engage them more effectively. It all adds up to higher satisfaction, loyalty, and revenue.

Benefits of predictive analytics

  • Predictive analytics determine the most effective next best action to engage a customer – whether that’s sending a personalized offer, following up on a service issue, or taking another relevant step.
  • Predictive analytics estimate the customer lifetime value, or future value a customer will bring to the business over their entire relationship. This informs business decisions about how much to invest in marketing activities.
  • Predictive analytics can identify customers who are at risk of churning based on their interaction patterns, purchase history, and engagement metrics. This allows companies to take proactive measures to retain at-risk customers.
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How does predictive analytics work?

How does predictive analytics work?

Predictive analytics takes steps involving data collection, data processing, model building, and implementation within AI-powered technology solutions. Businesses will walk away with increased efficacy in their marketing and customer engagement programs.

Product

Pega Customer Decision Hub

Deepen relationships and maximize value with real-time decisioning.

Common techniques used in predictive analytics

Data collection

Collecting data from various sources that aggregate transaction, behavioral, demographic, interaction, or customer feedback data.

AI-powered predictions

Using machine learning models and algorithms to predict future behaviors based on patterns in historical data sources.

Customer engagement integrations

Embedding predictive models into customer engagement platforms like CRM systems, marketing automation tools, and other marketing technology solutions.

 

Challenges of predictive analytics

Challenges of predictive analytics

Utilizing predictive analytics does pose challenges, however businesses can address and mitigate them proactively.

  • Data quality and integration can be challenging – with data from various sources being stored in different systems or departments, creating silos. Not to mention data may have inconsistencies, missing values, or inaccuracies, complicating the creation of reliable predictive models.
  • Some machine learning models, especially complex ones, can be difficult to interpret. That makes it challenging to understand how decisions are made, which may introduce or amplify AI bias.
  • Predictive analytics relies primarily on stale historical data that lacks context versus real-time data, making it difficult to provide the most relevant and timely customer experience possible.
  • Building and maintaining predictive analytics models requires specialized skills in data science, machine learning, and domain expertise. When budgets are constrained, allocating sufficient resources for these initiatives can be challenging.

Technology

Adapt instantly with next best action

Pega’s next best action works to make every interaction more relevant and meaningful.

What are some use cases for predictive analytics?

Predictive analytics can map out potential customer journeys, identifying key touchpoints and predicting customer actions at each stage – allowing businesses to optimize the customer experience.

By analyzing purchase history and customer profiles, predictive models can identify opportunities for cross-selling and upselling, suggesting complementary products or premium versions of existing products.

Campaign and program optimization

Predictive models can forecast the performance of different channels, programs and campaigns, helping marketers allocate budgets more effectively and achieve better ROI.

How to get started with predictive analytics

Get started with predictive analytics by defining your objectives and goals, collecting and preparing data assets, identifying how to measure success, and designating subject matter experts to implement effective technologies and programs to best achieve improved customer engagement and business outcomes.

How to get started with predictive analytics

Frequently Asked Questions on predictive analytics

Predictive analytics uses past data to forecast future events, while machine learning uses algorithms that learn from data. Machine learning is a broader field that can be used for prediction (like predictive analytics) but also other tasks.

Predictive analytics typically uses historical data in the forms of:

  • Sales records
  • Customer data
  • Production rates

Historical data is the foundation for spotting trends to predict future behavior, making it useful to to better processes.

Predictive analytics and forecasting both aim to anticipate future events but differ in approach and application. Predictive analytics looks at both real-time and historical data to predict specific outcomes, while forecasting relies on statistical methods to project future values based on historical trends.

For example, a retail company can use predictive analytics to determine which customers are most likely to make a purchase in the next month by looking into past purchases, browsing history, social media interactions, etc. The same retail company can use forecasting to predict its overall sales for the month based on shopping trends, seasonality, economic conditions, etc.

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