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BBE-LSWCM: Real-Time Customer Event Prediction Framework for SaaS Products


Conceptos Básicos
Developing BBE-LSWCM for real-time customer event prediction in SaaS products like QBO.
Resumen
The content introduces BBE-LSWCM, an ensemble architecture combining long and short window clickstream data for real-time predictions in SaaS products. It addresses subscription cancellation and intended task detection problems, showcasing superior performance over baseline approaches. Introduction Objective: Develop a clickstream modeling framework for real-time customer event prediction in SaaS products. Examples: Subscription cancellation prediction, intended task detection, task abandonment prediction. Proposed Approach BBE-LSWCM combines aggregated user behavior data from longer historical windows with recent short window activities. Ensures robust real-time modeling by incorporating both types of data efficiently. Model Components LWM estimates target probability from long historical window data. SWM focuses on recent in-session clickstream activities. EMM combines outputs of LWM and SWM with user profile information for final predictions. Parameter Estimation Block Bootstrap Sampling used to generate bootstrap samples for parameter estimation of LWM, SWM, and EMM separately. Experimentation Results Evaluation based on decile lift (DL), average time from warning to churn (ATWC), AUROC scores at a user level. Baseline Approaches Comparison with batch models, in-session models, survival models, and joint models like xDeepFM and DIN. Results BBE-LSWCM outperforms baselines in churn identification with higher DL scores, lower ATWC values, and superior AUROC performance.
Estadísticas
We develop a low-latency, cost-effective ensemble architecture (BBE-LSWCM). On the QBO dataset, BBE-LSWCM achieved at least a 30% better lift score over the next best model for real-time churn detection.
Citas

Ideas clave extraídas de

by Arnab Chakra... a las arxiv.org 03-25-2024

https://arxiv.org/pdf/2203.16155.pdf
BBE-LSWCM

Consultas más profundas

How does the incorporation of both long and short window data improve predictive accuracy

The incorporation of both long and short window data in BBE-LSWCM improves predictive accuracy by leveraging the strengths of each type of data. The long window data provides a historical context and captures trends or patterns over an extended period, allowing the model to understand user behavior changes over time. On the other hand, the short window data captures immediate user actions and behaviors, providing real-time insights into current user intentions or activities. By combining both types of data, BBE-LSWCM can create a more comprehensive view of user behavior, taking into account both past trends and current interactions. This dual approach enables the model to make more accurate predictions by considering a broader range of factors that influence user outcomes. Additionally, this combination helps in capturing sudden shifts or anomalies in user behavior that may not be evident when looking at either long-term or short-term data alone.

What are the implications of the results obtained by BBE-LSWCM on real-world applications

The results obtained by BBE-LSWCM have significant implications for real-world applications, especially in industries where real-time customer event prediction is crucial for decision-making and proactive interventions. For example: Improved Customer Retention: By accurately predicting churn risk in real-time, businesses can proactively engage with at-risk customers to prevent subscription cancellations. Enhanced User Experience: Predicting intended tasks can help personalize user experiences by offering relevant support or guidance based on users' immediate needs. Cost-Efficient Interventions: BBE-LSWCM's ability to provide early warnings and accurate predictions allows companies to optimize resources by targeting interventions effectively. These implications highlight how BBE-LSWCM can drive actionable insights for businesses seeking to enhance customer satisfaction, reduce churn rates, and improve overall operational efficiency through timely interventions based on predictive analytics.

How can the methodology used in this study be adapted to other industries or domains

The methodology used in this study can be adapted to other industries or domains with similar requirements for real-time event prediction using clickstream data: E-commerce: In e-commerce platforms, predicting purchase intent or cart abandonment could benefit from a similar approach that combines historical browsing patterns with current session interactions. Telecommunications: Predicting customer churn in telecom services based on call logs and usage patterns could leverage a hybrid model like BBE-LSWCM for improved accuracy. Healthcare: Monitoring patient behaviors through electronic health records (EHR) combined with real-time sensor data could enable early detection of potential health issues using a similar ensemble architecture. By customizing features specific to each industry's domain knowledge and adapting the modeling framework accordingly, organizations across various sectors can harness the power of hybrid models like BBE-LSWCM for enhanced predictive capabilities tailored to their unique use cases.
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