Dichotomic Pattern Mining with Applications to Intent Prediction from Semi-Structured Clickstream Datasets
Abstract
A pattern mining framework using constraint reasoning on semi-structured datasets improves performance and interpretability in predictive modeling, demonstrated through customer intent prediction.
We introduce a pattern mining framework that operates on semi-structured datasets and exploits the dichotomy between outcomes. Our approach takes advantage of constraint reasoning to find sequential patterns that occur frequently and exhibit desired properties. This allows the creation of novel pattern embeddings that are useful for knowledge extraction and predictive modeling. Finally, we present an application on customer intent prediction from digital clickstream data. Overall, we show that pattern embeddings play an integrator role between semi-structured data and machine learning models, improve the performance of the downstream task and retain interpretability.
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