Learning User Intent from Action Sequences on Interactive Systems
This work addresses improving interactive systems for applications in marketing domains, but it appears incremental as it builds on existing sequence learning methods.
The paper tackles the problem of learning user intent from action sequences on interactive systems, presenting a four-phase model using LSTM-based sequence learning to optimize systems, with results evaluated on an online marketplace using clickstream data.
Interactive systems have taken over the web and mobile space with increasing participation from users. Applications across every marketing domain can now be accessed through mobile or web where users can directly perform certain actions and reach a desired outcome. Actions of user on a system, though, can be representative of a certain intent. Ability to learn this intent through user's actions can help draw certain insight into the behavior of users on a system. In this paper, we present models to optimize interactive systems by learning and analyzing user intent through their actions on the system. We present a four phased model that uses time-series of interaction actions sequentially using a Long Short-Term Memory (LSTM) based sequence learning system that helps build a model for intent recognition. Our system then provides an objective specific maximization followed by analysis and contrasting methods in order to identify spaces of improvement in the interaction system. We discuss deployment scenarios for such a system and present results from evaluation on an online marketplace using user clickstream data.