Software companies that offer web-based services instead of local installations can record the user's interactions with the system from a distance. This data can be analyzed and subsequently improved or extended. A recommender system that guides users through a business process by suggesting next clicks can help to improve user satisfaction, and hence service quality and can reduce support costs. We present a technique for a next click recommender system. Our approach is adapted from the predictive process monitoring domain that is based on long short-term memory (LSTM) neural networks. We compare three different configurations of the LSTM technique: LSTM without context, LSTM with context, and LSTM with embedded context. The technique was evaluated with a real-life data set from a financial software provider. We used a hidden Markov model (HMM) as the baseline. The configuration LSTM with embedded context achieved a significantly higher accuracy and the lowest standard deviation.
CITATION STYLE
Weinzierl, S., Stierle, M., Zilker, S., & Matzner, M. (2020). A next click recommender system for web-based service analytics with context-aware LSTMs. In Proceedings of the Annual Hawaii International Conference on System Sciences (Vol. 2020-January, pp. 1542–1551). IEEE Computer Society. https://doi.org/10.24251/hicss.2020.190
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