Structured dataset of human-machine interactions enabling adaptive user interfaces

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作者
Angela Carrera-Rivera
Daniel Reguera-Bakhache
Felix Larrinaga
Ganix Lasa
Iñaki Garitano
机构
[1] and Computing. Mondragon Unibertsitatea,Faculty of Engineering, Electronics
[2] Mondragon Unibertsitatea,Design Innovation Center (DBZ)
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This article introduces a dataset of human-machine interactions collected in a controlled and structured manner. The aim of this dataset is to provide insights into user behavior and support the development of adaptive Human-Machine Interfaces (HMIs). The dataset was generated using a custom-built application that leverages formally defined User Interfaces (UIs). The resulting interactions underwent processing and analysis to create a suitable dataset for professionals and data analysts interested in user interface adaptations. The data processing stage involved cleaning the data, ensuring its consistency and completeness. A data profiling analysis was conducted for checking the consistency of elements in the interaction sequences. Furthermore, for the benefit of researchers, the code used for data collection, data profiling, and usage notes on creating adaptive user interfaces are made available. These resources offer valuable support to those interested in exploring and utilizing the dataset for their research and development efforts in the field of human-machine interfaces.
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