2020
DOI: 10.48550/arxiv.2012.13114
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A Frequency-Based Learning-To-Rank Approach for Personal Digital Traces

Abstract: Personal digital traces are constantly produced by connected devices, internet services and interactions. These digital traces are typically small, heterogeneous and stored in various locations in the cloud or on local devices, making it a challenge for users to interact with and search their own data. By adopting a multidimensional data model based on the six natural questions -what, when, where, who, why and how -to represent and unify heterogeneous personal digital traces, we can propose a learning-to-rank … Show more

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