ABSTRACT
Mobile phone log data is not static as it is progressively added to day-by-day according to individual's behavior. The goal of this position paper is to highlight the issues of traditional behavior modeling utilizing phone log data and to describe the key aspects that constitute the foundation of our recency-based behavior modeling for individual mobile phone users to overcome such issues.
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Index Terms
- Understanding recency-based behavior model for individual mobile phone users
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