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  • 學位論文

動態通訊錄 : 行動電話撥打方的智慧型導引

Dynamic PhoneBook: An Intelligent Guide Phone Caller

指導教授 : 彭文志

摘要


The rapid growth of smartphone uses in today’s modern life encourages the development of useful application that provides a batch of useful information to it's users. The main aim of this development is to make smartphone smarter. Phone call prediction is one of applications that serve as an important feature to achieve smarter smartphone. To the best of our knowledge, there were two most recent works on the development of telephone call [11, 12]. Even though those studies have shown the promising achievements over the basic congenital telephone system, we are still confident to explore many basic features that seem that received little attention in their research. In this paper, we investigate more conservative features that can subscribe as same accuracy result or even better. More specifically, given the user historical call activities, we explore four major features: frequency, duration, recency, and direction. The frequency feature refers the number of interaction calls between the user and callee. The period of time that the user and callee spent in each of their communication call defines as duration feature. While, recency feature is the weight of each connection call between user and callee according to the recentness of that call. Lastly, the feature of direction describes the importance of call initiator between user and callee by giving pre-defined weight. According to these features, we develop three probability ranking models: Probability General-Frequency (PGF), Probability General-Duration (PGD), and Probability Recency (PR). Moreover, we train these models in two real Call Detail Record (CDR) datasets, Reality Mining and Chunghua Telecom dataset to gain depiction result. Finally, we compare these models with the existing works and demonstrate that our conventional models can reach same and even better accuracy prediction.

並列摘要


The rapid growth of smartphone uses in today’s modern life encourages the development of useful application that provides a batch of useful information to it's users. The main aim of this development is to make smartphone smarter. Phone call prediction is one of applications that serve as an important feature to achieve smarter smartphone. To the best of our knowledge, there were two most recent works on the development of telephone call [11, 12]. Even though those studies have shown the promising achievements over the basic congenital telephone system, we are still confident to explore many basic features that seem that received little attention in their research. In this paper, we investigate more conservative features that can subscribe as same accuracy result or even better. More specifically, given the user historical call activities, we explore four major features: frequency, duration, recency, and direction. The frequency feature refers the number of interaction calls between the user and callee. The period of time that the user and callee spent in each of their communication call defines as duration feature. While, recency feature is the weight of each connection call between user and callee according to the recentness of that call. Lastly, the feature of direction describes the importance of call initiator between user and callee by giving pre-defined weight. According to these features, we develop three probability ranking models: Probability General-Frequency (PGF), Probability General-Duration (PGD), and Probability Recency (PR). Moreover, we train these models in two real Call Detail Record (CDR) datasets, Reality Mining and Chunghua Telecom dataset to gain depiction result. Finally, we compare these models with the existing works and demonstrate that our conventional models can reach same and even better accuracy prediction.

參考文獻


[14] N. Singh, S. Bagchi, and Y.-S. Wu. Annoying telephone-call prediction and prevention,
[1] L. Akoglu and B. Dalvi. Structure, tie persistence and event detection in large phone
[2] B. H. Andrews and S. M. Cunningham. Ll bean improves call-center forecasting. Inter-
centers by arima modeling with intervention. International Journal of Forecasting,
14(4):497–504, 1998.

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