研究目的
To analyze and predict when and why people change their mobile phones using big data and machine learning techniques.
研究成果
The study confirms that certain distributions describe user behavior well and identifies key attributes significant for phone changing events. It also demonstrates that undersampling combined with an enhanced backpropagation neural network performs best in predicting phone changing events. However, predicting phone changes remains challenging due to unpredictable factors and the complex nature of user behavior.
研究不足
The study acknowledges that some users may decide to change their phones due to unpredictable factors, such as phone damage or lost, which are not captured by the data. Additionally, the intrinsic characteristics of the data and its imbalance make prediction challenging.