The traditional data services of prediction for emergency or non-periodic events usually cannot generate satisfying result or fulfill the correct prediction purpose. However, these events are influenced by external causes, which mean certain a priori information of these events generally can be collected through the Internet. This paper studied the above problems and proposed an improved model - LSTM (Long Short-term Memory) dynamic prediction and a priori information sequence generation model by combining RNN-LSTM and public events a priori information. In prediction tasks, the model is qualified for determining trends, and its accuracy also is validated. This model generates a better performance and prediction results than the previous one. Using a priori information can increase the accuracy of prediction; LSTM can better adapt to the changes of time sequence; LSTM can be widely applied to the same type of prediction tasks, and other prediction tasks related to time sequence.
CITATION STYLE
Song, B., Fan, C., Wu, Y., & Sun, J. (2018). Data Prediction for Public Events in Professional Domains Based on Improved RNN- LSTM. In Journal of Physics: Conference Series (Vol. 976). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/976/1/012007
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