The invention discloses a marketing activity prediction method based on knowledge
distillation. The method comprises the steps of data preprocessing,
data set division and network training framework formation of a teacher model,
data set division and network training framework formation of a student model, prediction model establishment, marketing activity prediction and the like. The method includes following steps: firstly, constructing a relatively complex teacher model Net-T with a
residual neural network as a core, and then establishing a student model Net-S formed by a simple neural network; weighting a soft
label obtained by training a teacher model Net-T at a high temperature and a hard
label obtained by training a student model Net-S at the same temperature to obtain a total
loss function of knowledge
distillation; by taking the total
loss function as a target function of a student model Net-S during actual deployment, training to obtain a final neural
network model, and performing prediction, wherein the result shows that the
hybrid model effectively expands the application of
deep learning to advertisement calculation and recommendation
system algorithms, so that the method significantly improves the accuracy of user click prediction.