Abstract

Based on machine learning algorithms, this paper designs a crossborder e‐commerce logistics service system recommendation algorithm. First, we introduce the meaning of query recommendation, analyze the mechanism of e‐commerce platform shopping search, redesign the query recommendation process on this basis, establish a Markov decision process model for the problem, and solve the optimal recommendation strategy through deep machine learning algorithms. Second, we design a simple calculation example, use Python programming through a simulated shopping environment, give the solution process of the optimal recommendation strategy in the whole process, and prove the feasibility of the algorithm. The sentiment synthesis word vector is used as the input data structure of the text, the convolutional neural network model and the recurrent neural network model in machine learning are independently designed and constructed, and a shunt is proposed. The rule (shunt) realizes the operation of judging the data and inputting the two machine learning networks. The shunt fully realizes the combination of the advantages of the local feature characterization of the convolutional neural network and the timing characteristics of the recurrent neural network and achieves a more efficient and accurate electrical system. Finally, through simulation experiments, a series of data processing work such as data outlier cleaning, sliding window construction features of data variables, and training set and test set division are designed to convert regression prediction problems into classification problems to predict commodity demand. At the same time, it also compared the effect of the time series model, random forest model, GBDT, single Xgboost model, and the model used in this topic and analyzed the reasons for this difference and the application of each model.

Highlights

  • Based on machine learning algorithms, this paper designs a crossborder e-commerce logistics service system recommendation algorithm

  • We introduce the meaning of query recommendation, analyze the mechanism of e-commerce platform shopping search, redesign the query recommendation process on this basis, establish a Markov decision process model for the problem, and solve the optimal recommendation strategy through deep machine learning algorithms

  • We design a simple calculation example, use Python programming through a simulated shopping environment, give the solution process of the optimal recommendation strategy in the whole process, and prove the feasibility of the algorithm. e sentiment synthesis word vector is used as the input data structure of the text, the convolutional neural network model and the recurrent neural network model in machine learning are independently designed and constructed, and a shunt is proposed. e rule realizes the operation of judging the data and inputting the two machine learning networks. e shunt fully realizes the combination of the advantages of the local feature characterization of the convolutional neural network and the timing characteristics of the recurrent neural network and achieves a more efficient and accurate electrical system

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Summary

Related Work

With the rapid development of big data, cloud computing, hardware GPU, and storage technology in recent years, machine learning has obtained extremely possible application practices. En, based on the existing variable characteristics such as the inventory of fast-moving consumer goods, the number of clicks, and the types of goods, a multiple linear regression model was established to predict the demand for goods. Based on the existing data, the forecast of commodity demand for vector autoregression was carried out. Ge and Han [16] obtained the advantages of vector autoregression in the forecast of commodity demand by looking at the fitting effect of the model. Based on the algorithm of the support vector machine, Zhu and Shi [18] conducted a research on the demand for vegetables and selected qualitative and quantitative factors that affect vegetable sales to train the model. E researchers used the Bayesian method to study the demand forecast and inventory optimization of shortperiod products. The effectiveness of the model is verified through evaluation indicators such as RMSE [23, 24]

Machine Learning Algorithm Architecture
Construction of Crossborder e-Commerce Logistics
Evaluation was
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