A recommendation method

A recommendation method and project technology, applied in special data processing applications, instruments, biological neural network models, etc., can solve the problems of inability to consider the influence of historical vocabulary, reduce accuracy, and slow operation speed, so as to improve efficiency and recommendation accuracy , Improve the effect of data sparseness and feature extraction accuracy improvement

Active Publication Date: 2019-01-18
SHAANXI NORMAL UNIV
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AI Technical Summary

Problems solved by technology

The aggregation operation of the convolutional neural network will lose the position information of some words, and cannot consider the influence of historical words with high weight, which reduces the accuracy of feature extraction in natural language processing; although the recurrent neural network can consider dynamic information and The feature extraction of natural language has a good effect, but compared with CNN, its feature expression effect on static data ...

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  • A recommendation method
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Embodiment Construction

[0034] see figure 1 , in one embodiment, it is disclosed that a recommendation method is provided, including the following steps:

[0035] S100: using a word embedding unit to convert texts in natural language about users and items into numerical training data;

[0036] S200: Using an attention mechanism to increase the mutual influence between the user and the item in the training data;

[0037] S300: Using the convolutional neural network model based on the attention mechanism to extract the local features and core features of the training data, and finally obtain the hidden features that can express the global features;

[0038] S400: Using the factorization machine to analyze the above hidden features to obtain the association between the user and the item, complete the user's rating prediction for the item according to the association, and finally recommend the item to the user.

[0039] This method proposes to expand the attention mechanism of convolutional neural netw...

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Abstract

A recommendation method includes the following steps: S100: converting text about a natural language form of a user and an item into numeric training data using a word embedding unit; S200: adopting an attention mechanism to increase the mutual influence between the user and the item in the training data; S300: Using the convolution neural network model based on attention mechanism to extract thelocal features and the core features of the training data, and finally obtaining the hidden features which can express the global features; S400: analyzing the hidden features by using a factoring machine to obtain the association between the user and the item, and the scoring prediction of the item by the user according to the association, and finally recommending the item to the user. Compared with the existing methods, this method improves the recommended accuracy and accuracy, and improves the data utilization rate.

Description

technical field [0001] The disclosure belongs to the technical field of artificial neural network and personalized recommendation, and particularly relates to a recommendation method. Background technique [0002] With the rapid development of technologies such as cloud computing, big data, and the Internet of Things, a large number of application platforms such as shopping, education, and entertainment have emerged in the Internet and information industries, making the scale of multi-source heterogeneous data also grow rapidly. It is estimated that by 2020 The total amount of global data will reach 35.2ZB. These big data contain a wealth of value, which can guide people to change their behavioral decision-making mode from empiricism-based to data-driven. However, while enjoying the convenience brought by big data, it is difficult for people to extract valuable information from big data, which leads to the problem of "information overload". Therefore, how to mine effective...

Claims

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Application Information

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IPC IPC(8): G06F16/9535G06N3/04
CPCG06N3/045
Inventor 王小明庞光垚郝飞谢杰航王新燕林亚光秦雪洋
Owner SHAANXI NORMAL UNIV
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