Unsupervised learning unified feature extractor construction method

An unsupervised learning and feature extraction technology, applied in instruments, special data processing applications, data processing applications, etc., can solve problems such as difficulties, privacy violations, and difficulty in user feature extraction, achieve innovation, improve recommendation efficiency, and protect users. The effect of privacy

Active Publication Date: 2019-06-14
COMMUNICATION UNIVERSITY OF CHINA
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AI Technical Summary

Problems solved by technology

[0006] In view of the lack of personalization in the current fusion media news recommendation and other applications, the difficulty of extracting user features, the difficulty of unifying different methods to form an effective hybrid recommendation method, the privacy violation in user feature extraction, and the need to improve the efficiency of real-time recommendation, according to the current A new type of artificial intelligence technology, this application discloses a construction method of Unsupervised Learning Unified Feature Extractor (ULUFE), which is used to extract "Unified Representation Based on Content (URBC) )

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  • Unsupervised learning unified feature extractor construction method
  • Unsupervised learning unified feature extractor construction method
  • Unsupervised learning unified feature extractor construction method

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Embodiment Construction

[0047] The specific implementation and detailed steps of the unsupervised learning unified feature extractor construction method of the present invention will be further described below:

[0048] Step 1: Data Acquisition and Preparation

[0049] The invention is mainly aimed at the website text news and the mobile phone news client text news in the current fusion media. Both news text data and user access data are located on the server side. This step needs to generate a "news feature training data set". The specific process is as follows:

[0050] 1) collect news data and user access data within a certain period of time on the server, the news data includes historical news on the server, and user access data includes a news ID list that the user reads within a certain period of time;

[0051] 2) Remove irrelevant content such as pictures and videos in the news data, uniformly encode it as UTF-8, and set a serial number for each news to form a news data set;

[0052] 3) Rand...

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Abstract

The invention provides a constructing method for an unsupervised learning unified characteristic extractor. The constructing method is characterized in that actual news text data is acquired from a server-side to generate a news characteristic training data set; data of the news characteristic training data set is processed and quantized to obtain a news characteristic training vector set; according to user accessing data, news data sets are classified to generate a user characteristic training data set; a stacked asymmetrical noise reduction contraction autoencoder with a plurality of implictstrata is constructed, and a certain objective function is used to train a deep autoencoder; after the training of the deep autoencoder is completed, a decoder portion is deleted, a binaryzation generating layer is added to construct the unsupervised learning unified characteristic extractor. According to the unsupervised learning unified characteristic extractor, the unification of news characteristics and user characteristics and the unification of content recommendation and collaborative filtering recommendation can be achieved, and the real-time recommendation efficiency is improved.

Description

technical field [0001] The invention belongs to the field of artificial intelligence, and in particular relates to a construction method of an unsupervised learning unified feature extractor. Background technique [0002] The current recommendation system or recommendation engine is generally divided into content-based recommendation, collaborative filtering recommendation, and hybrid recommendation. The current popular collaborative filtering method is mainly based on commonality, that is, the similarity between users and items is calculated through a user's rating of a product or media content (which can be collectively referred to as "item"), and then according to the user's interest Similar to other users' ratings to infer their ratings for new items, or to predict ratings for new items based on the similarity with items they were interested in, so it is also called rating prediction, but its disadvantages are insufficient personalization, Difficulty predicting in the a...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06F17/22G06F17/27G06Q30/06
CPCG06F40/126G06F40/284G06Q30/0631
Inventor 杨楠曹三省
Owner COMMUNICATION UNIVERSITY OF CHINA
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