Accessibility Statement Skip Navigation
  • Resources
  • Investor Relations
  • Journalists
  • Agencies
  • Client Login
  • Send a Release
Return to PR Newswire homepage
  • News
  • Products
  • Contact
When typing in this field, a list of search results will appear and be automatically updated as you type.

Searching for your content...

No results found. Please change your search terms and try again.
  • News in Focus
      • Browse News Releases

      • All News Releases
      • All Public Company
      • English-only
      • News Releases Overview

      • Multimedia Gallery

      • All Multimedia
      • All Photos
      • All Videos
      • Multimedia Gallery Overview

      • Trending Topics

      • All Trending Topics
  • Business & Money
      • Auto & Transportation

      • All Automotive & Transportation
      • Aerospace, Defense
      • Air Freight
      • Airlines & Aviation
      • Automotive
      • Maritime & Shipbuilding
      • Railroads and Intermodal Transportation
      • Supply Chain/Logistics
      • Transportation, Trucking & Railroad
      • Travel
      • Trucking and Road Transportation
      • Auto & Transportation Overview

      • View All Auto & Transportation

      • Business Technology

      • All Business Technology
      • Blockchain
      • Broadcast Tech
      • Computer & Electronics
      • Computer Hardware
      • Computer Software
      • Data Analytics
      • Electronic Commerce
      • Electronic Components
      • Electronic Design Automation
      • Financial Technology
      • High Tech Security
      • Internet Technology
      • Nanotechnology
      • Networks
      • Peripherals
      • Semiconductors
      • Business Technology Overview

      • View All Business Technology

      • Entertain­ment & Media

      • All Entertain­ment & Media
      • Advertising
      • Art
      • Books
      • Entertainment
      • Film and Motion Picture
      • Magazines
      • Music
      • Publishing & Information Services
      • Radio & Podcast
      • Television
      • Entertain­ment & Media Overview

      • View All Entertain­ment & Media

      • Financial Services & Investing

      • All Financial Services & Investing
      • Accounting News & Issues
      • Acquisitions, Mergers and Takeovers
      • Banking & Financial Services
      • Bankruptcy
      • Bond & Stock Ratings
      • Conference Call Announcements
      • Contracts
      • Cryptocurrency
      • Dividends
      • Earnings
      • Earnings Forecasts & Projections
      • Financing Agreements
      • Insurance
      • Investments Opinions
      • Joint Ventures
      • Mutual Funds
      • Private Placement
      • Real Estate
      • Restructuring & Recapitalization
      • Sales Reports
      • Shareholder Activism
      • Shareholder Meetings
      • Stock Offering
      • Stock Split
      • Venture Capital
      • Financial Services & Investing Overview

      • View All Financial Services & Investing

      • General Business

      • All General Business
      • Awards
      • Commercial Real Estate
      • Corporate Expansion
      • Earnings
      • Environmental, Social and Governance (ESG)
      • Human Resource & Workforce Management
      • Licensing
      • New Products & Services
      • Obituaries
      • Outsourcing Businesses
      • Overseas Real Estate (non-US)
      • Personnel Announcements
      • Real Estate Transactions
      • Residential Real Estate
      • Small Business Services
      • Socially Responsible Investing
      • Surveys, Polls and Research
      • Trade Show News
      • General Business Overview

      • View All General Business

  • Science & Tech
      • Consumer Technology

      • All Consumer Technology
      • Artificial Intelligence
      • Blockchain
      • Cloud Computing/Internet of Things
      • Computer Electronics
      • Computer Hardware
      • Computer Software
      • Consumer Electronics
      • Cryptocurrency
      • Data Analytics
      • Electronic Commerce
      • Electronic Gaming
      • Financial Technology
      • Mobile Entertainment
      • Multimedia & Internet
      • Peripherals
      • Social Media
      • STEM (Science, Tech, Engineering, Math)
      • Supply Chain/Logistics
      • Wireless Communications
      • Consumer Technology Overview

      • View All Consumer Technology

      • Energy & Natural Resources

      • All Energy
      • Alternative Energies
      • Chemical
      • Electrical Utilities
      • Gas
      • General Manufacturing
      • Mining
      • Mining & Metals
      • Oil & Energy
      • Oil and Gas Discoveries
      • Utilities
      • Water Utilities
      • Energy & Natural Resources Overview

      • View All Energy & Natural Resources

      • Environ­ment

      • All Environ­ment
      • Conservation & Recycling
      • Environmental Issues
      • Environmental Policy
      • Environmental Products & Services
      • Green Technology
      • Natural Disasters
      • Environ­ment Overview

      • View All Environ­ment

      • Heavy Industry & Manufacturing

      • All Heavy Industry & Manufacturing
      • Aerospace & Defense
      • Agriculture
      • Chemical
      • Construction & Building
      • General Manufacturing
      • HVAC (Heating, Ventilation and Air-Conditioning)
      • Machinery
      • Machine Tools, Metalworking and Metallurgy
      • Mining
      • Mining & Metals
      • Paper, Forest Products & Containers
      • Precious Metals
      • Textiles
      • Tobacco
      • Heavy Industry & Manufacturing Overview

      • View All Heavy Industry & Manufacturing

      • Telecomm­unications

      • All Telecomm­unications
      • Carriers and Services
      • Mobile Entertainment
      • Networks
      • Peripherals
      • Telecommunications Equipment
      • Telecommunications Industry
      • VoIP (Voice over Internet Protocol)
      • Wireless Communications
      • Telecomm­unications Overview

      • View All Telecomm­unications

  • Lifestyle & Health
      • Consumer Products & Retail

      • All Consumer Products & Retail
      • Animals & Pets
      • Beers, Wines and Spirits
      • Beverages
      • Bridal Services
      • Cannabis
      • Cosmetics and Personal Care
      • Fashion
      • Food & Beverages
      • Furniture and Furnishings
      • Home Improvement
      • Household, Consumer & Cosmetics
      • Household Products
      • Jewelry
      • Non-Alcoholic Beverages
      • Office Products
      • Organic Food
      • Product Recalls
      • Restaurants
      • Retail
      • Supermarkets
      • Toys
      • Consumer Products & Retail Overview

      • View All Consumer Products & Retail

      • Entertain­ment & Media

      • All Entertain­ment & Media
      • Advertising
      • Art
      • Books
      • Entertainment
      • Film and Motion Picture
      • Magazines
      • Music
      • Publishing & Information Services
      • Radio & Podcast
      • Television
      • Entertain­ment & Media Overview

      • View All Entertain­ment & Media

      • Health

      • All Health
      • Biometrics
      • Biotechnology
      • Clinical Trials & Medical Discoveries
      • Dentistry
      • FDA Approval
      • Fitness/Wellness
      • Health Care & Hospitals
      • Health Insurance
      • Infection Control
      • International Medical Approval
      • Medical Equipment
      • Medical Pharmaceuticals
      • Mental Health
      • Pharmaceuticals
      • Supplementary Medicine
      • Health Overview

      • View All Health

      • Sports

      • All Sports
      • General Sports
      • Outdoors, Camping & Hiking
      • Sporting Events
      • Sports Equipment & Accessories
      • Sports Overview

      • View All Sports

      • Travel

      • All Travel
      • Amusement Parks and Tourist Attractions
      • Gambling & Casinos
      • Hotels and Resorts
      • Leisure & Tourism
      • Outdoors, Camping & Hiking
      • Passenger Aviation
      • Travel Industry
      • Travel Overview

      • View All Travel

  • Policy & Public Interest
      • Policy & Public Interest

      • All Policy & Public Interest
      • Advocacy Group Opinion
      • Animal Welfare
      • Congressional & Presidential Campaigns
      • Corporate Social Responsibility
      • Domestic Policy
      • Economic News, Trends, Analysis
      • Education
      • Environmental
      • European Government
      • FDA Approval
      • Federal and State Legislation
      • Federal Executive Branch & Agency
      • Foreign Policy & International Affairs
      • Homeland Security
      • Labor & Union
      • Legal Issues
      • Natural Disasters
      • Not For Profit
      • Patent Law
      • Public Safety
      • Trade Policy
      • U.S. State Policy
      • Policy & Public Interest Overview

      • View All Policy & Public Interest

  • People & Culture
      • People & Culture

      • All People & Culture
      • Aboriginal, First Nations & Native American
      • African American
      • Asian American
      • Children
      • Diversity, Equity & Inclusion
      • Hispanic
      • Lesbian, Gay & Bisexual
      • Men's Interest
      • People with Disabilities
      • Religion
      • Senior Citizens
      • Veterans
      • Women
      • People & Culture Overview

      • View All People & Culture

      • In-Language News

      • Arabic
      • español
      • português
      • Česko
      • Danmark
      • Deutschland
      • España
      • France
      • Italia
      • Nederland
      • Norge
      • Polska
      • Portugal
      • Россия
      • Slovensko
      • Suomi
      • Sverige
  • Explore Our Platform
  • Plan Campaigns
  • Create with AI
  • Distribute Press Releases
  • Amplify Content
  • All Products
  • General Inquiries
  • Editorial Bureaus
  • Partnerships
  • Media Inquiries
  • Worldwide Offices
  • Hamburger menu
  • PR Newswire: news distribution, targeting and monitoring
  • Send a Release
    • ALL CONTACT INFO
    • Contact Us

      888-776-0942
      from 8 AM - 10 PM ET

  • Send a Release
  • Client Login
  • Resources
  • Blog
  • Journalists
  • RSS
  • News in Focus
    • Browse All News
    • Multimedia Gallery
    • Trending Topics
  • Business & Money
    • Auto & Transportation
    • Business Technology
    • Entertain­ment & Media
    • Financial Services & Investing
    • General Business
  • Science & Tech
    • Consumer Technology
    • Energy & Natural Resources
    • Environ­ment
    • Heavy Industry & Manufacturing
    • Telecomm­unications
  • Lifestyle & Health
    • Consumer Products & Retail
    • Entertain­ment & Media
    • Health
    • Sports
    • Travel
  • Policy & Public Interest
  • People & Culture
    • People & Culture
  • Send a Release
  • Client Login
  • Resources
  • Blog
  • Journalists
  • RSS
  • Explore Our Platform
  • Plan Campaigns
  • Create with AI
  • Distribute Press Releases
  • Amplify Content
  • All Products
  • Send a Release
  • Client Login
  • Resources
  • Blog
  • Journalists
  • RSS
  • General Inquiries
  • Editorial Bureaus
  • Partnerships
  • Media Inquiries
  • Worldwide Offices
  • Send a Release
  • Client Login
  • Resources
  • Blog
  • Journalists
  • RSS

WiMi Developed an Innovative Technology: Attentional Autoencoder Network for Efficient Recommendation System


News provided by

WiMi Hologram Cloud Inc.

Aug 29, 2023, 08:00 ET

Share this article

Share toX

Share this article

Share toX

BEIJING, Aug. 29, 2023 /PRNewswire/––WiMi Hologram Cloud Inc. (NASDAQ: WIMI) ("WiMi" or the "Company"), a leading global Hologram Augmented Reality ("AR") Technology provider, today announced that it developed an innovative technology, attentional autoencoder network for efficient recommendation system, which takes recommendation systems to a higher level of accuracy, efficiency and user experience.

WiMi has always been committed to advancing recommendation technology, and this latest technological breakthrough will provide users with more personalized and accurate recommendation services. The new technology employs an autoencoder network and introduces an attention mechanism to address the challenges of insufficient data, cold starts and information overload that exist in traditional recommendation systems.

In previous research, recommendation systems face insufficient data and cold-start problems and challenges. With inadequate data, WiMi's attention autoencoder network is able to achieve more accurate recommendations on insufficient data by learning the attribute information of users and items and automatically extracting the features that play an important role in the recommendation results. On the cold-start problem, WiMi's technology is able to personalize recommendations without sufficient historical data of the user by fusing the attribute information of the user and the item to provide a better recommendation experience for new users.

In addition to dealing with the problem of information overload, WiMi's attentional autoencoder network combines user and item attribute information to better understand users' interests and needs, providing a more personalized and accurate recommendation service to help users filter and access content that truly interests them.

Insufficient data problem: in recommendation systems, users rate only a small number of items, while most items have no feedback. This makes it difficult to achieve satisfactory recommendation services. This technique solves the problem by utilizing users' attribute information to improve the accuracy and coverage of recommendations.

Cold-start problem: cold start refers to the lack of sufficient data to make accurate recommendations for new users or new programs. In a cold start situation, traditional collaborative filtering methods cannot provide effective recommendations. This technique overcomes the cold start problem by introducing the user's attribute information, which enables personalized recommendations in the cold start situation.

Information overload problem: with the rapid development of information science, people are faced with a large amount of information, which is easy to fall into the dilemma of information overload. Traditional recommendation systems tend to make recommendations based only on the user's behavior, ignoring the user's personalized needs and preferences. This technology uses the user's attribute information to better understand the user's interests and needs, so as to provide more personalized recommendation services and alleviate the information overload problem.

The core innovation of WiMi's development of this technology is the introduction of the attention mechanism, which enables the model to automatically learn the importance of the attribute information of users and projects, and dynamically adjust the weight of the attribute information according to different application scenarios. In this way, WiMi's technology is able to adapt more flexibly to the differences between different users and projects and provide more efficient recommendation services.

WiMi's attentional autoencoder network is a technical framework for efficient recommendation systems that combine autoencoders and attention mechanisms to improve the accuracy and efficiency of recommendations. Its technical framework includes data preprocessing, autoencoder network, user and item feature extraction, attention mechanism, recommendation computation and evaluation, model training and optimization, hyperparameter selection and tuning.

Data preprocessing: raw data needs to be preprocessed before using the attention autoencoder network. This includes steps such as data processing, feature extraction and data normalization. Data processing removes noise and outliers, feature extraction extracts useful attribute information from the raw data, and data normalization scales the values of different features to the same range for stability in model training and recommendation calculation.

Autoencoder networks: the core of the attentional autoencoder network is the autoencoder. An autoencoder is a neural network structure that consists of an encoder and a decoder. The encoder converts the input data into a low-dimensional representation and the decoder reconstructs the low-dimensional representation into the input data. The goal of the autoencoder is to minimize the reconstruction error so that the reconstructed data is as similar as possible to the original data.

User and item feature extraction: the attentional autoencoder network utilizes attribute information of users and items to extract features. For users, attributes such as user's personal information, behavior and preferences can be used as input. For items, attributes such as categories, labels, descriptions and content features of items can be used as input. By feeding the attribute information of users and items into the encoder part of the autoencoder network, low-dimensional representations of users and items, i.e., user characteristics and item features, can be obtained.

Attention mechanism: after obtaining user characteristics and item features, the attention mechanism is introduced to automatically learn the importance of user and item attribute information. By giving different weights to different attribute information, the attention mechanism enables the model to focus on the attributes that are critical to the recommendation results. Attention weights can be obtained through learning or can be set based on domain knowledge. By introducing the attention mechanism, the quality and personalization of the recommendation results can be improved.

Recommendation computation and evaluation: after training, the attention autoencoder network can perform recommendation computation based on user and item features. The generated user features and item features are usually used to compute the user's rating or probability for the item. The recommendation results can be sorted based on the ratings or probabilities to provide the user with a personalized list of recommendations. To evaluate the effectiveness of recommendations, the quality of the recommendation results can be measured using evaluation benchmarks such as accuracy, recall, and mean average precision (MAP).

Model training and optimization: the training process of the attentional autoencoder network involves minimizing the recommendation error. Optimization algorithms such as backpropagation algorithm and gradient descent are usually used to update the weights and parameters of the model. During the training process, the training set can be used for updating the model parameters and the validation set can be used for model tuning and selection. Through the iterative training and optimization process, the attention autoencoder network can continuously improve the accuracy and efficiency of recommendations.

Hyperparameter selection and tuning: attentional autoencoder networks also involve the selection and tuning of some hyperparameters. For example, the number of layers and nodes of the autoencoder network, the type and parameters of the attention mechanism, the learning rate and the regularization term of the optimization algorithm. Choosing the right hyperparameters can have an important impact on the performance of the model and the recommendation results, so experiments and validation are needed to determine the optimal hyperparameter settings.

The attentional autoencoder network is a technical framework for efficient recommendation systems, which can extract features from the attribute information of users and items and perform recommendation computation based on importance weighting by combining autoencoder and attention mechanisms. The key steps of this framework include data preprocessing, construction of an autoencoder network, user and item feature extraction, introduction of attention mechanism, recommendation computation and evaluation. Through the training and optimization process, the attention autoencoder network can improve the accuracy, efficiency, and personalization of the recommendation system, and provide users with a better recommendation experience.

WiMi has conducted extensive experiments and evaluations of the technology and compared it with traditional recommendation methods. The experimental results show that the technology can significantly improve the quality and efficiency of recommendations and provide users with a more personalized and satisfying recommendation experience. Attentional autoencoder networks can be applied in several different scenarios for successful real-world applications. In social networks, news, movies, and music, the technology has demonstrated excellent recommendation results. User click-through and conversion rates are significantly improved, as is user satisfaction with the recommendation results.

In addition to significant improvements in recommendation effectiveness, WiMi's attentional autoencoder network is highly flexible. The technology is capable of handling large-scale data and can easily adapt to the needs of recommendation systems of different sizes and domains. Whether it is a small social network or a global e-commerce platform, the technology can efficiently provide personalized recommendation services. WiMi also plans to combine the attentional autoencoder network with other advanced recommendation technologies to further enhance recommendation effectiveness. For example, the combination of deep reinforcement learning technology will enable the recommendation system to continuously optimize the recommendations based on user feedback, providing more personalized and accurate recommendations.

About WIMI Hologram Cloud

WIMI Hologram Cloud, Inc. (NASDAQ:WIMI) is a holographic cloud comprehensive technical solution provider that focuses on professional areas including holographic AR automotive HUD software, 3D holographic pulse LiDAR, head-mounted light field holographic equipment, holographic semiconductor, holographic cloud software, holographic car navigation and others. Its services and holographic AR technologies include holographic AR automotive application, 3D holographic pulse LiDAR technology, holographic vision semiconductor technology, holographic software development, holographic AR advertising technology, holographic AR entertainment technology, holographic ARSDK payment, interactive holographic communication and other holographic AR technologies.

Safe Harbor Statements

This press release contains "forward-looking statements" within the Private Securities Litigation Reform Act of 1995. These forward-looking statements can be identified by terminology such as "will," "expects," "anticipates," "future," "intends," "plans," "believes," "estimates," and similar statements. Statements that are not historical facts, including statements about the Company's beliefs and expectations, are forward-looking statements. Among other things, the business outlook and quotations from management in this press release and the Company's strategic and operational plans contain forward−looking statements. The Company may also make written or oral forward−looking statements in its periodic reports to the US Securities and Exchange Commission ("SEC") on Forms 20−F and 6−K, in its annual report to shareholders, in press releases, and other written materials, and in oral statements made by its officers, directors or employees to third parties. Forward-looking statements involve inherent risks and uncertainties. Several factors could cause actual results to differ materially from those contained in any forward−looking statement, including but not limited to the following: the Company's goals and strategies; the Company's future business development, financial condition, and results of operations; the expected growth of the AR holographic industry; and the Company's expectations regarding demand for and market acceptance of its products and services.

Further information regarding these and other risks is included in the Company's annual report on Form 20-F and the current report on Form 6-K and other documents filed with the SEC. All information provided in this press release is as of the date of this press release. The Company does not undertake any obligation to update any forward-looking statement except as required under applicable laws.

SOURCE WiMi Hologram Cloud Inc.

21%

more press release views with 
Request a Demo

Modal title

Also from this source

WiMi Researches a Blockchain Privacy Protection System Based on Post-Quantum Threshold Algorithm

WiMi Hologram Cloud Inc. (NASDAQ: WiMi) ("WiMi" or the "Company"), a leading global Hologram Augmented Reality ("AR") Technology provider, today...

WiMi Leverages Quantum Supremacy to Break Through Data Limitations in Machine Learning

WiMi Hologram Cloud Inc. (NASDAQ: WiMi) ("WiMi" or the "Company"), a leading global Hologram Augmented Reality ("AR") Technology provider, they...

More Releases From This Source

Explore

Computer & Electronics

Computer & Electronics

Broadcast Tech

Broadcast Tech

Artificial Intelligence

Artificial Intelligence

Entertainment

Entertainment

News Releases in Similar Topics

Contact PR Newswire

  • Call PR Newswire at 888-776-0942
    from 8 AM - 9 PM ET
  • Chat with an Expert
  • General Inquiries
  • Editorial Bureaus
  • Partnerships
  • Media Inquiries
  • Worldwide Offices

Products

  • For Marketers
  • For Public Relations
  • For IR & Compliance
  • For Agency
  • All Products

About

  • About PR Newswire
  • About Cision
  • Become a Publishing Partner
  • Become a Channel Partner
  • Careers
  • Accessibility Statement
  • APAC
  • APAC - Simplified Chinese
  • APAC - Traditional Chinese
  • Brazil
  • Canada
  • Czech
  • Denmark
  • Finland
  • France
  • Germany
  • India
  • Indonesia
  • Israel
  • Italy
  • Japan
  • Korea
  • Mexico
  • Middle East
  • Middle East - Arabic
  • Netherlands
  • Norway
  • Poland
  • Portugal
  • Russia
  • Slovakia
  • Spain
  • Sweden
  • United Kingdom
  • Vietnam

My Services

  • All New Releases
  • Platform Login
  • ProfNet
  • Data Privacy

Do not sell or share my personal information:

  • Submit via [email protected] 
  • Call Privacy toll-free: 877-297-8921

Contact PR Newswire

Products

About

My Services
  • All News Releases
  • Platform Login
  • ProfNet
Call PR Newswire at
888-776-0942
  • Terms of Use
  • Privacy Policy
  • Information Security Policy
  • Site Map
  • RSS
  • Cookies
Copyright © 2025 Cision US Inc.