AI 支援的可信資訊

隨著資訊以前所未有的速度增長,假新聞和人工智慧產生的幻覺正在增加,保護科學和醫學資訊的品質和完整性比以往任何時候都更加重要。
在Elsevier,我們所做的一切都根植於可信、高品質、經過驗證的資訊。我們的人工智慧工具借鑒了數以百萬計的準確、可驗證和最新的資訊,包括來自科學期刊、醫學書籍的同行評審文章和摘要,以及研究人員、醫師和護理師每天依賴的實證臨床概述。
很遺憾,我們無法支援你的瀏覽器。如果可以,請升級到新版本,或使用 Mozilla Firefox、Microsoft Edge、Google Chrome 或 Safari 14 或更新版本。如果無法升級,而且需要支援,請將你的回饋寄給我們。
We enhance knowledge with technology and innovation so you can stay ahead in an ever-changing world.

Combining trusted content, human expertise and responsible AI to help researchers, educators and healthcare professionals worldwide drive discovery, innovation and better patient care. Our AI-powered tools make it easier to find, understand and apply reliable information — improving productivity and outcomes for you, your team and your organization.
在開發和改進我們的工具時,我們匯集了來自不同研究領域、教育或臨床照護的同事的專業知識,以及我們所服務的研究和醫療社群的持續意見。創新是一個反覆的過程,因此我們在測試和建立所有產品(包括生成式 AI 工具)時,從全球數萬名用戶中獲得大量回饋,以確保它們能為用戶的工作增加價值。
我們努力確保整個解決方案組合具有安全和負責任的 AI 。這意味著我們考慮到解決方案的現實世界影響,旨在防止偏見,能夠解釋我們的解決方案如何運作,保持人工監督並保護隱私。

隨著資訊以前所未有的速度增長,假新聞和人工智慧產生的幻覺正在增加,保護科學和醫學資訊的品質和完整性比以往任何時候都更加重要。
在Elsevier,我們所做的一切都根植於可信、高品質、經過驗證的資訊。我們的人工智慧工具借鑒了數以百萬計的準確、可驗證和最新的資訊,包括來自科學期刊、醫學書籍的同行評審文章和摘要,以及研究人員、醫師和護理師每天依賴的實證臨床概述。

We set clear standards and provide guidance for the ethical use of AI in journal submissions and academic writing.
Defined roles for generative AI in research and publishing
Disclosure and transparency requirements
Best practices for using AI-assisted technologies
Commitment to research integrity and originality
Elsevier has a long history as a trusted source for curated, peer-reviewed scientific content with domain-specific knowledge.
Learn more about how we ensure Responsible AI use and protect user data privacy, including our Five Responsible AI Principles to drive responsible, ethical and appropriate use
For each use case and solution, we select the most appropriate large language model from a carefully chosen range of leading providers — including OpenAI, Anthropic and others — hosted securely on cloud services from Microsoft Azure or AWS. We tailor model selection to meet the specific needs of the task, ensuring both performance and safety.
At Elsevier, we recognize that the proper handling of personal data is very important to our customers and the communities we serve. As such, we are committed to behaving with integrity and responsibility regarding data privacy.
All user inputs and data are treated in line with our Privacy Policy and Responsible AI principles
We treat personal data in line with applicable privacy laws, such as the General Data Protection Regulation (GDPR) and the California Consumer Privacy Act (CCPA). We also take further steps to ensure we meet the privacy expectations of our users and the scientific community.
Read more about our privacy principles
A user’s prompt/ask/document is sent securely using TLS 1.2 or higher to the trusted Elsevier environment. The prompt is parsed for intent and broken down into separate prompts by an embeddings model to retrieve information from our content store.
The prompt, along with content response, is then sent using TLS 1.2 or higher to our foundational model providers within the trusted Elsevier environment.
A grounded, generated response is then presented to the user in the Elsevier AI solution.
User prompts and responses in their conversation history are secured in encrypted databases with AES-256 level encryption.
Our architecture and associated contracts preclude third-party model providers from logging or training models based on users’ prompts.
Elsevier strictly controls what content is shared with, retained by, or used for training by vendors. Neither Microsoft (Azure) nor AWS (Bedrock) retain Elsevier’s content or customer prompts for training or storage.
User prompts remain private; only aggregated, anonymized insights are used by Elsevier to improve the service.
Data security and encryption: Your data is securely stored and encrypted at rest using AES-256 within the trusted Elsevier environment. Your data is encrypted in transit using TLS 1.2 or higher. Please see Encryption Standards policy for more details.
Elsevier has zero-retention contracts in place with our foundation model providers. This ensures that your prompts and documents are never stored or used to train any large language models (LLMs). By using Elsevier’s AI solutions, your organization benefits from our enhanced data privacy and enterprise-grade safeguards.
All Elsevier AI services, including our product environments, are hosted in leading cloud data centers provided by Amazon Web Services (AWS) or Microsoft Azure. Services may be hosted in Europe or the US based on application and regulatory requirements.
We protect your data wherever it goes. At rest, it’s locked down with Advanced Encryption Standard (AES)-256 encryption. When your data is in transit, we use TLS 1.2 or higher, which not only encrypts data but also authenticates the server and verifies data integrity.
We use industry best practices such as web application firewalls, application and infrastructure vulnerability scanning, secure code reviews, bug bounties, and other preventive, detective, and response controls to protect our systems and your data from attackers.
Our architecture and associated contracts preclude third-party model providers from logging or training models based on users’ conversations.
All cross-border transfers of personal data are subject to appropriate safeguards compliant with the GDPR, including the EU Standard Contractual Clauses. Customer personal data is not transferred to China.
Elsevier advances sustainability through our products, research advocacy and social responsibility programs. We take specific steps to reduce the environmental impact of our AI tools, including:
Using a multi-model approach, which allows us to apply smaller, more energy-efficient models for less intensive tasks, reducing overall energy consumption
Leveraging Microsoft Azure and AWS data centers powered by green electricity
Maintaining a robust data governance program to minimize unnecessary data storage and processing, supporting energy efficiency
As part of RELX, Elsevier prioritizes environmental responsibility by reducing our carbon footprint and advancing sustainable practices. We align with the UN Sustainable Development Goals, especially Climate Action and Responsible Consumption, and are committed to shaping a sustainable future. Learn more about our environmental efforts across our environmental efforts across RELX.
Elsevier’s responsible AI use is guided by our Responsible AI Principles, which are integrated throughout the development lifecycle of our solutions. Learn more about Elsevier Responsible AI Principles.