Yahoo Αναζήτηση Διαδυκτίου

Αποτελέσματα Αναζήτησης

  1. 28 Δεκ 2016 · Data ethics builds on the foundation provided by computer and information ethics but, at the same time, it refines the approach endorsed so far in this research field, by shifting the level of...

  2. 28 Δεκ 2016 · The ethics of data focuses on ethical problems posed by the collection and analysis of large datasets and on issues ranging from the use of big data in biomedical research and social sciences , to profiling, advertising and data philanthropy [11,12] as well as open data .

  3. The ethics of data focuses on ethical problems posed by the collection and analysis of large datasets and on issues ranging from the use of big data in biomedical research and social sciences [9], to profiling, advertising [10] and data philanthropy [11,12] as well as open data [13].

  4. This repository includes a list of data science and ethics materials around multiple topics of interest, alongside processes and templates for leading an online data ethics discussion group. These meetings and materials are designed to reduce the barrier to learning, reflection and critique on data science...

  5. 1 Φεβ 2017 · It highlights the need for ethical analyses to concentrate on the content and nature of computational operations — the interactions among hardware, software, and data — rather than on the variety of digital technologies that enables them.

  6. The ethics of data focuses on ethical problems posed by the collection and analysis of large datasets and on issues ranging from the use of big data in biomedical research and social sciences [9], to profiling, advertising [10] and data philanthropy [11,12] as well as open data [13].

  7. Data Ethics: Choices and Values. Benjamin Xie, Ph.D. McCoy Family Center for Ethics in Society - HAI. original slides & content by Kathleen Creel, Diana Acosta-Navas. We use data to inform our decisions. Evidence-based. Impartial. Reliable. What can we learn from a data set? Patterns. Correlations. Distributions. ... Choices. Assumptions. Values.