English (Paper)

https://editorialia.com/wp-content/uploads/2020/05/a-socio-technical-framework-for-digital-contact-tracing-2.jpg

A socio-technical framework for digital contact tracing

In their efforts to tackle the COVID-19 crisis, decision makers are considering the development and use of smartphone applications for contact tracing. Even though these applications differ in technology and methods, there is an increasing concern about their implications for privacy and human rights. Here we propose a framework to evaluate their suitability in terms of impact on the users, employed technology and governance methods.

https://editorialia.com/wp-content/uploads/2020/05/artificial-intelligence-and-machine-learning-in-software-as-a-medical-device_-discussion-paper-and-request-for-feedback-4.jpg

Artificial Intelligence and Machine Learning in Software as a Medical Device: discussion Paper and Request for Feedback

Artificial intelligence and machine learning technologies have the potential to transform health care by deriving new and important insights from the vast amount of data generated during the delivery of health care every day. Medical device manufacturers are using these technologies to innovate their products to better assist health care providers and improve patient care. The FDA is considering a total product lifecycle-based regulatory framework for these technologies.

https://editorialia.com/wp-content/uploads/2020/04/e74ee944-e7de-480c-9b60-665e97c78261.png

Encrypted Traffic Analysis

This report explores the current state of affairs in Encrypted Traffic Analysis and in particular discusses research and methods in 6 key use cases; viz. application identification, network analytics, user information identification, detection of encrypted malware, file/device/website/location fingerprinting and DNS tunnelling detection.

https://editorialia.com/wp-content/uploads/2020/04/cmglee_cambridge_science_festival_2015_da_vinci.jpg

The need for a system view to regulate artificial intelligence/machine learning-based software as medical device

FDA need to widen their scope from evaluating medical AI/ML-based products to assessing systems. This shift in perspective—from a product view to a system view—is central to maximizing the safety and efficacy of AI/ML in health care, but it also poses significant challenges for agencies like the FDA who are used to regulating products, not systems. We offer several suggestions for regulators to make this challenging but important transition

https://editorialia.com/wp-content/uploads/2020/04/defining-artificial-intelligence.jpg

Defining Artificial Intelligence |🇪🇸 Definiendo Inteligencia Artificial

The starting point to develop the operational definition is the definition of AI adopted by the High Level Expert Group on artificial intelligence. To derive this operational definition we have followed a mixed methodology. On one hand, we apply natural language processing methods to a large set of AI literature. On the other hand, we carry out a qualitative analysis on 55 key documents including artificial intelligence definitions from three complementary perspectives: policy, research and industry.

https://editorialia.com/wp-content/uploads/2020/03/mathematics-for-machine-learning.png

Mathematics for Machine Learning

Machine learning uses tools from a variety of mathematical fields. This document is an attempt to provide a summary of the mathematical background needed.

https://editorialia.com/wp-content/uploads/2019/10/read_attend_and_comment_-a_deep_architecture_for_automatic_news_comment_generation.jpg

Leer, asistir y comentar: una arquitectura profunda para la generación automática de comentarios

La generación automática de comentarios de noticias es una nueva plataforma para las técnicas de generación de lenguaje natural. En este documento, proponemos un procedimiento de “lectura, comentario y atención” para la generación de comentarios de noticias y formalizamos el procedimiento con una red de lectura y una red de generación. La red de lectura comprende un artículo de noticias y extrae algunos puntos importantes de él, luego la red de generación crea un comentario al atender los puntos discretos extraídos y el título de la noticia.