Fair Effective and Sustainable Talent Management using Conditional Network Emb...
The ongoing industrial revolution is the driver of a rapidly advancing shift in the division of labour between humans on the one hand and machines and algorithms on the other. This is the cause of significant challenges in the job...
The ongoing industrial revolution is the driver of a rapidly advancing shift in the division of labour between humans on the one hand and machines and algorithms on the other. This is the cause of significant challenges in the job market, such as the emergence of important skills gaps that need to be addressed by extensive upskilling or reschooling of workers. This requires considerable forethought and hence insight into the future job markets, as well as an understanding of how to best meet the job market's current and future needs. Substantial value is to be gained at all levels: from individual workers, over talent and human resources management within companies, to the determination of policy at governmental level.
This Proof of Concept proposal will address these challenges by leveraging results from the ERC Consolidator Grant FORSIED which lend themselves well to a uniquely suited and elegant data-driven approach. In particular, the method Conditional Network Embedding (CNE) offers a powerful framework for making sense of the diverse information relevant to human talent and the job market. It provides a platform to tackle a diverse range of use cases in a uniform manner. Moreover, a distinguishing advantage of CNE is that it offers mechanisms for compensating for existing biases in the job market, ensuring fairness, non-discrimination, and inclusion when deployed to these use cases.
During the project, a prototype platform will be developed, in tight collaboration with actors in the private and public sectors. This prototype will be evaluated, the IPR position investigated, and a market study conducted leading to a road to market strategy.ver más
Seleccionando "Aceptar todas las cookies" acepta el uso de cookies para ayudarnos a brindarle una mejor experiencia de usuario y para analizar el uso del sitio web. Al hacer clic en "Ajustar tus preferencias" puede elegir qué cookies permitir. Solo las cookies esenciales son necesarias para el correcto funcionamiento de nuestro sitio web y no se pueden rechazar.
Cookie settings
Nuestro sitio web almacena cuatro tipos de cookies. En cualquier momento puede elegir qué cookies acepta y cuáles rechaza. Puede obtener más información sobre qué son las cookies y qué tipos de cookies almacenamos en nuestra Política de cookies.
Son necesarias por razones técnicas. Sin ellas, este sitio web podría no funcionar correctamente.
Son necesarias para una funcionalidad específica en el sitio web. Sin ellos, algunas características pueden estar deshabilitadas.
Nos permite analizar el uso del sitio web y mejorar la experiencia del visitante.
Nos permite personalizar su experiencia y enviarle contenido y ofertas relevantes, en este sitio web y en otros sitios web.