← Back

Affective Computing

Topic spotlight
TopicWorld Wide

affective computing

Discover seminars, jobs, and research tagged with affective computing across World Wide.
2 curated items1 Position1 Seminar
Updated 2 days ago
2 items · affective computing
2 results
Position

Dr Dimitrios Kollias

School of Electronic Engineering & Computer Science, Queen Mary University of London (QMUL)
Queen Mary University of London, UK
Dec 5, 2025

Two open Ph.D. positions in Artificial Intelligence, Machine and Deep Learning for Affective Computing. 1) A fully funded 3-years PhD studentship is available for UK home candidates. The PhD studentship will cover tuition fees and offer a London stipend of £19,668 per year. International candidates can apply and they get a reduced international tuition fee and the stipend. 2) A fully funded 4-years PhD studentship is available for Chinese candidates. This studentship is co-funded by the China Scholarship Council (CSC). CSC is offering a monthly stipend of £1350 (tax free) to cover living expenses and QMUL is waving fees and hosting the student.

SeminarNeuroscienceRecording

Data-driven Artificial Social Intelligence: From Social Appropriateness to Fairness

Hatice Gunes
Department of Computer Science and Technology, University of Cambridge
Mar 15, 2021

Designing artificially intelligent systems and interfaces with socio-emotional skills is a challenging task. Progress in industry and developments in academia provide us a positive outlook, however, the artificial social and emotional intelligence of the current technology is still limited. My lab’s research has been pushing the state of the art in a wide spectrum of research topics in this area, including the design and creation of new datasets; novel feature representations and learning algorithms for sensing and understanding human nonverbal behaviours in solo, dyadic and group settings; designing longitudinal human-robot interaction studies for wellbeing; and investigating how to mitigate the bias that creeps into these systems. In this talk, I will present some of my research team’s explorations in these areas including social appropriateness of robot actions, virtual reality based cognitive training with affective adaptation, and bias and fairness in data-driven emotionally intelligent systems.