Title : Capturing Ambiguity in Crowdsourcing Frame Disambiguation

Presenter Anca Dumitrache
Abstract FrameNet is a computational linguistics resource composed of semantic frames, high-level concepts that represent the meanings of words. This talk will present an approach to gather frame disambiguation annotations in sentences using a crowdsourcing approach with multiple workers per sentence to capture inter-annotator disagreement. The approach was tested in an experiment over a set of 433 sentences annotated with frames from the FrameNet corpus, showing that the aggregated crowd annotations achieve an F1 score greater than 0.67 as compared to expert linguists. The presentation will also highlight cases where the crowd annotation was correct even though the expert is in disagreement, arguing for the need to have multiple annotators per sentence. Most importantly, we examine cases in which crowd workers could not agree, and demonstrate that these cases exhibit ambiguity, either in the sentence, frame, or the task itself, and argue that collapsing such cases to a single, discrete truth value (i.e. correct or incorrect) is inappropriate, creating arbitrary targets for machine learning.

Title : Quantifying the work environment for understanding employees wellbeing

Presenter Bojan Simoski
Abstract Nowadays, companies put big emphasis on employees wellbeing, as it has be linked with increased productivity, and therefore better output for the organisations. Quantifying the workplace can be done using technology, ex. by means of smartphones and IoT. The idea in this project is to develop a system for quantifying the workplace in order to visualize the quantified work environment, and analyze behavioral & environmental metrics that can influence wellbeing at work. Wellbeing and productivity at work can be influenced by both the social environment and the physical environment, and our system quantifies the workplaces from both perspectives.