Conversational systems are widely used for various tasks, from answering general questions to domain-specific procedural tasks, such as cooking. While the effectiveness of metrics for evaluating general question answering (QA) tasks has been extensively studied, the evaluation of procedural QA remains a challenge as we do not know what answer types users prefer in such tasks. Existing studies on metrics evaluation often focus on general QA tasks and typically limit assessments to one answer type, such as short, SQuAD-like responses or longer passages. This research aims to achieve two objectives. Firstly, it seeks to identify the desired traits of conversational QA systems in procedural tasks, particularly in the context of cooking (RQ1). Second, it assesses how commonly used conversational QA metrics align with these traits and perform across various categories of correct and incorrect answers (RQ2). Our findings reveal that users generally favour concise conversational responses, except in time-sensitive scenarios where brief, clear answers hold more value (e.g. when heating in oil). While metrics effectively identify inaccuracies in short responses, several commonly employed metrics tend to assign higher scores to incorrect conversational answers when compared to correct ones. We provide a selection of metrics that reliably detect correct and incorrect information in short and conversational answers.
Automatic classification of behaviour change language can enhance conversational agents’ capabilities to adjust their behaviour based on users’ current situations and to encourage individuals to make positive changes. However, the lack of annotated language data of change-seekers hampers the performance of existing classifiers. In this study, we investigate the use of semi-supervised learning (SSL) to classify highly imbalanced texts around behaviour change. We assess the impact of including pseudo-labelled data from various sources and examine the balance between the amount of added pseudo-labelled data and the strictness of the inclusion criteria. Our findings indicate that while adding pseudo-labelled samples to the training data has limited classification impact, it does not significantly reduce performance regardless of the source of these new samples. This reinforces previous findings on the feasibility of applying classifiers trained on behaviour change language to diverse contexts.
Health behaviour change is a difficult and prolonged process that requires sustained motivation and determination. Conversa- tional agents have shown promise in supporting the change process in the past. One therapy approach that facilitates change and has been used as a framework for conversational agents is motivational interviewing. However, existing implementations of this therapy approach lack the deep understanding of user utterances that is essential to the spirit of motivational interviewing. To address this lack of understanding, we introduce the GLoHBCD, a German dataset of naturalistic language around health behaviour change. Data was sourced from a popular German weight loss forum and annotated using theoretically grounded motivational interviewing categories. We describe the process of dataset construction and present evaluation results. Initial experiments suggest a potential for broad applicability of the data and the resulting classifiers across different behaviour change domains. We make code to replicate the dataset and experiments available on Github.