192 research outputs found

    Temporal Mental Health Dynamics on Social Media

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    We describe a set of experiments for building a temporal mental health dynamics system. We utilise a pre-existing methodology for distant-supervision of mental health data mining from social media platforms and deploy the system during the global COVID-19 pandemic as a case study. Despite the challenging nature of the task, we produce encouraging results, both explicit to the global pandemic and implicit to a global phenomenon, Christmas Depression, supported by the literature. We propose a methodology for providing insight into temporal mental health dynamics to be utilised for strategic decision-making

    Alzheimer's Dementia Recognition Using Acoustic, Lexical, Disfluency and Speech Pause Features Robust to Noisy Inputs

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    We present two multimodal fusion-based deep learning models that consume ASR transcribed speech and acoustic data simultaneously to classify whether a speaker in a structured diagnostic task has Alzheimer's Disease and to what degree, evaluating the ADReSSo challenge 2021 data. Our best model, a BiLSTM with highway layers using words, word probabilities, disfluency features, pause information, and a variety of acoustic features, achieves an accuracy of 84% and RSME error prediction of 4.26 on MMSE cognitive scores. While predicting cognitive decline is more challenging, our models show improvement using the multimodal approach and word probabilities, disfluency and pause information over word-only models. We show considerable gains for AD classification using multimodal fusion and gating, which can effectively deal with noisy inputs from acoustic features and ASR hypotheses.Comment: INTERSPEECH 2021. arXiv admin note: substantial text overlap with arXiv:2106.0966

    Studying Creativity via Computational Modelling

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    One way to investigate creativity is to build artificial agents which might be capable of creative output -- perhaps basing them on theories of human cognition and creativity -- and see how well they work. This talk will describe recent and ongoing work on a range of projects in the Computational Creativity Lab at Queen Mary University of London, explain how they relate to general models of human cognition, and discuss what insights they can give us. We will examine general statistical models of sequential and hierarchical learning, discuss how they can be connected to higher-level conceptual structures, and show how they can be applied to model language and music while generating interesting, novel outputs. Matthew Purver is Reader in Computational Linguistics at Queen Mary University of Londo

    Helping, I Mean Assessing Psychiatric Communication: An Applicaton of Incremental Self-Repair Detection

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    18th SemDial Workshop on the Semantics and Pragmatics of Dialogue (DialWatt), 1-3 September 2014, Edinburgh, ScotlandSelf-repair is pervasive in dialogue, and models thereof have long been a focus of research, particularly for disfluency detection in speech recognition and spoken dialogue systems. However, the generality of such models across domains has received little attention. In this paper we investigate the application of an automatic incremental self-repair detection system, STIR, developed on the Switchboard corpus of telephone speech, to a new domain – psychiatric consultations. We find that word-level accuracy is reduced markedly by the differences in annotation schemes and transcription conventions between corpora, which has implications for the generalisability of all repair detection systems. However, overall rates of repair are detected accurately, promising a useful resource for clinical dialogue studies

    Probabilistic Type Theory for Incremental Dialogue Processing

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    Hough J, Purver M. Probabilistic Type Theory for Incremental Dialogue Processing. In: Proceedings of the EACL 2014 Workshop on Type Theory and Natural Language Semantics (TTNLS). EACL: ACL; 2014: 80-88

    Alzheimer’s Dementia Recognition From Spontaneous Speech Using Disfluency and Interactional Features

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    Alzheimer’s disease (AD) is a progressive, neurodegenerative disorder mainly characterized by memory loss with deficits in other cognitive domains, including language, visuospatial abilities, and changes in behavior. Detecting diagnostic biomarkers that are noninvasive and cost-effective is of great value not only for clinical assessments and diagnostics but also for research purposes. Several previous studies have investigated AD diagnosis via the acoustic, lexical, syntactic, and semantic aspects of speech and language. Other studies include approaches from conversation analysis that look at more interactional aspects, showing that disfluencies such as fillers and repairs, and purely nonverbal features such as inter-speaker silence, can be key features of AD conversations. These kinds of features, if useful for diagnosis, may have many advantages: They are simple to extract and relatively language-, topic-, and task-independent. This study aims to quantify the role and contribution of these features of interaction structure in predicting whether a dialogue participant has AD. We used a subset of the Carolinas Conversation Collection dataset of patients with AD at moderate stage within the age range 60–89 and similar-aged non-AD patients with other health conditions. Our feature analysis comprised two sets: disfluency features, including indicators such as self-repairs and fillers, and interactional features, including overlaps, turn-taking behavior, and distributions of different types of silence both within patient speech and between patient and interviewer speech. Statistical analysis showed significant differences between AD and non-AD groups for several disfluency features (edit terms, verbatim repeats, and substitutions) and interactional features (lapses, gaps, attributable silences, turn switches per minute, standardized phonation time, and turn length). For the classification of AD patient conversations vs. non-AD patient conversations, we achieved 83% accuracy with disfluency features, 83% accuracy with interactional features, and an overall accuracy of 90% when combining both feature sets using support vector machine classifiers. The discriminative power of these features, perhaps combined with more conventional linguistic features, therefore shows potential for integration into noninvasive clinical assessments for AD at advanced stages

    Strongly Incremental Repair Detection

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    Hough J, Purver M. Strongly Incremental Repair Detection. In: Proceedings of the 2014 Conference on Empirical Methods in Natural Language Processing (EMNLP). Doha, Qatar: ACL; 2014: 78-89.We present STIR (STrongly Incremental Repair detection), a system that detects speech repairs and edit terms on transcripts incrementally with minimal latency. STIR uses information-theoretic measures from n-gram models as its principal decision features in a pipeline of classifiers detecting the different stages of repairs. Results on the Switchboard disfluency tagged corpus show utterance-final accuracy on a par with state-of-the-art incremental repair detection methods, but with better incremental accuracy, faster time-to-detection and less computational overhead. We evaluate its performance using incremental metrics and propose new repair processing evaluation standards
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