Andreas Duenser
2025
A Dataset and Benchmark on Extraction of Novel Concepts on Trust in AI from Scientific Literature
Melanie McGrath
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Harrison Bailey
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Necva Bölücü
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Xiang Dai
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Sarvnaz Karimi
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Andreas Duenser
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Cécile Paris
Proceedings of The 23rd Annual Workshop of the Australasian Language Technology Association
This study investigates the extent to which linguistic typology influences the performance of two automatic speech recognition (ASR) systems across diverse language families. Using the FLEURS corpus and typological features from the World Atlas of Language Structures (WALS), we analysed 40 languages grouped by phonological, morphological, syntactic, and semantic domains. We evaluated two state-of-the-art multilingual ASR systems, Whisper and Seamless, to examine how their performance, measured by word error rate (WER), correlates with linguistic structures. Random Forests and Mixed Effects Models were used to quantify feature impact and statistical significance. Results reveal that while both systems leverage typological patterns, they differ in their sensitivity to specific domains. Our findings highlight how structural and functional linguistic features shape ASR performance, offering insights into model generalisability and typology-aware system development.
2021
Demonstrating the Reliability of Self-Annotated Emotion Data
Anton Malko
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Cecile Paris
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Andreas Duenser
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Maria Kangas
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Diego Molla
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Ross Sparks
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Stephen Wan
Proceedings of the Seventh Workshop on Computational Linguistics and Clinical Psychology: Improving Access
Vent is a specialised iOS/Android social media platform with the stated goal to encourage people to post about their feelings and explicitly label them. In this paper, we study a snapshot of more than 100 million messages obtained from the developers of Vent, together with the labels assigned by the authors of the messages. We establish the quality of the self-annotated data by conducting a qualitative analysis, a vocabulary based analysis, and by training and testing an emotion classifier. We conclude that the self-annotated labels of our corpus are indeed indicative of the emotional contents expressed in the text and thus can support more detailed analyses of emotion expression on social media, such as emotion trajectories and factors influencing them.
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- Cecile Paris 2
- Harrison Bailey 1
- Necva Bölücü 1
- Xiang Dai 1
- Maria Kangas 1
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