Auditory brain passage retrieval : cross-sensory EEG training for neural information retrieval
McGuire, Niall and Moshfeghi, Yashar (2026) Auditory brain passage retrieval : cross-sensory EEG training for neural information retrieval. Other. arXiv. (https://doi.org/10.48550/arXiv.2601.14001)
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Abstract
Query formulation from internal information needs remains fundamentally challenging across all Information Retrieval paradigms due to cognitive complexity and physical impairments. Brain Passage Retrieval (BPR) addresses this by directly mapping EEG signals to passage representations without intermediate text translation. However, existing BPR research exclusively uses visual stimuli, leaving critical questions unanswered: Can auditory EEG enable effective retrieval for voice-based interfaces and visually impaired users? Can training on combined EEG datasets from different sensory modalities improve performance despite severe data scarcity? We present the first systematic investigation of auditory EEG for BPR and evaluate cross-sensory training benefits. Using dual encoder architectures with four pooling strategies (CLS, mean, max, multi-vector), we conduct controlled experiments comparing auditory-only, visual-only, and combined training on the Alice (auditory) and Nieuwland (visual) datasets. Results demonstrate that auditory EEG consistently outperforms visual EEG, and cross-sensory training with CLS pooling achieves substantial improvements over individual training: 31% in MRR (0.474), 43% in Hit@1 (0.314), and 28% in Hit@10 (0.858). Critically, combined auditory EEG models surpass BM25 text baselines (MRR: 0.474 vs 0.428), establishing neural queries as competitive with traditional retrieval whilst enabling accessible interfaces. These findings validate auditory neural interfaces for IR tasks and demonstrate that cross-sensory training addresses data scarcity whilst outperforming single-modality approaches.
ORCID iDs
McGuire, Niall
ORCID: https://orcid.org/0009-0005-9738-047X and Moshfeghi, Yashar
ORCID: https://orcid.org/0000-0003-4186-1088;
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Item type: Monograph(Other) ID code: 95498 Dates: DateEvent20 January 2026PublishedNotes: Accepted At ECIR 2026 Subjects: Science > Mathematics > Electronic computers. Computer science Department: Faculty of Science > Computer and Information Sciences Depositing user: Pure Administrator Date deposited: 05 Feb 2026 16:47 Last modified: 11 Feb 2026 02:12 Related URLs: URI: https://strathprints.strath.ac.uk/id/eprint/95498
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