研究業績リスト
ジャーナル論文 - rm_published_papers: Others
Self-Information Guided Speech Segmentation for Efficient Streaming ASR
公開済 04/2025
ICASSP 2025 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), 1 - 5
ジャーナル論文 - rm_published_papers: Scientific Journal
Language Development of Japanese Children Raised in Institutional Care
公開済 27/10/2024
Child: Care, Health and Development, 50, 6
ABSTRACT
Background
Nurturing environments have a critical influence on children's language development. It is unclear to what extent nurturing environments in institutions influence children's language development.
Methods
The present study investigated the early lexical development in Japanese children raised in institutional care (IC) (N = 86; 10–33 months; 37 boys) and compared their lexical skills to a large sample of age peers being raised in biological family care (BFC) (N = 1897; 937 boys) using vocabulary checklists.
Results
Our results present three main findings: (1) Japanese IC children did not exhibit a delay in productive vocabulary compared with BFC children, although their comprehensive vocabulary was delayed; (2) IC children who experienced maltreatment showed poorer vocabulary scores than non‐maltreated IC children; (3) both the duration at the institution and the number of books read to them significantly predicted children's vocabulary scores.
Conclusion
Our study suggests that the Japanese institutions included in the present study did not show a negative impact, at least on productive vocabulary, and may competently foster children's language development. We discussed the relationship between institutional environments and children's language development.
ジャーナル論文 - rm_published_papers: International Conference Proceedings
公開済 14/04/2024
ICASSP 2024 - 2024 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)
ジャーナル論文 - rm_misc: Others
公開済 08/03/2024
IEICE technical report : MICT2023-79, 123, 446, 12 - 16
Behavioral and psychological symptoms of dementia (BPSD) that develop in patients with dementia not only impose a heavy burden on caregivers, but also affect the quality of life of the patients themselves. If BPSD can be predicted in advance and symptoms can be dealt with, the burden on caregivers can be reduced. In a preliminary experiment, we predicted BPSD using machine learning based on environmental and vital sensor data collected from multiple nursing homes. However, the Average Precision of the PR curve is still low. In this study, we analyzed data to improve the accuracy of BPSD prediction.The data analysis confirms that certain symptoms have a 24-hour cycle. The results show the possibility of predicting the onset of BPSD using machine learning methods.
ジャーナル論文 - rm_misc: Others
公開済 06/03/2024
IEICE technical report : LOIS2023-58, 123, 429, 56 - 61
This paper explains the foundational concept of the “Self-evolving Smart Society” of the University of Electro-Communications as a new approach to solving social issues. It then describes the outline of the “Tokyo BPSD Project” which applies this concept to the issue of elderly individuals with dementia (BPSD), and finally reports on the current findings and future prospects.
ジャーナル論文 - rm_published_papers: International Conference Proceedings
Prediction of BPSD Using Environmental and Vital Sensor Data
公開済 05/02/2024
2024 IEEE First International Conference on Artificial Intelligence for Medicine, Health and Care (AIMHC)
ジャーナル論文 - rm_published_papers: Others
公開済 02/2024
IWSDS2024, 19 - 19
ジャーナル論文 - rm_published_papers: Others
Model of infant vocabulary acquisition through mental state modeling and reinforcement learning
公開済 08/2023
AMLAP, 77 - 77
ジャーナル論文 - rm_misc: Others
Validation of Scientific Paper Recommendations Methodology Based on Viewpoints of Abstracts
公開済 2023
Proceedings of the Annual Conference of JSAI, JSAI2023, 4Xin105 - 4Xin105
In paper recommendations, we propose a method using abstract classification to provide not only lists of papers to be read but also the reasons for the recommendations in terms of the author's viewpoints. In conventional methods, the similarity between a paper as a search query and papers that are candidates for recommendation is judged on the overall similarity, and it is difficult to provide a reason for the recommendation. In this paper, each sentence of the abstract is classified in viewpoints such as background, methods, and results, and we analyze whether the papers in the citation relationship can be classified according to each viewpoint. Then, we propose and validate methods for a paper recommendation based on the similarity of each viewpoint. The results show the effectiveness of the method based on similarity per viewpoint and the possibility of improving performance by combining it with conventional methods.
ジャーナル論文 - rm_misc: Others
公開済 2023
人工知能学会言語・音声理解と対話処理研究会資料, 99