Dialog state tracking in a spoken dialog system is the task that tracks the flow of a dialog and identifies accurately what a user wants from the utterance. Since the success of a dialog is influenced by the ability of the system to catch the requirements of the user, accurate state tracking is important for spoken dialog systems. This paper proposes a two-step neural dialog state tracker which is composed of an informativeness classifier and a neural tracker. The informativeness classifier which is implemented by a CNN first filters out noninformative utterances in a dialog. Then, the neural tracker estimates dialog states from the remaining informative utterances. The tracker adopts the attention mechanism and the hierarchical softmax for its performance and fast training. To prove the effectiveness of the proposed model, we do experiments on dialog state tracking in the human-human task-oriented dialogs with the standard DSTC4 data set. Our experimental results prove the effectiveness of the proposed model by showing that the proposed model outperforms the neural trackers without the informativeness classifier, the attention mechanism, or the hierarchical softmax.
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http://dx.doi.org/10.1155/2018/5798684 | DOI Listing |
Front Health Serv
December 2024
Department of Obstetrics and Gynecology, School of Medicine, University of North Carolina at Chapel Hill, Chapel Hill, NC, United States.
Objective: Centering birthing parents is critical for improving reproductive health policies and practices. This study investigates patient perspectives on measuring the quality of perinatal care.
Methods: A cross-sectional qualitative research study was conducted at an academic medical center in the Southeastern United States.
Hum Resour Health
December 2024
WHO European Region, Copenhagen, Denmark.
Background: The recent announcement of the next WHO State of the World's Nursing and Midwifery Reports calls for a review of the state of nursing and midwifery worldwide. In the WHO European region, a broad set of health system reforms have been introduced in Central Asian countries (CACs), namely, the Republic of Kazakhstan, the Kyrgyz Republic, the Republic of Tajikistan, Turkmenistan and the Republic of Uzbekistan. These reforms have become the focus of a series of sub-regional policy dialogs between CACs, led by government chief nursing and midwifery officers, to accelerate the implementation of a package of policies to strengthen the capacity of nurses and midwives and build health system resilience.
View Article and Find Full Text PDFCommunity Ment Health J
December 2024
McLean Hospital, Belmont, MA, USA.
This study examined the impact of Patient-Centered Communication (PCC), Open Dialogue-inspired changes to rounding practices and culture, on patient perceptions of care on an inpatient psychotic disorders unit. A retrospective cohort analysis was conducted based on medical records, restraint and seclusion records, and hospital Perceptions of Care (PoC) surveys. The analysis compared data from 6-month periods before and after implementation of PCC to quantify whether the implementation of PCC was associated with more positive care ratings.
View Article and Find Full Text PDFChaos
December 2024
Faculty of Engineering and Natural Sciences, Kadir Has University, 34083 Istanbul, Turkey.
Regime switching, the process where complex systems undergo transitions between qualitatively different dynamical states due to changes in their conditions, is a widespread phenomenon, from climate and ocean circulation, to ecosystems, power grids, and the brain. Capturing the mechanisms that give rise to isolated or sequential switching dynamics, as well as developing generic and robust methods for forecasting, detecting, and controlling them is essential for maintaining optimal performance and preventing dysfunctions or even collapses in complex systems. This Focus Issue provides new insights into regime switching, covering the recent advances in theoretical analysis harnessing the reduction approaches, as well as data-driven detection methods and non-feedback control strategies.
View Article and Find Full Text PDFmedRxiv
November 2024
Africa Health Research Institute, University of KwaZulu-Natal, Durban, South Africa.
Background: The measurement of cause-specific mortality is critical for health system planning but remains a challenge in many low-resource settings due to societal, legal, and logistical barriers. We present a co-development process with community members for the design and implementation of an autopsy program to improve cause of death data in a historically underserved population.
Methods: We sought to develop an autopsy program at the Africa Health Research Institute (AHRI) Health and Demographic Surveillance Site (HDSS).
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