A study of the improvement of the quality of student teachers’ lessons in interactive (story)book reading through the use of data-feedback on observed lessons. Variables regarding the optimal time use, the quality of instruction and the student teachers’ pedagogical relation with pupils were included in a one group pre-test post-test design.
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In dit werkdocument is een aantal data bij elkaar gezet ter verder analyse van sociale uitsluiting op met name het economisch –structurele domein, waarbij onderscheid gemaakt wordt in materiele deprivatie en onvoldoende toegang tot social rights/(overheids)voorzieningen. Maar sociale uitsluiting heeft ook een sociaal culturele invalshoek met name dan onvoldoende. Met aparte samenvatting.
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In the course of our supervisory work over the years, we have noticed that qualitative research tends to evoke a lot of questions and worries, so-called frequently asked questions (FAQs). This series of four articles intends to provide novice researchers with practical guidance for conducting high-quality qualitative research in primary care. By ‘novice’ we mean Master’s students and junior researchers, as well as experienced quantitative researchers who are engaging in qualitative research for the first time. This series addresses their questions and provides researchers, readers, reviewers and editors with references to criteria and tools for judging the quality of qualitative research papers. The second article focused on context, research questions and designs, and referred to publications for further reading. This third article addresses FAQs about sampling, data collection and analysis. The data collection plan needs to be broadly defined and open at first, and become flexible during data collection. Sampling strategies should be chosen in such a way that they yield rich information and are consistent with the methodological approach used. Data saturation determines sample size and will be different for each study. The most commonly used data collection methods are participant observation, face-to-face in-depth interviews and focus group discussions. Analyses in ethnographic, phenomenological, grounded theory, and content analysis studies yield different narrative findings: a detailed description of a culture, the essence of the lived experience, a theory, and a descriptive summary, respectively. The fourth and final article will focus on trustworthiness and publishing qualitative research.
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Digital transformation has been recognized for its potential to contribute to sustainability goals. It requires companies to develop their Data Analytic Capability (DAC), defined as their ability to collect, manage and analyze data effectively. Despite the governmental efforts to promote digitalization, there seems to be a knowledge gap on how to proceed, with 37% of Dutch SMEs reporting a lack of knowledge, and 33% reporting a lack of support in developing DAC. Participants in the interviews that we organized preparing this proposal indicated a need for guidance on how to develop DAC within their organization given their unique context (e.g. age and experience of the workforce, presence of legacy systems, high daily workload, lack of knowledge of digitalization). While a lot of attention has been given to the technological aspects of DAC, the people, process, and organizational culture aspects are as important, requiring a comprehensive approach and thus a bundling of knowledge from different expertise. Therefore, the objective of this KIEM proposal is to identify organizational enablers and inhibitors of DAC through a series of interviews and case studies, and use these to formulate a preliminary roadmap to DAC. From a structure perspective, the objective of the KIEM proposal will be to explore and solidify the partnership between Breda University of Applied Sciences (BUas), Avans University of Applied Sciences (Avans), Logistics Community Brabant (LCB), van Berkel Logistics BV, Smink Group BV, and iValueImprovement BV. This partnership will be used to develop the preliminary roadmap and pre-test it using action methodology. The action research protocol and preliminary roadmap thereby developed in this KIEM project will form the basis for a subsequent RAAK proposal.
Digital transformation has been recognized for its potential to contribute to sustainability goals. It requires companies to develop their Data Analytic Capability (DAC), defined as their ability to manage and analyze data effectively. Despite the governmental efforts to promote digitalization, there seems to be a knowledge gap on how to proceed, with 37% of Dutch SMEs reporting a lack of knowledge, and 33% reporting a lack of support in developing DAC. While extensive attention has been given to the technological aspects of DAC, the people, process, and organizational culture aspects are as important, requiring a comprehensive approach and thus a bundling of knowledge from different expertise. Therefore, the objective of this KIEM proposal is to identify organizational enablers and inhibitors of DAC through a series of interviews and case studies, and use these to formulate a preliminary roadmap to DAC.
Professionals worden steeds vaker ondersteund door AI (Artificial Intelligence, kunstmatige intelligentie). Maar hoe ervaren professionals dat? Welke vorm van ondersteuning versterkt hun professie en wat willen ze vooral niet? In dit project onderzoeken we hoe verschillende rollen voor AI (besluitvormer, adviseur of kennisbron) worden ervaren door aankomend professionals in de preventieve zorg. Doel Krachtige samenwerking professional en AI Met het project willen we inzicht krijgen in welke invloed verschillende vormen van samenwerking met AI heeft op waarden als autonomie en vertrouwen bij professionals. Deze inzichten willen we vertalen naar vormen van samenwerking waarbij de kracht van zowel professional als AI optimaal tot uiting komt. Resultaten Het beoogde resultaat van het project is een set aan concrete richtlijnen voor het context-afhankelijk ontwerpen van mens-AI samenwerkingen die recht doen aan persoonlijke waarden. Looptijd 01 april 2021 - 31 maart 2022 Aanpak We onderzoeken verschillende rollen van AI door middel van Wizard of Oz experimenten. Hierin voeren studenten paramedische studies een preventieve gezondheidscheck uit met behulp van een gesimuleerd AI algoritme. De resulterende richtlijnen toetsen we in focusgroepen met zorg professionals. Relevantie voor beroepspraktijk Het gebruik van AI heeft grote potentie voor de beroepspraktijk. Er zijn echter ook zorgen over de impact van AI op de maatschappij. Met dit project dragen we bij aan een ethisch verantwoorde inzet van AI. Cofinanciering Dit project wordt uitgevoerd als onderdeel van het programma R-DAISES dat wordt uitgevoerd in het kader van NWA route 25 – verantwoorde waardecreatie met big data en is gefinancierd door NWO (Nederlandse Organisatie voor Wetenschappelijk Onderzoek)