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research on fake news

Why do Americans share so much fake news? One big reason is they aren’t paying attention, new research suggests

a new study in Nature

Lack of attention was the driving factor behind 51.2% of misinformation sharing among social media users who participated in an experiment conducted by a group of researchers from MIT, the University of Regina in Canada, University of Exeter Business School in the United Kingdom and Center for Research and Teaching in Economics in Mexico.

 

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more on fake news in this IMS blog
https://blog.stcloudstate.edu/ims?s=fake+news

digital primary sources in teaching and research

UKSG webinar – The importance and use of digital primary sources in teaching and research
#UKSGWebinar

poll: do scholars in your institution have access to internal support or training for digital primary source research and teaching

primary sources poll

fascilitatorsPeter Foster with Wiley, facilitator
Hugh Murphy, Head of Collections and Content, Maynooth Univesity Library, Ireland
@hughtweet

what is a primary source.
Functionality (ability to access)
U collections as part of a larger U ecosystem. Conceptional change for Special Collections
Teaching Learning and Research: “digitally-enabled and technology-supported learning” – strategic planning
Research: digital humanties dhlag.yale.edu/project/vogue
Open Access (publishers ARE business). For a small country (university), how much will a publisher pay attention? Will a standard pay attention to OCR a 16th century document.

Sarah Evans, Research and Collections Engagement Manager, Royal Geographical Society with IBG

https://www.rgs.org/about/our-collections/
Collaborative Doctoral Program
WDA Research Fellowships

Kathryin Simpson, Lecturer in Information Studies, U of Glasgow
Hidden Voices: Using the digital archive to critically negotiate histories

digital environment is not just a PDF, but a whole new environment.
record open and accessible by these docs from Africa

Q&A: does the access to primary sources demand different approach to critical thinking.

3D renderer, Blockchain, Bot, Game, Neural Network, Search Engine, Text Editor

Build your own X, a collection of tutorials to build your own 3D renderer, Blockchain, Bot, Game, Neural Network, Search Engine, Text Editor, and much more! (27 things to build!) from r/programming

https://github.com/danistefanovic/build-your-own-x

Bagchi, M. (2020). Conceptualising a Library Chatbot using Open Source Conversational AI. DESIDOC Journal of Library & Information Technology, 40, 329–333. https://doi.org/10.14429/djlit.40.6.1561

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more on chatbots in this IMS blog
https://blog.stcloudstate.edu/ims?s=chatbot

how to research questions

Research and refining research questions (for graduate students) – resources

 

Research questions from BabakFarshchian

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Specifying a purpose, Purpose statement, Hypostheses and research questions from Muhammad Naushad Ghazanfar

Stepping stones to_good_research_questions from Mónica Gilbert-Sáez

AI and ed research

https://www.scienceopen.com/document/read?vid=992eaf61-35dd-454e-aa17-f9f8216b381b

This article presents an examination of how education research is being remade as an experimental data-intensive science. AI is combining with learning science in new ‘digital laboratories’ where ownership over data, and power and authority over educational knowledge production, are being redistributed to research assemblages of computational machines and scientific expertise.

Research across the sciences, humanities and social sciences is increasingly conducted through digital knowledge machines that are reconfiguring the ways knowledge is generated, circulated and used (Meyer and Schroeder, 2015).

Knowledge infrastructures, such as those of statistical institutes or research-intensive universities, have undergone significant digital transformation with the arrival of data-intensive technologies, with knowledge production now enacted in myriad settings, from academic laboratories and research institutes to commercial research and development studios, think tanks and consultancies. Datafied knowledge infrastructures have become hubs of command and control over the creation, analysis and exchange of data (Bigo et al., 2019).

The combination of AI and learning science into an AILSci research assemblage consists of particular forms of scientific expertise embodied by knowledge actors – individuals and organizations – identified by categories including science of learning, AIED, precision education and learning engineering.

Precision education overtly uses psychological, neurological and genomic data to tailor or personalize learning around the unique needs of the individual (Williamson, 2019). Precision education approaches include cognitive tracking, behavioural monitoring, brain imaging and DNA analysis.

Expert power is therefore claimed by those who can perform big data analyses, especially those able to translate and narrate the data for various audiences. Likewise, expert power in education is now claimed by those who can enact data-intensive science of learning, precision education and learning engineering research and development, and translate AILSci findings into knowledge for application in policy and practitioner settings.

the thinking of a thinking infrastructure is not merely a conscious human cognitive process, but relationally performed across humans and socio-material strata, wherein interconnected technical devices and other forms ‘organize thinking and thought and direct action’.
As an infrastructure for AILSci analyses, these technologies at least partly structure how experts think: they generate new understandings and knowledge about processes of education and learning that are only thinkable and knowable due to the computational machinery of the research enterprise.

Big data-based molecular genetics studies are part of a bioinformatics-led transformation of biomedical sciences based on analysing exceptional volumes of data (Parry and Greenhough, 2018), which has transformed the biological sciences to focus on structured and computable data rather than embodied evidence itself.

Isin and Ruppert (2019) have recently conceptualized an emergent form of power that they characterize as sensory power. Building on Foucault, they note how sovereign power gradually metamorphosed into disciplinary power and biopolitical forms of statistical regulation over bodies and populations.
Sensory power marks a shift to practices of data-intensive sensing, and to the quantified tracking, recording and representing of living pulses, movements and sentiments through devices such as wearable fitness monitors, online natural-language processing and behaviour-tracking apps. Davies (2019: 515–20) designates these as ‘techno-somatic real-time sensing’ technologies that capture the ‘rhythms’ and ‘metronomic vitality’ of human bodies, and bring about ‘new cyborg-type assemblages of bodies, codes, screens and machines’ in a ‘constant cybernetic loop of action, feedback and adaptation’.

Techno-somatic modes of neural sensing, using neurotechnologies for brain imaging and neural analysis, are the next frontier in AILSci. Real-time brainwave sensing is being developed and trialled in multiple expert settings.

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more on AI in this IMS blog
https://blog.stcloudstate.edu/ims?s=artificial+intelligence

research in/about VR

https://account.altvr.com/events/1459609665267564719

Tuesday, June 16, 2020 from 1:00 PM to 2:00 PM (CDT)

This event will be an expert panel considering research in/about VR. The experts in the panel are; Sam Reno, Géraldine Perriguey, Anthony Chaston PhD and Evelien Ydo who all have presented for the research track before (biographies below, see the EDVR YouTube channel for their previous presentations). The event will be highly interactive, where the audience is welcomed to introduce topics and questions for the panel to discuss. At the end of the event there will be some time to network as well.

The Educators in VR Research Team features researchers from across the spectrum of VR/AR/XR research and development, coming together to share their knowledge, techniques, and research and learn from each other. Join us to discuss the possibilities and potential of research in VR. We host regular meetups and workshops for discussion and learning.

qualitative research in online environment

https://www.facebook.com/groups/onlinelearningcollective/permalink/557378281559541/

A Facebook group thread:

Qualitative researchers: Does anyone have any general pointers on conducting qualitative work in this environment other than doing interviews or focus groups over Zoom? Example: I (normally) do a lot of participant observation work. Where and how will I do this or do it as well as I have done it?

At this moment, my focus is all on teaching. But if this situation becomes more prolonged, I need to figure out how to keep the research going too.

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Qualitative Data Analysis Tools

https://libguides.mit.edu/anthro/qda

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more on qualitative research in this IMS blog
https://blog.stcloudstate.edu/ims?s=qualitative+research

tools for collaborative research and early discovery

Webinar: tools for collaborative research and early discovery

Librarians have been at the forefront in promoting open access publishing options and informing their researchers about the open access landscape. Open access is increasingly recognized as embedded within the larger framework of open science. Consequently, library and librarian roles are expanding into new areas such as open data, open educational resources and open infrastructure.

In this webinar, Elsevier product managers will present tools that enable more inclusive, collaborative and transparent research.

TOPICS:

•The library as publisher of OERs and OA journals with Digital Commons
•Open access content discovery in ScienceDirect and Scopus
•Open journal metrics: CiteScore, SNIP and SJR
•Publishing research outputs openly in Mendeley Data and SSRN

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