24,327 research outputs found
Towards an integrated discovery system
Previous research on machine discovery has focused on limited parts of the empirical discovery task. In this paper we describe IDS, an integrated system that addresses both qualitative and quantitative discovery. The program represents its knowledge in terms of qualitative schemas, which it discovers by interacting with a simulated physical environment. Once IDS has formulated a qualitative schema, it uses that schema to design experiments and to constrain the search for quantitative laws. We have carried out preliminary tests in the domain of heat phenomena. In this context the system has discovered both intrinsic properties, such as the melting point of substances, and numeric laws, such as the conservation of mass for objects going through a phase change
Exploring Mindset's Applicability to Students' Experiences with Challenge in Transformed College Physics Courses
The mindset literature is a longstanding area of psychological research
focused on beliefs about intelligence, response to challenge, and goals for
learning (Dweck, 2000). However, the mindset literature's applicability to the
context of college physics has not been widely studied. In this paper we narrow
our focus toward students' descriptions of their responses to challenge in
college physics. We ask the research questions, "can we see responses to
challenge in college physics that resemble that of the mindset literature?" and
"how do students express evidence of challenge and to what extent is such
evidence reflective of challenges found in the mindset literature?" To answer
these questions, we developed a novel coding scheme for interview dialogue
around college physics challenge and students' responses to it. In this paper
we present the development process of our coding scheme. We find that it is
possible to see student descriptions of challenge that resemble the mindset
literature's characterizations. However, college physics challenges are
frequently different than those studied in the mindset literature. We show
that, in the landscape of college physics challenges, mindset beliefs cannot
always be considered to be the dominant factor in how students respond to
challenge. Broadly, our coding scheme helps the field move beyond broad
Likert-scale survey measures of students' mindset beliefs
The Faculty Notebook, September 2015
The Faculty Notebook is published periodically by the Office of the Provost at Gettysburg College to bring to the attention of the campus community accomplishments and activities of academic interest. Faculty are encouraged to submit materials for consideration for publication to the Associate Provost for Faculty Development. Copies of this publication are available at the Office of the Provost
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Innovating Pedagogy 2015: Open University Innovation Report 4
This series of reports explores new forms of teaching, learning and assessment for an interactive world, to guide teachers and policy makers in productive innovation. This fourth report proposes ten innovations that are already in currency but have not yet had a profound influence on education. To produce it, a group of academics at the Institute of Educational Technology in The Open University collaborated with researchers from the Center for Technology in Learning at SRI International. We proposed a long list of new educational terms, theories, and practices. We then pared these down to ten that have the potential to provoke major shifts in educational practice, particularly in post-school education. Lastly, we drew on published and unpublished writings to compile the ten sketches of new pedagogies that might transform education. These are summarised below in an approximate order of immediacy and timescale to widespread implementation
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A cognitive architecture for learning in reactive environments
Previous research in machine learning has viewed the process of empirical discovery as search through a space of 'theoretical' terms. In this paper, we propose a problem space for empirical discovery, specifying six complementary operators for defining new terms that ease the statement of empirical laws. The six types of terms include: numeric attributes (such as PV/T); intrinsic properties (such as mass); composite objects (such as pairs of colliding balls); classes of objects (such as acids and alkalis); composite relations (such as chemical reactions); and classes of relations (such as combustion/oxidation). We review existing machine discovery systems in light of this framework, examining which parts of the problem space were, covered by these systems. Finally, we outline an integrated discovery system (IDS) we are constructing that includes all six of the operators and which should be able to discover a broad range of empirical laws
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A framework for empirical discovery
Previous research in machine learning has viewed the process of empirical discovery as search through a space of 'theoretical' terms. In this paper, we propose a problem space for empirical discovery, specifying six complementary operators for defining new terms that ease the statement of empirical laws. The six types of terms include: numeric attributes (such as PV/T); intrinsic properties (such as mass); composite objects (such as pairs of colliding balls); classes of objects (such as acids and alkalis); composite relations (such as chemical reactions); and classes of relations (such as combustion/oxidation). We review existing machine discovery systems in light of this framework, examining which parts of the problem space were, covered by these systems. Finally, we outline an integrated discovery system (IDS) we are constructing that includes all six of the operators and which should be able to discover a broad range of empirical laws
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