3,050 research outputs found
Density functional versus spin-density functional and the choice of correlated subspace in multi-variable effective action theories of electronic structure
Modern extensions of density functional theory such as the density functional
theory plus U and the density functional theory plus dynamical mean-field
theory require choices, including selection of variable (charge vs spin
density) for the density functional and specification of the correlated
subspace. This paper examines these issues in the context of the "plus U"
extensions of density functional theory, in which additional correlations on
specified correlated orbitals are treated using a Hartree-Fock approximation.
Differences between using charge-only or spin-density-dependent
exchange-correlation functionals and between Wannier and projector-based
definitions of the correlated orbitals are considered on the formal level and
in the context of the structural energetics of the rare earth nickelates. It is
demonstrated that theories based on spin-dependent exchange-correlation
functionals can lead to large and in some cases unphysical effective on-site
exchange couplings. Wannier and projector-based definitions of the correlated
orbitals lead to similar behavior near ambient pressure, but substantial
differences are observed at large pressures. Implications for other beyond
density functional methods such as the combination of density functional and
dynamical mean field theory are discussed.Comment: 14 pages, 10 figure
Redefining the doctorate.
Many commentators and observers believe that the time is right and the sector is ready for a national debate in the UK on the nature of the doctorate, given the multiple drivers for change, multiple agendas at work, and the multiple stakeholders with an interest in both the debate and the outcome. This discussion paper is designed to help frame and inform such a debate, which will not only bring together the major stakeholder groups in a shared conversation, but also provide opportunities for members of the academic community to contribute to the discussion via a series of national workshops and meetings
Simulating Problem Difficulty in Arithmetic Cognition Through Dynamic Connectionist Models
The present study aims to investigate similarities between how humans and
connectionist models experience difficulty in arithmetic problems. Problem
difficulty was operationalized by the number of carries involved in solving a
given problem. Problem difficulty was measured in humans by response time, and
in models by computational steps. The present study found that both humans and
connectionist models experience difficulty similarly when solving binary
addition and subtraction. Specifically, both agents found difficulty to be
strictly increasing with respect to the number of carries. Another notable
similarity is that problem difficulty increases more steeply in subtraction
than in addition, for both humans and connectionist models. Further
investigation on two model hyperparameters --- confidence threshold and hidden
dimension --- shows higher confidence thresholds cause the model to take more
computational steps to arrive at the correct answer. Likewise, larger hidden
dimensions cause the model to take more computational steps to correctly answer
arithmetic problems; however, this effect by hidden dimensions is negligible.Comment: 7 pages; 15 figures; 5 tables; Published in the proceedings of the
17th International Conference on Cognitive Modelling (ICCM 2019
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