726 research outputs found
Exploring Faculty Perceptions of a Case Library as an Online Teaching Resource
Professors need alternative programs to support their online teaching. This dissertation reports an initial study in a long-term research agenda for developing a faculty online teaching solution.
The primary purpose of the study is to explore faculty perceptions of a case library to help decision makers and researchers determine whether they would pursue the use of such a tool to support faculty online teaching. The secondary purpose of the study is to generate design knowledge to inform future development of and research on this or similar case libraries.
The methodology of this study includes three components: development research, rapid prototyping, and qualitative methods. Development research and rapid prototyping provided a three-stage framework for this study: conceptualization, development, and research. I synthesized the literature to create conceptual models of an Online Teaching Case Library (OTCL) at the conceptualization stage, built a prototype to implement the models at the development stage, and conducted research to evaluate the prototype at the research stage. Qualitative methods guided data gathering and analysis. I recruited seven faculty participants based on a purposeful sampling technique. To gather the data, I followed a three-step data collection process: initial interviews, contextual interviews, and final interviews. This process allowed me to observe and interview faculty participants while they were exploring the prototype. I analyzed the data by following an 11-step procedure synthesized from the works of Miles and Huberman (1994) as well as LeCompte and Schensul (1999a).
This study found that on one hand, faculty members might use an OTCL, because they perceived that this tool could support their apprenticeship approach to learning to teach. On the other hand, however, their perceived decision to use an OTCL would also be influenced by the perceptions of the usefulness and usability of the tool.
The study identified the initial evidence supporting an OTCL as an online teaching resource and the challenges involved in developing and implementing such a solution. It provides a base for decision makers to determine whether they would adopt this tool. It also offers some design guidance for those who do want to pursue this solution to faculty development
Spectral Method and Regularized MLE Are Both Optimal for Top- Ranking
This paper is concerned with the problem of top- ranking from pairwise
comparisons. Given a collection of items and a few pairwise comparisons
across them, one wishes to identify the set of items that receive the
highest ranks. To tackle this problem, we adopt the logistic parametric model
--- the Bradley-Terry-Luce model, where each item is assigned a latent
preference score, and where the outcome of each pairwise comparison depends
solely on the relative scores of the two items involved. Recent works have made
significant progress towards characterizing the performance (e.g. the mean
square error for estimating the scores) of several classical methods, including
the spectral method and the maximum likelihood estimator (MLE). However, where
they stand regarding top- ranking remains unsettled.
We demonstrate that under a natural random sampling model, the spectral
method alone, or the regularized MLE alone, is minimax optimal in terms of the
sample complexity --- the number of paired comparisons needed to ensure exact
top- identification, for the fixed dynamic range regime. This is
accomplished via optimal control of the entrywise error of the score estimates.
We complement our theoretical studies by numerical experiments, confirming that
both methods yield low entrywise errors for estimating the underlying scores.
Our theory is established via a novel leave-one-out trick, which proves
effective for analyzing both iterative and non-iterative procedures. Along the
way, we derive an elementary eigenvector perturbation bound for probability
transition matrices, which parallels the Davis-Kahan theorem for
symmetric matrices. This also allows us to close the gap between the
error upper bound for the spectral method and the minimax lower limit.Comment: Add discussions on the setting of the general condition numbe
Implicit Regularization in Nonconvex Statistical Estimation: Gradient Descent Converges Linearly for Phase Retrieval, Matrix Completion, and Blind Deconvolution
Recent years have seen a flurry of activities in designing provably efficient
nonconvex procedures for solving statistical estimation problems. Due to the
highly nonconvex nature of the empirical loss, state-of-the-art procedures
often require proper regularization (e.g. trimming, regularized cost,
projection) in order to guarantee fast convergence. For vanilla procedures such
as gradient descent, however, prior theory either recommends highly
conservative learning rates to avoid overshooting, or completely lacks
performance guarantees.
This paper uncovers a striking phenomenon in nonconvex optimization: even in
the absence of explicit regularization, gradient descent enforces proper
regularization implicitly under various statistical models. In fact, gradient
descent follows a trajectory staying within a basin that enjoys nice geometry,
consisting of points incoherent with the sampling mechanism. This "implicit
regularization" feature allows gradient descent to proceed in a far more
aggressive fashion without overshooting, which in turn results in substantial
computational savings. Focusing on three fundamental statistical estimation
problems, i.e. phase retrieval, low-rank matrix completion, and blind
deconvolution, we establish that gradient descent achieves near-optimal
statistical and computational guarantees without explicit regularization. In
particular, by marrying statistical modeling with generic optimization theory,
we develop a general recipe for analyzing the trajectories of iterative
algorithms via a leave-one-out perturbation argument. As a byproduct, for noisy
matrix completion, we demonstrate that gradient descent achieves near-optimal
error control --- measured entrywise and by the spectral norm --- which might
be of independent interest.Comment: accepted to Foundations of Computational Mathematics (FOCM
The global solution of the minimal surface flow and translating surfaces
In this paper, we study evolved surfaces over convex planar domains which are
evolving by the minimal surface flow Here, we specify the
angle of contact of the evolved surface to the boundary cylinder. The
interesting question is to find translating solitons of the form where . Under an angle condition, we can prove the
a priori estimate holds true for the translating solitons (i.e., translator),
which makes the solitons exist. We can prove for suitable condition on
that there is the global solution of the minimal surface flow. Then we show,
provided the soliton exists, that the global solutions converge to some
translator.Comment: 16 page
ResMatch: Residual Attention Learning for Local Feature Matching
Attention-based graph neural networks have made great progress in feature
matching learning. However, insight of how attention mechanism works for
feature matching is lacked in the literature. In this paper, we rethink cross-
and self-attention from the viewpoint of traditional feature matching and
filtering. In order to facilitate the learning of matching and filtering, we
inject the similarity of descriptors and relative positions into cross- and
self-attention score, respectively. In this way, the attention can focus on
learning residual matching and filtering functions with reference to the basic
functions of measuring visual and spatial correlation. Moreover, we mine intra-
and inter-neighbors according to the similarity of descriptors and relative
positions. Then sparse attention for each point can be performed only within
its neighborhoods to acquire higher computation efficiency. Feature matching
networks equipped with our full and sparse residual attention learning
strategies are termed ResMatch and sResMatch respectively. Extensive
experiments, including feature matching, pose estimation and visual
localization, confirm the superiority of our networks
The Potential of a First LEGO League Robotics Program in Teaching 21st Century Skills: An Exploratory Study
Business and political leaders in the US call for schools to teach 21st century skills. In the meantime, researchers call for more research to develop curriculum that teach 21st century skills. In this study, the authors examine the experience of a First LEGO League (FLL) robotics team to explore the potential of FLL for teaching 21stcentury skills. We found that the program provided opportunities for learning many 21st century skills such as systems thinking, decision making, problem solving, teamwork, conflict resolution, flexibility, perseverance, and selfmanagement. We also found that instructional strategies such as modeling, coaching, scaffolding, examples and case studies were important in providing successful experience to children. For children to retain and transfer these 21stcentury skills, articulation and reflection are critical
The Ecological Effects of Ant-Aphid Mutualism on Plants at a Large Spatial Scale
The protective ant-plant interaction has been considered as a model system in studying mutualistic interactions, but we know little about the ecological effects of the mutualism at relatively larger spatial scales. In this study, by excluding an aphid-tending ant species (Lasius fuliginosus) from all host oak trees (Quercus liaotungensis) in 20x20 m plots, we evaluated the effects of ants on herbivory, fruit production and leaf toughness of the host tree. Through a two years study, we found that ants have a significant anti-herbivory effect on the host tree, with no effects on fruit production. At the end of the growing season, leaf toughness for plants without ants increased significantly. This suggests that ants are reliable and effective bodyguards for plants at larger spatial scales. For plants, the possible tradeoff between different defensive strategies at larger scale should be focused in further works
Understand Data Preprocessing for Effective End-to-End Training of Deep Neural Networks
In this paper, we primarily focus on understanding the data preprocessing
pipeline for DNN Training in the public cloud. First, we run experiments to
test the performance implications of the two major data preprocessing methods
using either raw data or record files. The preliminary results show that data
preprocessing is a clear bottleneck, even with the most efficient software and
hardware configuration enabled by NVIDIA DALI, a high-optimized data
preprocessing library. Second, we identify the potential causes, exercise a
variety of optimization methods, and present their pros and cons. We hope this
work will shed light on the new co-design of ``data storage, loading pipeline''
and ``training framework'' and flexible resource configurations between them so
that the resources can be fully exploited and performance can be maximized
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