21,081 research outputs found
GM-Net: Learning Features with More Efficiency
Deep Convolutional Neural Networks (CNNs) are capable of learning
unprecedentedly effective features from images. Some researchers have struggled
to enhance the parameters' efficiency using grouped convolution. However, the
relation between the optimal number of convolutional groups and the recognition
performance remains an open problem. In this paper, we propose a series of
Basic Units (BUs) and a two-level merging strategy to construct deep CNNs,
referred to as a joint Grouped Merging Net (GM-Net), which can produce joint
grouped and reused deep features while maintaining the feature discriminability
for classification tasks. Our GM-Net architectures with the proposed BU_A
(dense connection) and BU_B (straight mapping) lead to significant reduction in
the number of network parameters and obtain performance improvement in image
classification tasks. Extensive experiments are conducted to validate the
superior performance of the GM-Net than the state-of-the-arts on the benchmark
datasets, e.g., MNIST, CIFAR-10, CIFAR-100 and SVHN.Comment: 6 Pages, 5 figure
A study on coarse-grained placement and routing for low-power FPGA architecture
制度:新 ; 報告番号:甲3603号 ; 学位の種類:博士(工学) ; 授与年月日:2012/3/15 ; 早大学位記番号:新595
B-meson Semi-inclusive Decay to Charmonium in NRQCD and X(3872)
The semi-inclusive B-meson decay into spin-singlet D-wave
charmonium, , is studied in nonrelativistic QCD (NRQCD). Both
color-singlet and color-octet contributions are calculated at next-to-leading
order (NLO) in the strong coupling constant . The non-perturbative
long-distance matrix elements are evaluated using operator evolution equations.
It is found that the color-singlet contribution is tiny, while the
color-octet channels make dominant contributions. The estimated branching ratio
is about in the Naive Dimensional
Regularization (NDR) scheme and in the t'Hooft-Veltman
(HV) scheme, with renormalization scale \,GeV. The
scheme-sensitivity of these numerical results is due to cancelation between
and contributions. The -dependence curves
of NLO branching ratios in both schemes are also shown, with varying from
to and the NRQCD factorization or renormalization scale
taken to be . Comparison of the estimated branching ratio
of with the observed branching ratio of
may lead to the conclusion that X(3872) is unlikely to be the
charmonium state .Comment: Version published in PRD, references added, 26 pages, 9 figure
CleanML: A Study for Evaluating the Impact of Data Cleaning on ML Classification Tasks
Data quality affects machine learning (ML) model performances, and data
scientists spend considerable amount of time on data cleaning before model
training. However, to date, there does not exist a rigorous study on how
exactly cleaning affects ML -- ML community usually focuses on developing ML
algorithms that are robust to some particular noise types of certain
distributions, while database (DB) community has been mostly studying the
problem of data cleaning alone without considering how data is consumed by
downstream ML analytics. We propose a CleanML study that systematically
investigates the impact of data cleaning on ML classification tasks. The
open-source and extensible CleanML study currently includes 14 real-world
datasets with real errors, five common error types, seven different ML models,
and multiple cleaning algorithms for each error type (including both commonly
used algorithms in practice as well as state-of-the-art solutions in academic
literature). We control the randomness in ML experiments using statistical
hypothesis testing, and we also control false discovery rate in our experiments
using the Benjamini-Yekutieli (BY) procedure. We analyze the results in a
systematic way to derive many interesting and nontrivial observations. We also
put forward multiple research directions for researchers.Comment: published in ICDE 202
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