200 research outputs found
On hypergraph Lagrangians
It is conjectured by Frankl and F\"uredi that the -uniform hypergraph with
edges formed by taking the first sets in the colex ordering of
has the largest Lagrangian of all -uniform hypergraphs
with edges in \cite{FF}. Motzkin and Straus' theorem confirms this
conjecture when . For , it is shown by Talbot in \cite{T} that this
conjecture is true when is in certain ranges. In this paper, we explore the
connection between the clique number and Lagrangians for -uniform
hypergraphs. As an implication of this connection, we prove that the
-uniform hypergraph with edges formed by taking the first sets in
the colex ordering of has the largest Lagrangian of all
-uniform graphs with vertices and edges satisfying for
Comment: 10 pages. arXiv admin note: substantial text overlap with
arXiv:1312.7529, arXiv:1211.7057, arXiv:1211.6508, arXiv:1311.140
Generalized Parity-Time Symmetry Condition for Enhanced Sensor Telemetry
Wireless sensors based on micro-machined tunable resonators are important in
a variety of applications, ranging from medical diagnosis to industrial and
environmental monitoring.The sensitivity of these devices is, however, often
limited by their low quality (Q) factor.Here, we introduce the concept of
isospectral party time reciprocal scaling (PTX) symmetry and show that it can
be used to build a new family of radiofrequency wireless microsensors
exhibiting ultrasensitive responses and ultrahigh resolution, which are well
beyond the limitations of conventional passive sensors. We show theoretically,
and demonstrate experimentally using microelectromechanical based wireless
pressure sensors, that PTXsymmetric electronic systems share the same
eigenfrequencies as their parity time (PT)-symmetric counterparts, but
crucially have different circuit profiles and eigenmodes. This simplifies the
electronic circuit design and enables further enhancements to the extrinsic Q
factor of the sensors
RobustTSF: Towards Theory and Design of Robust Time Series Forecasting with Anomalies
Time series forecasting is an important and forefront task in many real-world
applications. However, most of time series forecasting techniques assume that
the training data is clean without anomalies. This assumption is unrealistic
since the collected time series data can be contaminated in practice. The
forecasting model will be inferior if it is directly trained by time series
with anomalies. Thus it is essential to develop methods to automatically learn
a robust forecasting model from the contaminated data. In this paper, we first
statistically define three types of anomalies, then theoretically and
experimentally analyze the loss robustness and sample robustness when these
anomalies exist. Based on our analyses, we propose a simple and efficient
algorithm to learn a robust forecasting model. Extensive experiments show that
our method is highly robust and outperforms all existing approaches. The code
is available at https://github.com/haochenglouis/RobustTSF.Comment: Accepted by the 12th International Conference on Learning
Representations (ICLR 2024
DFPENet-geology: A Deep Learning Framework for High Precision Recognition and Segmentation of Co-seismic Landslides
The following lists two main reasons for withdrawal for the public. 1. There
are some problems in the method and results, and there is a lot of room for
improvement. In terms of method, "Pre-trained Datasets (PD)" represents
selecting a small amount from the online test set, which easily causes the
model to overfit the online test set and could not obtain robust performance.
More importantly, the proposed DFPENet has a high redundancy by combining the
Attention Gate Mechanism and Gate Convolution Networks, and we need to revisit
the section of geological feature fusion, in terms of results, we need to
further improve and refine. 2. arXiv is an open-access repository of electronic
preprints without peer reviews. However, for our own research, we need experts
to provide comments on my work whether negative or positive. I then would use
their comments to significantly improve this manuscript. Therefore, we finally
decided to withdraw this manuscript in arXiv, and we will update to arXiv with
the final accepted manuscript to facilitate more researchers to use our
proposed comprehensive and general scheme to recognize and segment seismic
landslides more efficiently.Comment: 1. There are some problems in the method and results, and there is a
lot of room for improvement. Overall, the proposed DFPENet has a high
redundancy by combining the Attention Gate Mechanism and Gate Convolution
Networks, and we need to further improve and refine the results. 2. For our
own research, we need experts to provide comments on my work whether negative
or positiv
- β¦