131 research outputs found
Fast Evaluation of Generalized Todd Polynomials: Applications to MacMahon's Partition Analysis and Integer Programming
The Todd polynomials are defined by their
generating functions It appears as a basic block in Todd class of a toric
variety, which is important in the theory of lattice polytopes and in number
theory. We find generalized Todd polynomials arise naturally in MacMahon's
partition analysis, especially in Erhart series computation.We give fast
evaluation of generalized Todd polynomials for numerical 's. In order to
do so, we develop fast operations in the quotient ring
modulo for large prime . As applications, i) we recompute the Ehrhart
series of magic squares of order 6, which was first solved by the first named
author. The running time is reduced from 70 days to about 1 day; ii) we give a
polynomial time algorithm for Integer Linear Programming when the dimension is
fixed, with a good performance.Comment: 2 table
Algebraic Volume for Polytope Arise from Ehrhart Theory
Volume computation for -polytopes is fundamental in
mathematics. There are known volume computation algorithms, mostly based on
triangulation or signed-decomposition of . We consider as a lift of in view of Ehrhart
theory. By using technique from algebraic combinatorics, we obtain a volume
algorithm using only signed simplicial cone decompositions of . Each cone is associated with a simple algebraic volume
formula. Summing them gives the volume of the polytope. Our volume formula
applies to various kind of cases. In particular, we use it to explain the
traditional triangulation method and Lawrence's signed decomposition method.
Moreover, we give a completely new primal-dual method for volume computation.
This solves the traditional problem in this area: All existing methods are
hopelessly impractical for either the class of simple polytopes or the class of
simplicial polytopes. Our method has a good performance in computer
experiments.Comment: 26 pages, 4 figure
The Value of Backers’ Word-of-Mouth in Screening Crowdfunding Projects: An Empirical Investigation
Reward-based crowdfunding is an emerging financing channel for entrepreneurs to raise money for their innovative projects. How to screen the crowdfunding projects is critical for crowdfunding platform, project founder, and potential backers. This study aims to investigate whether backers’ word-of-mouth (WOM) is a valuable input to generate collective intelligence for project screening. Specially, we answer three questions. First, is backers’ WOM an effective signal for implementation performance of crowdfunding projects? Second, how do the WOM help screen projects during the fund-raising process? Third, which kind of comments (positive or negative) is more effective in screening crowdfunding projects? Research hypotheses were developed based on theories of collective intelligence and WOM communication. Using a cross section dataset and a panel dataset, we get the following findings. First, backers’ negative WOM can effectively predict project implementation performance, however positive WOM does not have that prediction power. The prediction power of positive and negative WOM differs significantly. One possible reason is that negative WOM does contain more information of project quality. Second, project with more accumulative negative WOM tend to attract fewer subsequent backers. However, accumulative positive WOM is not helpful for attracting more potential backers. We conclude that negative WOM is useful for project screening project, because it is a signal of project quality, and meanwhile it could prevent backers make subsequent investments
Disentangled Representation Learning
Disentangled Representation Learning (DRL) aims to learn a model capable of
identifying and disentangling the underlying factors hidden in the observable
data in representation form. The process of separating underlying factors of
variation into variables with semantic meaning benefits in learning explainable
representations of data, which imitates the meaningful understanding process of
humans when observing an object or relation. As a general learning strategy,
DRL has demonstrated its power in improving the model explainability,
controlability, robustness, as well as generalization capacity in a wide range
of scenarios such as computer vision, natural language processing, data mining
etc. In this article, we comprehensively review DRL from various aspects
including motivations, definitions, methodologies, evaluations, applications
and model designs. We discuss works on DRL based on two well-recognized
definitions, i.e., Intuitive Definition and Group Theory Definition. We further
categorize the methodologies for DRL into four groups, i.e., Traditional
Statistical Approaches, Variational Auto-encoder Based Approaches, Generative
Adversarial Networks Based Approaches, Hierarchical Approaches and Other
Approaches. We also analyze principles to design different DRL models that may
benefit different tasks in practical applications. Finally, we point out
challenges in DRL as well as potential research directions deserving future
investigations. We believe this work may provide insights for promoting the DRL
research in the community.Comment: 22 pages,9 figure
GICI-LIB: A GNSS/INS/Camera Integrated Navigation Library
Accurate navigation is essential for autonomous robots and vehicles. In
recent years, the integration of the Global Navigation Satellite System (GNSS),
Inertial Navigation System (INS), and camera has garnered considerable
attention due to its robustness and high accuracy in diverse environments. In
such systems, fully utilizing the role of GNSS is cumbersome because of the
diverse choices of formulations, error models, satellite constellations, signal
frequencies, and service types, which lead to different precision, robustness,
and usage dependencies. To clarify the capacity of GNSS algorithms and
accelerate the development efficiency of employing GNSS in multi-sensor fusion
algorithms, we open source the GNSS/INS/Camera Integration Library (GICI-LIB),
together with detailed documentation and a comprehensive land vehicle dataset.
A factor graph optimization-based multi-sensor fusion framework is established,
which combines almost all GNSS measurement error sources by fully considering
temporal and spatial correlations between measurements. The graph structure is
designed for flexibility, making it easy to form any kind of integration
algorithm. For illustration, four Real-Time Kinematic (RTK)-based algorithms
from GICI-LIB are evaluated using our dataset. Results confirm the potential of
the GICI system to provide continuous precise navigation solutions in a wide
spectrum of urban environments.Comment: Open-source: https://github.com/chichengcn/gici-open. This work has
been submitted to the IEEE for possible publication. Copyright may be
transferred without notice, after which this version may no longer be
accessibl
Constraining Depth Map Geometry for Multi-View Stereo: A Dual-Depth Approach with Saddle-shaped Depth Cells
Learning-based multi-view stereo (MVS) methods deal with predicting accurate
depth maps to achieve an accurate and complete 3D representation. Despite the
excellent performance, existing methods ignore the fact that a suitable depth
geometry is also critical in MVS. In this paper, we demonstrate that different
depth geometries have significant performance gaps, even using the same depth
prediction error. Therefore, we introduce an ideal depth geometry composed of
Saddle-Shaped Cells, whose predicted depth map oscillates upward and downward
around the ground-truth surface, rather than maintaining a continuous and
smooth depth plane. To achieve it, we develop a coarse-to-fine framework called
Dual-MVSNet (DMVSNet), which can produce an oscillating depth plane.
Technically, we predict two depth values for each pixel (Dual-Depth), and
propose a novel loss function and a checkerboard-shaped selecting strategy to
constrain the predicted depth geometry. Compared to existing methods,DMVSNet
achieves a high rank on the DTU benchmark and obtains the top performance on
challenging scenes of Tanks and Temples, demonstrating its strong performance
and generalization ability. Our method also points to a new research direction
for considering depth geometry in MVS.Comment: Accepted by ICCV 202
Receptors that bind to PEDF and their therapeutic roles in retinal diseases
Retinal neovascular, neurodegenerative, and inflammatory diseases represented by diabetic retinopathy are the main types of blinding eye disorders that continually cause the increased burden worldwide. Pigment epithelium-derived factor (PEDF) is an endogenous factor with multiple effects including neurotrophic activity, anti-angiogenesis, anti-tumorigenesis, and anti-inflammatory activity. PEDF activity depends on the interaction with the proteins on the cell surface. At present, seven independent receptors, including adipose triglyceride lipase, laminin receptor, lipoprotein receptor-related protein, plexin domain-containing 1, plexin domain-containing 2, F1-ATP synthase, and vascular endothelial growth factor receptor 2, have been demonstrated and confirmed to be high affinity receptors for PEDF. Understanding the interactions between PEDF and PEDF receptors, their roles in normal cellular metabolism and the response the initiate in disease will be accommodating for elucidating the ways in which inflammation, angiogenesis, and neurodegeneration exacerbate disease pathology. In this review, we firstly introduce PEDF receptors comprehensively, focusing particularly on their expression pattern, ligands, related diseases, and signal transduction pathways, respectively. We also discuss the interactive ways of PEDF and receptors to expand the prospective understanding of PEDF receptors in the diagnosis and treatment of retinal diseases
MeLo: Low-rank Adaptation is Better than Fine-tuning for Medical Image Diagnosis
The common practice in developing computer-aided diagnosis (CAD) models based
on transformer architectures usually involves fine-tuning from ImageNet
pre-trained weights. However, with recent advances in large-scale pre-training
and the practice of scaling laws, Vision Transformers (ViT) have become much
larger and less accessible to medical imaging communities. Additionally, in
real-world scenarios, the deployments of multiple CAD models can be troublesome
due to problems such as limited storage space and time-consuming model
switching. To address these challenges, we propose a new method MeLo (Medical
image Low-rank adaptation), which enables the development of a single CAD model
for multiple clinical tasks in a lightweight manner. It adopts low-rank
adaptation instead of resource-demanding fine-tuning. By fixing the weight of
ViT models and only adding small low-rank plug-ins, we achieve competitive
results on various diagnosis tasks across different imaging modalities using
only a few trainable parameters. Specifically, our proposed method achieves
comparable performance to fully fine-tuned ViT models on four distinct medical
imaging datasets using about 0.17% trainable parameters. Moreover, MeLo adds
only about 0.5MB of storage space and allows for extremely fast model switching
in deployment and inference. Our source code and pre-trained weights are
available on our website (https://absterzhu.github.io/melo.github.io/).Comment: 5 pages, 3 figure
- …