prediction embedding enhanced network

Predicting gene expression from histone modifications with self-attention based neural networks and transfer learning

Predicting gene expression from histone modifications with self-attention based neural networks and transfer learning Yuchi Chen 1, Minzhu Xie 1, Jie ......

Drug response prediction using graph representation learning and Laplacian feature selection

Drug response prediction using graph representation learning and Laplacian feature selection Minzhu Xie 1 2, Xiaowen Lei 3, Jianchen Zhong 3, Jianxing ......

Predict potential miRNA-disease associations based on bounded nuclear norm regularization

Predict potential miRNA-disease associations based on bounded nuclear norm regularization Yidong Rao 1, Minzhu Xie 1, Hao Wang 1 Affiliations expand P ......

Graph regularized non-negative matrix factorization with prior knowledge consistency constraint for drug-target interactions prediction

Graph regularized non-negative matrix factorization with prior knowledge consistency constraint for drug-target interactions prediction Junjun Zhang 1 ......

LPI-IBWA: Predicting lncRNA-protein interactions based on an improved Bi-Random walk algorithm

LPI-IBWA: Predicting lncRNA-protein interactions based on an improved Bi-Random walk algorithm Minzhu Xie 1, Ruijie Xie 2, Hao Wang 3 Affiliations exp ......

Graph regularized non-negative matrix factorization with [Formula: see text] norm regularization terms for drug-target interactions prediction

Graph regularized non-negative matrix factorization with [Formula: see text] norm regularization terms for drug-target interactions prediction Junjun ......

LDAEXC: LncRNA-Disease Associations Prediction with Deep Autoencoder and XGBoost Classifier.

LDAEXC: LncRNA-Disease Associations Prediction with Deep Autoencoder and XGBoost Classifier. 作者: Lu Cuihong; Xie Minzhu 作者背景: College of Information S ......

B4185. LPI-IBWA:Predicting lncRNA-protein Interactions Based on Improved Bi-Random Walk Algorithm

B4185. LPI-IBWA:Predicting lncRNA-protein Interactions Based on Improved Bi-Random Walk Algorithm Minzhu Xie1, Hao Wang1 and Ruijie Xi1 1Hunan Normal ......

Erasing, Transforming, and Noising Defense Network for Occluded Person Re-Identification

三个分支:擦除、转换、噪声 用来生成对抗性表征,模拟遮挡问题 对应信息丢失、位置错位和噪声信息 对抗性防御:思路是GAN网络,以对抗性的方式优化生成器和判别器 ......

go network poller 一

网络基础 协议架构 tcp链接 假如需要开发者去实现一套新的网络协议(例如 redis 的resp), 是基于TCP的, 那tcp这层的协议,是否需要开发者自己去实现? 这层如果自己实现, 其实很复杂, 会涉及很多算法相关. 因此, 出现了 socket 对传输层进行了抽象, 开发者不需要关注传输层 ......
network poller go

神经网络入门篇:详解搭建神经网络块(Building blocks of deep neural networks)

搭建神经网络块 这是一个层数较少的神经网络,选择其中一层(方框部分),从这一层的计算着手。在第\(l\)层有参数\(W^{[l]}\)和\(b^{[l]}\),正向传播里有输入的激活函数,输入是前一层\(a^{[l-1]}\),输出是\(a^{[l]}\),之前讲过\(z^{[l]} =W^{[l] ......
神经网络 神经 网络 Building networks

什么是 SAP ABAP Modification-free enhancements

"Modification-free enhancements" 是 SAP ABAP 中一种开发技术,旨在允许开发者对 SAP 标准对象进行增强而无需进行修改。这种方法可以确保在将来升级或应用支包时,不会影响到已有的修改。Modification-free enhancements 的主要思想是通 ......

Graph Neural Networks with Learnable and Optimal Polynomial Bases

目录概符号说明MotivationFavardGNN代码 Guo Y. and Wei Z. Graph neural networks with learnable and optimal polynomial bases. ICML, 2023. 概 自动学多项式基的谱图神经网络. 符号说明 \ ......
Polynomial Learnable Networks Optimal Neural

SAP ABAP 各种增强技术(Enhancement)概述 - 所谓第一代,第二代,第三代增强技术的出处试读版

本文回答笔者这篇教程:如何通过增强(Enhancement) 的方式给 SAP ABAP 标准程序增添新功能评论区的读者留言: 这个和第一二三四代以及badi增强有什么联系呢? 笔者从 2007年一月就在 SAP 中国使用 ABAP 进行 SAP 产品开发了,说实话 SAP 内部不会把 ABAP 各 ......
技术 Enhancement 一代 出处 ABAP

[论文速览] R-Drop@ Regularized Dropout for Neural Networks

Pre title: R-Drop: Regularized Dropout for Neural Networks accepted: NeurIPS 2021 paper: https://arxiv.org/abs/2106.14448 code: https://github.com/dro ......
Regularized Networks Dropout R-Drop Neural

多目标关键点检测Associative Embedding

前面介绍了单目标关键点检测网络 Stacked Hourglass Networks,如下图所示,一次只能检测出一个目标的关键点信息,但实际情况下一个场景出现多个目标的概率更大,所以原作者在Stacked Hourglass Networks的基础上提出了Associative Embedding, ......

神经网络入门篇:详解深层网络中的前向传播(Forward propagation in a Deep Network)

深层网络中的前向传播 先说对其中一个训练样本\(x\)如何应用前向传播,之后讨论向量化的版本。 第一层需要计算\({{z}^{[1]}}={{w}^{[1]}}x+{{b}^{[1]}}\),\({{a}^{[1]}}={{g}^{[1]}} {({z}^{[1]})}\)(\(x\)可以看做\({ ......

论文:Predicting Optical Water Quality Indicators from Remote Sensing Using Machine Learning Algorithms in Tropical Highlands of Ethiopia

水刊,中科院都没有收录。不属于sci。 吃一堑长一智,以后先看属于哪个期刊的。总是忘记。 期刊:Hydrology 浪费时间,啥也没有,没有创新点,就一点点的对比工作量。 “Predicting Optical Water Quality Indicators from Remote Sensing ......

论文:Predicting the performance of green stormwater infrastructure using multivariate long short-term memory (LSTM) neural network

题目“Predicting the performance of green stormwater infrastructure using multivariate long short-term memory (LSTM) neural network” (Al Mehedi 等, 2023, ......

NS-3源码学习(四)wifi-ent-network.cc

NS-3源码学习(四)wifi-ent-network.cc 设定的参数 bool udp{true};udp/tcp 通信选择 bool downlink{true};AP -> STA : downlink = true / STA -> AP : downlink = false 数据发送方向 ......
wifi-ent-network 源码 network wifi ent

论文:FEED-FORWARD NETWORKS WITH ATTENTION CAN SOLVE SOME LONG-TERM MEMORY PROBLEMS

题目:FEED-FORWARD NETWORKS WITH ATTENTION CAN SOLVE SOME LONG-TERM MEMORY PROBLEMS” (Raffel 和 Ellis, 2016, p. 1) “带有注意力的前馈网络可以解决一些长期记忆问题” (Raffel 和 Elli ......

20231128 - 重启Centos后无法远程连接,重启网络服务报错:Error:Failed to start LSB: Bring up/down networking

1.https://blog.csdn.net/m0_74953387/article/details/132914306 2.https://blog.csdn.net/weixin_45894220/article/details/130487066 ......

论文:Multistep ahead prediction of temperature and humidity in solar greenhouse based on FAM-LSTM model

Multistep ahead prediction of temperature and humidity in solar greenhouse based on FAM-LSTM model 基于 FAM-LSTM 模型的日光温室温湿度多步提前预测 题目:“Multistep ahead pr ......

The Hello World of Deep Learning with Neural Networks

The Hello World of Deep Learning with Neural Networks dlaicourse/Course 1 - Part 2 - Lesson 2 - Notebook.ipynb at master · lmoroney/dlaicourse (github ......
Learning Networks Neural Hello World

The Hello World of Deep Learning with Neural Networks

The Hello World of Deep Learning with Neural Networks dlaicourse/Course 1 - Part 2 - Lesson 2 - Notebook.ipynb at master · lmoroney/dlaicourse (github ......
Learning Networks Neural Hello World

simulink回调函数在embedded code/autosar的应用

simulink开发嵌入式方向, 在生成的代码中会以注释的形式记录代码生成的时间于模型版本。但编译完成后的可执行文件中并不会存储这些信息,在某些情况下定位问题与确认模型的版本就不容易实现。 因此在模型中创建一个全局变量用来存储版本信息,使用回调函数自动填写相关信息。 如下图使用param()函数将时 ......
函数 simulink embedded autosar code

CrossEntropyLoss: RuntimeError: expected scalar type Float but found Long neural network

错误分析 这个错误通常指的是期望接受的参数类型是Float, 但是程序员传入的是Int 。 通常会需要我们去检查传入的 input 和 target 的数据类型有没有匹配。在传入的数据中,通常 input 希望是 Float 类型,target 是 Int 类型。 但是通常也许会发现传入的参数是符合 ......

Graph Neural Networks with Diverse Spectral Filtering

目录概符号说明DSF代码 Guo J., Huang K, Yi X. and Zhang R. Graph neural networks with diverse spectral filtering. WWW, 2023. 概 为每个结点赋予不同的多项式系数. 符号说明 \(\mathcal{ ......
Filtering Networks Spectral Diverse Neural

Firefox developer tools truncates long network response, Chrome does not show

Firefox developer tools truncates long network response, Chrome does not show Firefox dev tools network inspector still truncates responses to 1MB by ......
developer truncates response Firefox network

Convolutional Neural Networks on Graphs with Chebyshev Approximation, Revisited

目录概符号说明MotivationChebNetII代码 He M., Wei Z. and Wen J. Convolutional neural networks on graphs with chebyshev approximation, revisited. NIPS, 2022. 概 作 ......