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  • Treatment for schizophrenia include counseling, medicine, and supportive measures to control symptoms and improve quality of life. Antipsychotic medications, for example, are used to treat delusions, hallucinations, and disordered thinking. Cognitive behavioral therapy (CBT) is one therapeutic technique that assists people in improving social functioning, Schizophrenia patients can attain stability and lead satisfying lives with the help of an all-encompassing treatment plan customized to meet their needs. Treatment for Schizophrenia https://www.muziekmantra.com/blogs/music-therapy-as-a-treatment-for-schizophrenia/

    Music Therapy as a Treatment for Schizophrenia
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  • 基于AI的声音处理在线服务和应用程序。


    从曲目中提取人声或音乐:

    https://www.lalal.ai/
    https://vocalremover.org/
    https://aivocalremover.com/

    从噪音中
    清除语音:

    https://audo.ai/ (доступ по запросу)
    https://meeamitech.com/ainoisecancellation.html



    https://www.lalal.ai/voice-cleaner/ 音频/视频语音转换器:

    https://www.voicemod.net/ai-voices-beta/
    https://murf.ai/voice-changer
    https://voice.ai/



    编辑和创建音乐:

    https://moises.ai/
    https://www.aiva.ai/

    https://ecrettmusic.com/play https://boomy.com/


    完全自动化的音乐生成:

    https://soundraw.io/


    语音克隆:

    https://www.resemble.ai/ (доступ по запросу)


    来源 - @user_it_channel
    Vocal Remover | Isolate Voice & Instrumental Online | LALAL.AI
    Split vocal and instrumental tracks quickly and accurately with Lalal.ai. Upload any audio file and receive high-quality extracted tracks in a few seconds.
    WWW.LALAL.AI
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  • 如果你曾经足够早地加入其中一个社交网络,你就会知道,相对来说,越早加入,在社交资本方面(粉丝数、点赞数等)越容易领先于其他人。那些出现在Twitter早期推荐列表上的网红,粉丝量以百万计,Musical.ly和Vine上的早期网红们也是如此。你现有的粉丝越多,你因排行榜和推荐算法以及其他类似的发现机制而获得的后续粉丝就越多。

    确实,一个社交网络的参与者越多,可以去获取的社交资本的总量也越多。然而,一般来说,如果你没有在早期就投身一个社交网络中,除非你本身拥有绝对秒杀众人的外生社会资本(比如Taylor Swift可以加入地球上任何社交网络并立即获得海量关注),获取关注的竞争将变得越发激烈。每个人都对这个游戏的玩法越来越熟练而有心得,竞争也因此而更加激烈。
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  • Chia项目分析

    Chia(奇亚)官网 https://www.chia.net/

    区块浏览器 https://www.chiaexplorer.com/

    Github源码库 https://github.com/Chia-Network

    Chia(奇亚)商业白皮书中文版 https://www.kuangjiwan.com/news/news-2883.html

    技术绿皮书 https://www.chia.net/assets/ChiaGreenPaper.pdf

    Chia挖矿教程 https://www.kuangjiwan.com/news/news-2882.html

    Chia(奇亚)常见问题解答 https://www.kuangjiwan.com/news/news-2884.html

    Chia(奇亚)命令行参数 https://www.kuangjiwan.com/news/news-2886.html

    Chia(奇亚)plot文件规格大小 https://www.kuangjiwan.com/news/news-2887.html

    Chia减半计划表 https://www.kuangjiwan.com/news/news-2889.html

    Chia多机集群教程 https://www.kuangjiwan.com/news/news-2891.html


    https://dgideas.net/2021/hard-drive-crisis-the-principles-and-technical-details-behind-chia-mining-i/

    https://www.kuangjiwan.com/news/new

    Chia多机集群挖矿教程
    Chia币挖矿减半计划是什么?
    Chia(奇亚)常见问题解答
    Chia(奇亚)白皮书中文版
    Chia挖矿教程Windows版



    Chia项目的核心要点:

    1.全新区块链底层:拥有一种全新的区块链编程语言Chialisp,它功能强大,易于审核,而且安全。Chialisp是一个卓越的链上智能交易开发环境,它将解锁加密货币所承诺的安全性、透明度和易用性。

    2. P2P和分布式存储“祖师爷”出山:Chia由传奇程序员,BitTorrent 创始人 Bram Cohen创立。

    3.顶级机构投资:Coinbase,A16z等币圈顶级投资机构投资

    4.愿景宏大: Chia目标成为第一个可公开交易的 "类似ETF "的加密货币,成为主权国家、金融机构和企业希望在日常商业中使用加密货币。

    5.技术集大成且落地清晰:

    1.BitTorrent在世界范围内成功应用十多年,这个一个很好的技术大规模应用验证范例,Chia更有资格去做建立全球的分布式存储生态事情,比IPFS更牛!而且做过大规模应用的验证。

    2.Bram Cohen使用全新的编程语言,优化了区块链交易账户系统,使得链上智能合约更高效。想象将来存储生态如果由大规模应用,那么顺便在Chia上进行智能合约开发那便是顺理成章的事情,这更像农村包围城市,未来将可能挑战ETH.

    3. 独创且不断优化4年的的时空证明共识算法,符合Chia的最初愿景,建立更加绿色环保高效的区块链网络,而非比特币的算力竞赛,消耗大量资源,矿机都是定制的无法应用到其它商用领域。而Chia的存储网络及算力网络本身就是可以进行其它的商业应用。

    6.项目一开始便专注于合规性建设以及企业级商业应用,同时设计的ETF化探索,更为将来全球投资者合规合法参与到Chia中来带来了巨大便利。这是务实的在做全球支付加密货币的应用。

    Chia 币首创了延迟恢复功能的纸钱包 , 转账收回和限额钱包功能,这使得 Chia 成为唯一一个最接近传统金融工具的数字资产。

    以牛逼技术和市场应用拖底的天王级项目,它将合规最到极致,最终目标要变成未来全球通过的ETF化的加密货币,人人均可以合理合法的参与其中。看到这里已经让许多人眼前一亮了。

    最近全球最大的全球加密基金灰度也官宣,为了将100%转变为ETF,便于全球所有投资者参与其中。一旦实现,整个加密数字货币市场将会腾飞!

    2021 年 3 月 18 日,由 BitTorrent 创始人 Bram Cohen 创立的加密货币项目 Chia Network正式发布 Chia 1.0 主网,代币为 XCH,并已开放挖矿(farm)活动。

    Chia Network 是一个去中心化的开源全球区块链,与传统的工作量证明加密货币相比,其能源浪费更少,去中心化程度更高,更安全。在 Chia 中,资源不是计算能力,而是磁盘空间。为了实现这一目标,比特币中使用的“工作证明”被“空间证明”代替,因此磁盘空间成为达成去中心化“中本聪式”共识以验证交易的主要资源和时间证明。Chia 网络还是一家智能交易平台公司。





    核心团队

    Chia Network 由传奇程序员、BitTorrent 创始人 Bram Cohen 创立。团队成员还包括http://eMusic.com 和 Vindicia 的前创始人兼首席执行官 Gene Hoffman, 以及 http://Overstock.com 的前代理首席执行官 Mitch Edwards。

    投资情况

    通过网络查询和英文白皮书解读,Chia Network 获得众多知名投资机构投资,其它包括:Slow Ventures, Naval Ravikant, Breyer Capital, Collaborative Fund, IDEO Colab, A16z Crypto, True Ventures, Galaxy Digital, Cygni Capital, Greylock Partners, DCM, Metastable, StillMark Capital, and Kamal Ravikant. 经过多轮总共募集了1600万美金的融资。最近一次是2020 年 8 月获得由 Slow、Collab Crypto、IDEO 和 Naval Ravikant 等机构投资的 500 万美元融资。据 Chia 官宣将在 2021 年 8 月,在纳斯达克上市,参与方式是以股权形式,总额度 3000 万。

    https://www




    Chia 的工作原理

    与现有加密货币的不同,Chia 使用硬盘上的闲置磁盘空间来运行空间证明(Pospace),并与另一个共识算法-时间证明(Potime)进行协调来验证区块链。Chia 农民的收益与资源量-存储空间成正比;如果你有 10 倍的空间,你会得到 10 倍的奖励。但这里的 Post 不同于 Filecoin 也不同于比特币的采矿机制。Chias 用空余磁盘空间播种与比特币矿机用算力挖矿一样,但是 Chia 更适合普通用户的参与,减少额外的 Asic,算力,电力消耗。Chia 的机制天然地对集中化的播种有抑制作用。

    Chia 挖矿启动

    每块收益 :每 10 分钟 64 个 Chia 奖励

    减半策略 :3 年一减半,第十三年起每 10 分钟 4Chia

    效益预估 :现在还是预挖阶段,4 月 29 日可以开通转账。现在买,15 天后可以产币,1t 的产量是一天 0.05 个。产币后收 20% 的管理费,两年的产币权。


    目前,现在场外没有 Chia 币,29 日出来就会产 38 万个币,头矿肯定是赚的。

    Chia Network 的区块链的释放时间表被称为释放计划,这比封顶供应增加了显著的安全优势。封顶供应区块链的奖励最终将完全只来自交易费用,这可能会导致矿工有动力在交易费用较低的时期覆盖最近的历史,而不是挖掘新的区块,特别是如果费用在白天很重要,并且每天晚上(一般从太平洋时间午夜到太平洋时间凌晨 4 点)接近零,这就是今天发生的模式。因为第 12 年以后,排放率固定在每 10 分钟 4 Chia,所以通货膨胀率占供应量的比例是永远下降的。通胀率在释放后的第 25 年跌破 0.50%。我们的目标是交易费和爆块释放要达到一个合理的平衡点。

    通过挖矿产生大致是每三年一个衰减周期。前三年大致产1000万枚,前13年大致产1900万枚!

    矿机挖矿产量预估模型:

    按照今年末全网算力会激增250倍的模型测算,初始算力50PB, 在8月到9月前会是绝佳的挖矿红利期。本质上来说前期抢挖的,在全网算力不大的情况下,”股比“就会大些,然后随着网络激增,股比慢慢稀释。前期的挖矿红利效应非常明显!


    在这里我建立了一个Chia项目爱好者交流群,希望对未来财富认知有独到见解的朋友加入,大家一起讨论如何能在Chia的生态中寻找到下一个暴富的机会!



    Home - Chia Network
    A better blockchain and smart transaction platform which is more decentralized, more efficient, and more secure.
    WWW.CHIA.NET
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  • 分享Al Green的单曲《Call Me (Come Back Home)》: https://y.music.163.com/m/song/16333475/?userid=136212677&app_version=8.1.10 (来自@网易云音乐)
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  • https://azure.microsoft.com/en-us/blog/announcing-microsoft-s-coco-framework-for-enterprise-blockchain-networks/
    https://opensourcelibs.com/lib/diffnet
    https://github.com/Messi-Q/GraphDeeSmartContract
    https://xscode.com/jdlc105/Must-read-papers-and-continuous-tracking-on-Graph-Neural-Network-GNN-progress
    Must-read papers and continuous track on Graph Neural Network(GNN) progress
    Many important real-world applications and questions come in the form of graphs, such as social network, protein-protein interaction network, brain network, chemical molecular graph and 3D point cloud. Therefore, driven by the above interdisciplinary research, the neural network model for graph data-oriented has become an emerging research hotspot. Among them, two of the three pioneers of deep learning, Professor Yann LeCun (2018 Turing Award Winner), Professor Yoshua Bengio (2018 Turing Award Winner) and famous Professor Jure Leskovec from Stanford University AI lab also participated in it.

    This project focuses on GNN, lists relevant must-read papers and keeps track of progress. We look forward to promoting this direction and providing some help to researchers in this direction.

    Contributed by Allen Bluce (Dr. Bentian Li) and Anne Bluce (Dr. Yunxia Lin), If there is something wrong or GNN-related issue, welcome to send email (Address: jdlc105@qq.com, lbtjackbluce@gmail.com).

    Technology Keyword: Graph Neural Network, Graph convolutional network, Graph network, Graph attention network, Graph auto-encoder, Graph convolutional reinforcement learning, Graph capsule neural network....

    GNN and its variants are an emerging and powerful neural network approach. Its application is no longer limited to the original field. It has flourished in many other areas, such as Data Visualization, Image Processing, NLP, Recommendation System, Computer Vision, Bioinformatics, Chemical informatics, Drug Development and Discovery, Smart Transportation.

    Very hot research topic: the representative work--Graph convolutional networks (GCNs) proposed by T.N. Kipf and M. Welling (ICLR2017 [5] in conference paper list) has been cited 1,020 times in Google Scholar (on 09 May 2019). Update: 1, 065 times (on 20 May 2019); Update: 1, 106 times (on 27 May 2019); Update: 1, 227 times (on 19 June 2019); Update: 1, 377 times (on 8 July 2019); Update: 1, 678 times (on 17 Sept. 2019); Update: 1, 944 times (on 29 Oct. 2019); Update: 2, 232 times (on 9 Dec. 2019); Update: 2, 677 times (on 2 Feb. 2020).Update: 3, 018 times (on 17 March. 2020); Update: 3,560 times (on 27 May. 2020); Update: 4,060 times (on 3 July. 2020); Update: 5,371 times (on 25 Oct. 2020). Update: 6,258 times (on 01 Jan. 2021).

    Thanks for giving us so many stars and supports from the developers and scientists on Github around the world!!! We will continue to make this project better.

    Project Start time: 11 Dec 2018, Latest updated time: 01 Jan. 2021

    New papers about GNN models and their applications have come from NeurIPS2020, AAAI2021 .... We are waiting for more paper to be released.

    Survey papers:
    Bronstein M M, Bruna J, LeCun Y, et al. Geometric deep learning: going beyond euclidean data. IEEE Signal Processing Magazine, 2017, 34(4): 18-42. paper

    Jie Zhou, Ganqu Cui, Zhengyan Zhang, Cheng Yang, Zhiyuan Liu, Maosong Sun, Graph Neural Networks: A Review of Methods and Applications, ArXiv, 2018. paper.

    Battaglia P W, Hamrick J B, Bapst V, et al. Relational inductive biases, deep learning, and graph networks, arXiv 2018. paper

    Zonghan Wu, Shirui Pan, Fengwen Chen, Guodong Long, Chengqi Zhang, Philip S. Yu(Fellow,IEEE), A Comprehensive Survey on Graph Neural Networks, IEEE Transactions on Neural Networks and Learning Systems, 2020. paper.

    Ziwei Zhang, Peng Cui, Wenwu Zhu, Deep Learning on Graphs: A Survey, IEEE Transactions on Knowledge and Data Engineering, 2020. paper.

    Chen Z, Chen F, Zhang L, et al. Bridging the Gap between Spatial and Spectral Domains: A Survey on Graph Neural Networks. arXiv preprint. 2020. paper

    Abadal S, Jain A, Guirado R, et al. Computing Graph Neural Networks: A Survey from Algorithms to Accelerators. arXiv preprint. 2020. paper

    Lamb L, Garcez A, Gori M, et al. Graph Neural Networks Meet Neural-Symbolic Computing: A Survey and Perspective. arXiv preprint. 2020. paper

    Journal papers:
    F. Scarselli, M. Gori, A.C. Tsoi, M. Hagenbuchner, G. Monfardini, The graph neural network model, IEEE Transactions on Neural Networks(IEEE Transactions on Neural Networks and Learning Systems), 2009. paper.

    Scarselli F, Gori M, Tsoi A C, et al. Computational capabilities of graph neural networks, IEEE Transactions on Neural Networks, 2009. paper.

    Micheli A . Neural Network for Graphs: A Contextual Constructive Approach. IEEE Transactions on Neural Networks, 2009. paper.

    Goles, Eric, and Gonzalo A. Ruz. Dynamics of Neural Networks over Undirected Graphs. Neural Networks, 2015. paper.

    Z. Luo, L. Liu, J. Yin, Y. Li, Z. Wu, Deep Learning of Graphs with Ngram Convolutional Neural Networks, IEEE Transactions on Knowledge & Data Engineering, 2017. paper. code.

    Petroski Such F , Sah S , Dominguez M A , et al. Robust Spatial Filtering with Graph Convolutional Neural Networks. IEEE Journal of Selected Topics in Signal Processing, 2017. paper.

    Kawahara J, Brown C J, Miller S P, et al. BrainNetCNN: convolutional neural networks for brain networks; towards predicting neurodevelopment. NeuroImage, 2017. paper.

    Muscoloni A , Thomas J M , Ciucci S , et al. Machine learning meets complex networks via coalescent embedding in the hyperbolic space. Nature Communications, 2017. paper.

    D.M. Camacho, K.M. Collins, R.K. Powers, J.C. Costello, J.J. Collins, Next-Generation Machine Learning for Biological Networks, Cell, 2018. paper.

    Marinka Z , Monica A , Jure L . Modeling polypharmacy side effects with graph convolutional networks. Bioinformatics, 2018. paper.

    Sarah P , Ira K S , Enzo F , et al. Disease Prediction using Graph Convolutional Networks: Application to Autism Spectrum Disorder and Alzheimer’s Disease. Medical Image Analysis, 2018. paper.

    Sofia Ira Ktena, Sarah Parisot, Enzo Ferrante, Martin Rajchl, Matthew Lee, Ben Glocker, Daniel Rueckert, Metric learning with spectral graph convolutions on brain connectivity networks, NeuroImage, 2018. paper.

    Xie T , Grossman J C . Crystal Graph Convolutional Neural Networks for an Accurate and Interpretable Prediction of Material Properties. Physical Review Letters, 2018. paper.

    Phan, Anh Viet, Minh Le Nguyen, Yen Lam Hoang Nguyen, and Lam Thu Bui. DGCNN: A Convolutional Neural Network over Large-Scale Labeled Graphs. Neural Networks, 2018. paper

    Song T, Zheng W, Song P, et al. Eeg emotion recognition using dynamical graph convolutional neural networks. IEEE Transactions on Affective Computing, 2018. paper

    Levie R, Monti F, Bresson X, et al. Cayleynets: Graph convolutional neural networks with complex rational spectral filters. IEEE Transactions on Signal Processing 2019. paper

    Zhang, Zhihong, Dongdong Chen, Jianjia Wang, Lu Bai, and Edwin R. Hancock. Quantum-Based Subgraph Convolutional Neural Networks. Pattern Recognition, 2019. paper

    Qin A, Shang Z, Tian J, et al. Spectral–Spatial Graph Convolutional Networks for Semisupervised Hyperspectral Image Classification. IEEE Geoscience and Remote Sensing Letters, 2019. paper

    Coley C W, Jin W, Rogers L, et al. A graph-convolutional neural network model for the prediction of chemical reactivity. Chemical Science, 2019. paper

    Zhang Z, Chen D, Wang Z, et al. Depth-based Subgraph Convolutional Auto-Encoder for Network Representation Learning. Pattern Recognition, 2019. paper

    Hong Y, Kim J, Chen G, et al. Longitudinal Prediction of Infant Diffusion MRI Data via Graph Convolutional Adversarial Networks. IEEE transactions on medical imaging, 2019. paper

    Khodayar M, Mohammadi S, Khodayar M E, et al. Convolutional Graph Autoencoder: A Generative Deep Neural Network for Probabilistic Spatio-temporal Solar Irradiance Forecasting. IEEE Transactions on Sustainable Energy, 2019. paper

    Zhang Q, Chang J, Meng G, et al. Learning graph structure via graph convolutional networks. Pattern Recognition, 2019. paper

    Xuan P, Pan S, Zhang T, et al. Graph Convolutional Network and Convolutional Neural Network Based Method for Predicting lncRNA-Disease Associations. Cells, 2019. paper

    Sun M, Zhao S, Gilvary C, et al. Graph convolutional networks for computational drug development and discovery. Briefings in bioinformatics, 2019. paper

    Spier N, Nekolla S, Rupprecht C, et al. Classification of Polar Maps from Cardiac Perfusion Imaging with Graph-Convolutional Neural Networks. Scientific reports, 2019. paper

    Heyuan Shi, et al. Hypergraph-Induced Convolutional Networks for Visual Classification. IEEE Transactions on Neural Networks and Learning Systems, 2019. paper

    S.Pan, et al. Learning Graph Embedding With Adversarial Training Methods. IEEE Transactions on Cybernetics, 2019. paper

    D. Grattarola, et al. Change Detection in Graph Streams by Learning Graph Embeddings on Constant-Curvature Manifolds. IEEE Transactions on Neural Networks and Learning Systems. 2019. paper

    Kan Guo, et al. Optimized Graph Convolution Recurrent Neural Network for Traffic Prediction. IEEE Transactions on Intelligent Transportation Systems. 2020. paper

    Ruiz L, et al. Invariance-preserving localized activation functions for graph neural networks. IEEE Transactions on Signal Processing, 2020. paper

    Li J, et al. Neural Inductive Matrix Completion with Graph Convolutional Networks for miRNA-disease Association Prediction. Bioinformatics, 2020. paper

    Bingzhi Chen, et al. Label Co-occurrence Learning with Graph Convolutional Networks for Multi-label Chest X-ray Image Classification. IEEE Journal of Biomedical and Health Informatics, 2020. paper

    Kunjin Chen, et al. Fault Location in Power Distribution Systems via Deep Graph Convolutional Networks. IEEE Journal on Selected Areas in Communications, 2020. paper

    Manessi, Franco, et al. Dynamic graph convolutional networks. Pattern Recognition, 2020. paper

    Jiang X, Zhu R, Li S, et al. Co-embedding of Nodes and Edges with Graph Neural Networks. IEEE Transactions on Pattern Analysis and Machine Intelligence. paper

    Wang Z, Ji S. Second-order pooling for graph neural networks. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2020. paper

    Indro Spinelli, et al. Adaptive Propagation Graph Convolutional Network. IEEE Transactions on Neural Networks and Learning Systems, 2020. paper

    Zhou Fan, et al. Reinforced Spatiotemporal Attentive Graph Neural Networks for Traffic Forecasting. IEEE Internet of Things Journal, 2020. paper

    Wang S H, et al. Covid-19 classification by FGCNet with deep feature fusion from graph convolutional network and convolutional neural network. Information Fusion, 2020. paper

    Ruiz, Luana et al. Gated Graph Recurrent Neural Networks, IEEE Transactions on Signal Processing. paper

    Gama, Fernando et al. Stability Properties of Graph Neural Networks, IEEE Transactions on Signal Processing. paper

    He, Xin et al. MV-GNN: Multi-View Graph Neural Network for Compression Artifacts Reduction, IEEE Transactions on Image Processing. paper

    Conference papers:
    Duvenaud D, Maclaurin D, Aguilera-Iparraguirre J, et al. Convolutional networks on graphs for learning molecular fingerprints, NeurIPS(NIPS) 2015. paper. code.

    M. Niepert, M. Ahmed, K. Kutzkov, Learning Convolutional Neural Networks for Graphs, ICML 2016. paper.

    S. Cao, W. Lu, Q. Xu, Deep neural networks for learning graph representations, AAAI 2016. paper.

    M. Defferrard, X. Bresson, P. Vandergheynst, Convolutional Neural Networks on Graphs with Fast Localized Spectral Filtering, NeurIPS(NIPS) 2016. paper. code.

    T.N. Kipf, M. Welling, Semi-Supervised Classification with Graph Convolutional Networks, ICLR 2017. paper. code.

    A. Fout, B. Shariat, J. Byrd, A. Benhur, Protein Interface Prediction using Graph Convolutional Networks, NeurIPS(NIPS) 2017. paper.

    Monti F, Bronstein M, Bresson X. Geometric matrix completion with recurrent multi-graph neural networks, NeurIPS(NIPS) 2017. paper.

    Simonovsky M, Komodakis N. Dynamic edgeconditioned filters in convolutional neural networks on graphs, CVPR. 2017. paper

    R. Li, S. Wang, F. Zhu, J. Huang, Adaptive Graph Convolutional Neural Networks, AAAI 2018. paper

    J. You, B. Liu, R. Ying, V. Pande, J. Leskovec, Graph Convolutional Policy Network for Goal-Directed Molecular Graph Generation, NeurIPS(NIPS) 2018. paper.

    C. Zhuang, Q. Ma, Dual Graph Convolutional Networks for Graph-Based Semi-Supervised Classification, WWW 2018. paper

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    Sun K, Koniusz P, Wang J. Fisher-Bures Adversary Graph Convolutional Networks. arXiv 2019. paper.

    Kazi A, Burwinkel H, Vivar G, et al. InceptionGCN: Receptive Field Aware Graph Convolutional Network for Disease Prediction. arXiv 2019. paper.

    Lemos H, Prates M, Avelar P, et al. Graph Colouring Meets Deep Learning: Effective Graph Neural Network Models for Combinatorial Problems. arXiv 2019. paper.

    Diehl F, Brunner T, Le M T, et al. Graph Neural Networks for Modelling Traffic Participant Interaction. arXiv 2019. paper.

    Murphy R L, Srinivasan B, Rao V, et al. Relational Pooling for Graph Representations. arXiv 2019. paper.

    Zhang W, Shu K, Liu H, et al. Graph Neural Networks for User Identity Linkage. arXiv 2019. paper.

    Ruiz L, Gama F, Ribeiro A. Gated Graph Convolutional Recurrent Neural Networks. arXiv 2019. paper.

    Phillips S, Daniilidis K. All Graphs Lead to Rome: Learning Geometric and Cycle-Consistent Representations with Graph Convolutional Networks. arXiv 2019. paper.

    Hu F, Zhu Y, Wu S, et al. Semi-supervised Node Classification via Hierarchical Graph Convolutional Networks. arXiv 2019. paper.

    Deng Z, Dong Y, Zhu J. Batch Virtual Adversarial Training for Graph Convolutional Networks. arXiv 2019. paper.

    Chen Z M, Wei X S, Wang P, et al.Multi-Label Image Recognition with Graph Convolutional Networks. arXiv 2019. paper.

    Mallea M D G, Meltzer P, Bentley P J. Capsule Neural Networks for Graph Classification using Explicit Tensorial Graph Representations. arXiv 2019. paper.

    Peter Meltzer, Marcelo Daniel Gutierrez Mallea and Peter J. Bentley. PiNet: A Permutation Invariant Graph Neural Network for Graph Classification. arXiv 2019. paper.

    Padraig Corcoran. Function Space Pooling For Graph Convolutional Networks. arXiv 2019. paper.

    Sbastien Lerique, Jacob Levy Abitbol, and Mrton Karsai. Joint embedding of structure and features via graph convolutional networks. arXiv 2019. paper.

    Chen D, Lin Y, Li W, et al. Measuring and Relieving the Over-smoothing Problem for Graph Neural Networks from the Topological View. arXiv 2019. paper

    Ohue M, Ii R, Yanagisawa K, et al. Molecular activity prediction using graph convolutional deep neural network considering distance on a molecular graph. arXiv 2019. paper.

    Gao X, Xiong H, Frossard P. iPool--Information-based Pooling in Hierarchical Graph Neural Networks. arXiv 2019. paper.

    Zhou K, Song Q, Huang X, et al. Auto-GNN: Neural Architecture Search of Graph Neural Networks. arXiv 2019. paper.

    Vijay Prakash Dwivedi, et al. Benchmarking Graph Neural Networks. arXiv 2020. paper.

    Dai Quoc Nguyen, Tu Dinh Nguyen, Dinh Phung. Universal Self-Attention Network for Graph Classification. arXiv 2020. paper

    Open source platform on GNN
    Deep Graph Library(DGL)
    DGL is developed and maintained by New York University, New York University Shanghai, AWS Shanghai Research Institute and AWS MXNet Science Team.

    Initiation time: 2018.

    Source: URL, github

    NGra
    NGra is developed and maintained by Peking University and Microsoft Asia Research Institute.

    Initiation time:2018

    Source: pdf

    Graph_nets
    Graph_nets is developed and maintained by DeepMind, Google Corp.

    Initiation time:2018

    Source: github

    Euler
    Euler is developed and maintained by Alimama, which belongs to Alibaba Group.

    Initiation time:2019

    Source: github

    PyTorch Geometric
    PyTorch Geometric is developed and maintained by TU Dortmund University, Germany.

    Initiation time:2019

    Source: github paper

    PyTorch-BigGraph(PBG)
    PBG is developed and maintained by Facebook AI Research.

    Initiation time:2019

    Source: github paper

    Angel
    Angel is developed and maintained by Tencent Inc.

    Initiation time:2019

    Source: github

    Plato
    Plato is developed and maintained by Tencent Inc.

    Initiation time:2019

    Source: github

    PGL
    PGL is developed and maintained by Baidu Inc.

    Initiation time:2019

    Source: github

    OGB
    Open Graph Benchmark(OGB) is developed and maintained by Standford University.

    Initiation time:2019

    Source: github

    Benchmarking GNNs
    Benchmarking GNNs is developed and maintained by Nanyang Technological University.

    Initiation time:2020

    Source: github

    Graph-Learn
    Graph-Learn is developed and maintained by Alibaba Group.

    Initiation time:2020

    Source: github

    AutoGL (Auto Graph Learning) New
    AutoGL is developed and maintained by Tsinghua University.

    Initiation time:2020

    Source: github

    Appetizer for you:Art Exhibition in the Ultra-High Dimensional Network/Graph Structured Space
    Announcing the Confidential Consortium Blockchain Framework for enterprise blockchain networks
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  • 今天正式成为
    在跟杨老师的交往中彻悟出来比特币的未来发展必然走向,从此一发不可收拾,不断地遇到我身边太多贵人相助!!!不一一感激!!!!
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    一位伟人的父亲临终前对他说:
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    再次感谢所有信任和关心faceblock 项目的家人,朋友,甚至敌人!

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