NIKE-ADIDAS's repositories

GNN-Recommendation

毕业设计:基于图神经网络的异构图表示学习和推荐算法研究

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AIinterview

算法工程师面试题整理

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BiOnt

BiOnt: Deep Learning using Multiple Biomedical Ontologies for Relation Extraction

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causal_inference_python_code

Python code for part 2 of the book Causal Inference: What If, by Miguel Hernán and James Robins

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CIKM-2019-AnalytiCup

1st Solution for 2019-CIKM-Analyticup: Efficient and Novel Item Retrieval for Large-scale Online Shopping Recommendation

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deep_learning_causal_inference

My presentation in a Neural Networks course at EMAp - FGV.

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DeepReGraph

Code for the paper DeepReGraph sheds light on embryonic regulatorymechanisms through Deep Heterogeneous Graph Rep-resentation Learning

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Drug-Similarity-and-Link-Prediction-using-Graph-Embeddings-on-Medical-Knowledge-Graph

Utilizing graphical neural networks and embeddings on a medical database KEGG to perform link predictions and drug similarity systems.

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Efficient-polypharmacy-side-effects-prediction-GCNs

This repository contains the source code and jupyter notebooks associated with our work on "Efficiently Predicting Pharmacological Side-effects Resulting from Pair-wise Combinatorial Consumption of Medicinal Drugs, using Graph Convolutional Networks"

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EGES-Torch

Implement EGES by pytorch.

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Financial-Fraud-Detection-Using-Text-Mining

Applied BERT based model to extract relations from 29 annual reports of listed companies and news; Used spaCy library and BERT model for name-entity recognition and relations extraction, and generated a network graph that summarises the key relation

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GNN-gene-disease-association

Using graph neural networks for predicting gene-disease association in the human molecular interaction network.

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graph-rec

Senior Capstone Project: Graph-Based Product Recommendation

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KBQA-study

基于医疗知识图谱的问答系统(添加了注释,方便调试阅读)

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OpenUE

An Open Toolkit for Universal Extraction from Text

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paperai

📄 🤖 AI-powered literature discovery and review engine for medical/scientific papers

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PaperRobot

Code for PaperRobot: Incremental Draft Generation of Scientific Ideas

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periodicals

Neural Embeddings of Scholarly Periodicals Reveal Complex Disciplinary Organizations

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RPath

(Causal )Source code and data for "Causal reasoning over knowledge graphs leveraging drug-perturbed and disease-specific transcriptomic signatures for drug discovery"

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Shopping-basket-recommendation-based-on-transformer

基于transformer 的购物篮推荐

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skywalkR-graph-features

Example notebooks that illustrate how to generate knowledge-based features. Features can be used in a variety of ML models, including recommender systems.

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SPOKE_NASA_2020

SPOKE_NASA_GeneLab_2020

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WSDM-CUP-2022-Retention-Score-Prediction

WSDM2022留存预测挑战赛 第1名解决方案

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WSDM_DGL_Challenge

WSDM Cup 2022: Temporal Link Prediction Task (https://www.dgl.ai/WSDM2022-Challenge/).

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WWW20-Hands-on-Tutorial

Materials for DGL hands-on tutorial in WWW 2020

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Zimnat_Insurance_top-12

My solution for #12 in privat leaderboard. Score=0.0260809843625832

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