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SAT
Official Pytorch code for Structure-Aware Transformer.topological-autoencoders
Code for the paper "Topological Autoencoders" by Michael Moor, Max Horn, Bastian Rieck, and Karsten Borgwardt.Set_Functions_for_Time_Series
Repository of the ICML 2020 paper "Set Functions for Time Series"TOGL
Topological Graph Neural Networks (ICLR 2022)GraphKernels
A package for computing Graph Kernelsproteinshake
Protein structure datasets for machine learning.WWL
Wasserstein Weisfeiler-Lehman Graph Kernelsmgp-tcn
Sepsis Prediction on MIMICP-WL
A Persistent Weisfeiler–Lehman Procedure for Graph Classificationgraph-kernels
Graph kernelsS3M
A software package for statistically significant shapelet miningsampling-outlier-detection
Rapid computation of distance-based outlierness scores via samplingmaldi_amr
Code for the paper "Antimicrobial resistance prediction in clinical isolates through machine learning on MALDI-TOF mass spectra"PST
Protein Structure Transformer (PST): Endowing pretrained protein language models with structural knowledgeNeural-Persistence
Code for the paper 'Neural Persistence: A Complexity Measure for Deep Neural Networks Using Algebraic Topology'maldi-learn
Software library for Maldi-Tof preprocessing and machine learning analysis.PyChange
Multiple change detection with pythonWTK
A Wasserstein Subsequence Kernel for Time Series.JointMDS
Official implementation of Joint Multidimensional ScalingfMRI_Cubical_Persistence
Code of our NeurIPS 2020 publication 'Uncovering the Topology of Time-Varying fMRI Data using Cubical Persistence'filtration_curves
Code for the KDD 2021 paper 'Filtration Curves for Graph Representation'fisher_information_embedding
Official code for Fisher information embedding for node and graph learning (ICML 2023)NeuralWalker
Official Pytorch implementation of NeuralWalkerMvKDR
Multi-view Spectral Clustering on Conflicting ViewsKernelized-Rank-Learning
Kernelized rank learning for personalized drug recommendationggme
Official repository for the ICLR 2022 paper "Evaluation Metrics for Graph Generative Models: Problems, Pitfalls, and Practical Solutions" https://openreview.net/forum?id=tBtoZYKd9nHOGImine
Higher-order genetic interaction discovery with network-based biological priors.MotiFiesta
Approximate subgraph motif mining through learnable edge contraction.networkGWAS
Method for performing genome-wide association like studies on neighborhoods identified on biological networks relevant for the phenotype of interest.multicenter-sepsis
MID
MID (Mutual Information Dimension) for measuring statistical dependence between two random variablesgraphkernels-review
Code and data sets for the review on graph kernelsreComBat
reComBat package to correct batch effectsmaldi_PIKE
Code for 'Topological and kernel-based microbial phenotype prediction from MALDI-TOF mass spectra'proteinshake_models
topo-ae-distances
CAsMap
Detection of statistically significant combinations of SNPs in association mappingsignificant-subgraph-mining
Finding statistically significant subgraphs while correcting for multiple testingKernel-Conditional-Clustering
Kernel Conditional ClusteringADNI_3DCNNvsTDA
This is a summary of the model code used in "Back to the basics with inclusion of clinical domain knowledge - A simple, scalable and effective model of Alzheimer's Disease classification". It comprised the relevant 3D CNNs for hippocampus, patch and full inner brain image subsets, the TDA 2D CNN with relevant dense models to combine models trained on persistence images from different homological dimensions. Moreover, the models (GNN and LR) to combine multiple image patches are included, as well as the data splits in terms of ADNI database patient IDs (partitions).2019-06-Machine-Learning-for-Biology
Introduction to Machine Learning for Biology (Workshop @ D-BSSE Retreat 2019)SiNIMin
Significant Network Interval MiningLSH-WTK
Locality-Sensitive Hashing for the Wasserstein Time Series Kernel.LMM-Lasso
An implementation of the Lasso model for association mapping and phenotype prediction which corrects for population strucure (Rakitsch et al., Bioinformatics 2013): http://goo.gl/FRmXwIsepsis-prediction-review
uea_ucr_datasets
A small package for loading and handling UEA UCR time series classification datasets.GP-PoM
graphhopper-kernels
Scalable kernels for graphs with continuous attributes (Feragen et al., NIPS 2013) http://goo.gl/VxSfzZARDISS
Automatic Relevance Determination for Imputation of Summary StatisticsTopf
Topological peak filteringEpistasis-GLIDE
A C and CUDA implementation of tabulating linear regression for an exhaustive pairwise interaction search on a CUDA enabled GPU (Kam-Thong et al., Human Heredity 2012) http://goo.gl/XE54irsimbsig
The official implementation for the SIMBSIG packageFindComb
Scientifica app for finding the most significant combinations of featuresMulti-SConES
Multi-task feature selection coupled with multiple network regularizersImputing_Signatures
PheGeMIL
ccSVM
Confounder-corrected Classification with Support Vector Machines (Li et al., Bioinformatics 2011) http://goo.gl/Qz9Ap5DeepEST
proteinshake_release
MODS-recovery
Codes for prediction of the recovery of pediatric sepsis patients with MODSGraphMatchingSubstitutionMatrices
Code and Data for the paper: Structure- and Function-Aware Substitution Matrices via Learnable Graph Matching (RECOMB 2024 & ICML 2024 Differentiable Almost Everything Workshop)SignificantPatternMiningFDR
Code and Data for the paper: FASM and FAST-YB: Significant Pattern Mining with False Discovery Rate Control (ICDM 2023).sc-autoencoding
student internship of Simon Streib to reduce single cell dataEpistasis-lightbulb
Efficient algorithms and GPU implementations for genome-wide epistasis screens as described in (Achlioptas et al., KDD 2011) http://goo.gl/jX8kPibiobank_genomics
LongCOVID
Prediction of long COVID from proteomic and clinical datagene-representations-in-networks
A systematic evaluation of gene representations in network based genetic analysishomebrew-mlcb
Homebrew taps of the Machine Learning and Computational Biology group of Prof. Karsten Borgwardtglide-scripts
Companion scripts to the GLIDE softwareSCIRecoveryPredictionPublic
We provide a simple matching algorithm to identify digital twins for spinal cord injury patients in the acute injury phase.MoProEmbeddings
Implementation of moment propagation embeddings.Love Open Source and this site? Check out how you can help us