Similarity Detection on Wikipedia Articles using MinHash and Random Projection implemented in Hadoop/Spark
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Updated
Jul 19, 2018 - Java
Similarity Detection on Wikipedia Articles using MinHash and Random Projection implemented in Hadoop/Spark
A comparison between some dimension reduction algorithms
Fast and lightweight header-only C++ library (with Python bindings) for approximate nearest neighbor search
SHARP: Single-cell RNA-seq Hyper-fast and Accurate processing via ensemble Random Projection
Experiments with dimensionality reduction (physics-based, random projection, etc.)
Shrike.jl: Fast approximate nearest neighbor search with random projection trees. (Benchmarks included)
Summer@ICERM 2020 - Random Projections
Holds code for near-duplicate image parser using optimized image classifiers.
Classical and Neural Dimensionality Reduction Techniques
🏞 A content-based image retrieval (CBIR) system
Applying many advanced unsupervised learning algorithms and techniques
A little lab of learning algorithms (in LUA). Less XAI, but better
Code demo to reproduce the experimental results of our NeurIPS 2022 paper "Approximate Euclidean lengths and distances beyond Johnson-Lindenstrauss"
Random Projection for deep Neural Networks parameters number reduction.
[NAACL 2022]Mobile Text-to-Image search powered by multimodal semantic representation models(e.g., OpenAI's CLIP)
Basic exploration of Higgs boson data
Efficient Bayesian high-dimensional classification via random projection with application to gene expression data
[CVPR 2023] Adversarial Robustness via Random Projection Filters
Sklearn, PCA, t-SNE, Isomap, NMF, Random Projection, Spectral Embedding
Recognize one of six human activities such as standing, sitting, and walking using a Softmax Classifier trained on mobile phone sensor data.
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