An algorithm to calculate NFT rarity(how unique it is), based on Jaccard Distance.
-
Updated
Feb 23, 2024 - TypeScript
An algorithm to calculate NFT rarity(how unique it is), based on Jaccard Distance.
Tweets clustering K-means
String Comparision in C#.NET
TreeMinHash: Fast Sketching for Weighted Jaccard Similarity Estimation
Clustering similar tweets using K-means clustering algorithm and Jaccard distance metric
Massive Sparse Data Clustering Based on Frequent Items (SIGMOD 2023)
String distances in rust
A lightweight product recommendation system (Item Based Collaborative Filtering) developed in Haskell.
Link prediction - Who are my friends?
A string metric that measures proximity between 2 words. The metric calculation is a formula that utilizes 3 existing String metric algorithms: Jaccard Distance, Edit Distance and Longest Common Substring Distance.
By clustering similar tweets together, we can generate a more concise and organized representation of the raw tweets, which will be very useful for many Twitter-based applications (e.g., truth discovery, trend analysis, search ranking, etc.)
A graph mining problem where the task was to predict a link between the given nodes. Engineered different features like Jaccard Distance, Cosine-Similarity, Shortest Path, Page Rank, Adar Index, HITS score and Kartz Centrality. Finally built non-linear models to get the final F1 score as 0.92.
Given a directed social graph, have to predict missing links to recommend users.
Clustering Amazon review data around 6M users using Kmeans and Dbscan algorithm.
data and R code to reproduce the analysis and plots presented in the manuscript: "Macrophenological dynamics from citizen science plant occurrence data"
Locality sensitive hashing based plagiarism checker
Compression algorithm based kernel perceptron using Jaccard's similitary
Fast Jaccard similarity search for abstract sets (documents, products, users, etc.) using MinHashing and Locality Sensitve Hashing
Set of tasks solved in Big Data Algorithms course
Add a description, image, and links to the jaccard-distance topic page so that developers can more easily learn about it.
To associate your repository with the jaccard-distance topic, visit your repo's landing page and select "manage topics."