Remove Algorithm Remove Categorization Remove Explainability
article thumbnail

5 Essential Classification Algorithms Explained for Beginners

Machine Learning Mastery

Introduction Classification algorithms are at the heart of data science, helping us categorize and organize data into pre-defined classes. These algorithms are used in a wide array of applications, from spam detection and medical diagnosis to image recognition and customer profiling.

article thumbnail

Weak supervision for non-categorical applications + superalignment

Snorkel AI

Snorkel AI has thoroughly explained weak supervision elsewhere, but I will explain the concept briefly here. To identify the overlap densities within datasets, we developed an overlap detection algorithm leveraging the simplicity bias in neural network learning. I have also summarized the presentation’s main points here.

professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

Weak supervision for non-categorical applications + superalignment

Snorkel AI

Snorkel AI has thoroughly explained weak supervision elsewhere, but I will explain the concept briefly here. To identify the overlap densities within datasets, we developed an overlap detection algorithm leveraging the simplicity bias in neural network learning. I have also summarized the presentation’s main points here.

article thumbnail

Classification Algorithm in Machine Learning: A Comprehensive Guide

Pickl AI

Summary: This comprehensive guide covers the basics of classification algorithms, key techniques like Logistic Regression and SVM, and advanced topics such as handling imbalanced datasets. Classification algorithms are crucial in various industries, from spam detection in emails to medical diagnosis and customer segmentation.

article thumbnail

Amazon AI Introduces DataLore: A Machine Learning Framework that Explains Data Changes between an Initial Dataset and Its Augmented Version to Improve Traceability

Marktechpost

Second, for each provided base table T, the researchers use data discovery algorithms to find possible related candidate tables. Adding more details about connected tables in a database to the data catalog basically helps statistical-based search algorithms overcome their limitations. Check out the Paper.

article thumbnail

Behind AI #1: Machine Learning Algorithms Any AI Enthusiast Should Know

Artificial Corner

Tech concepts (if any) will be explained in plain English. If you’re new to ML, you probably must’ve heard of the words “algorithm” or “model” without knowing how they’re related to machine learning. Machine learning algorithms are categorized as supervised or unsupervised.

article thumbnail

Judicial systems are turning to AI to help manage its vast quantities of data and expedite case resolution

IBM Journey to AI blog

The Ministry of Justice in Baden-Württemberg recommended using AI with natural language understanding (NLU) and other capabilities to help categorize each case into the different case groups they were handling. Explainability will play a key role. The courts needed a transparent, traceable system that protected data.