Remove 2018 Remove Decision Trees Remove Support Vector Machines
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Generative vs Discriminative AI: Understanding the 5 Key Differences

Data Science Dojo

Duplex leverages sophisticated machine learning algorithms to understand natural language, navigate complex conversations, and perform tasks autonomously, mimicking human-like interactions seamlessly.

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How To Improve Machine Learning Model Accuracy

DagsHub

In 2018, there were extensive news reports that an Uber self-driving car made an accident with a pedestrian in Tempe, Arizona. The pedestrian died, and investigators found that there was an issue with the machine learning (ML) model in the car, so it failed to identify the pedestrian beforehand.

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Are AI technologies ready for the real world?

Dataconomy

AI practitioners choose an appropriate machine learning model or algorithm that aligns with the problem at hand. Common choices include neural networks (used in deep learning), decision trees, support vector machines, and more. With the model selected, the initialization of parameters takes place.

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What a data scientist should know about machine learning kernels?

Mlearning.ai

Before we discuss the above related to kernels in machine learning, let’s first go over a few basic concepts: Support Vector Machine , S upport Vectors and Linearly vs. Non-linearly Separable Data. The linear kernel is ideal for linear problems, such as logistic regression or support vector machines ( SVMs ).