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PS I was using AI before I even went to law school

This is what we called it back then. "Supervised classi...
arousing menage
  11/29/25
"Commonly, classification uses a maximum-likelihood cla...
arousing menage
  11/29/25
suck my dick niggerfaggot
Diverse lodge athletic conference
  11/29/25
A Gentle Introduction to Maximum Likelihood Estimation for M...
arousing menage
  11/29/25
MLE is commonly used in logistic regression, Gaussian Mixtur...
arousing menage
  11/29/25
Unnnnngh https://x.com/distant_earth83/status/19950335493...
arousing menage
  11/30/25


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Date: November 29th, 2025 2:51 PM
Author: arousing menage

This is what we called it back then. "Supervised classification."

https://www.sciencedirect.com/topics/earth-and-planetary-sciences/supervised-classification

Same shit, different name. Still don't think it's a bubble?

(http://www.autoadmit.com/thread.php?thread_id=5804141&forum_id=2в#49470547)



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Date: November 29th, 2025 2:54 PM
Author: arousing menage

"Commonly, classification uses a maximum-likelihood classifier to determine the probability that a cell belongs to a class and assigns the cell to the class it is most likely to belong to."

(http://www.autoadmit.com/thread.php?thread_id=5804141&forum_id=2в#49470555)



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Date: November 29th, 2025 2:55 PM
Author: Diverse lodge athletic conference

suck my dick niggerfaggot

(http://www.autoadmit.com/thread.php?thread_id=5804141&forum_id=2в#49470557)



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Date: November 29th, 2025 2:55 PM
Author: arousing menage

A Gentle Introduction to Maximum Likelihood Estimation for Machine Learning

By Jason Brownlee on November 5, 2019 in Probability

https://machinelearningmastery.com/what-is-maximum-likelihood-estimation-in-machine-learning/

After reading this post, you will know:

Maximum Likelihood Estimation is a probabilistic framework for solving the problem of density estimation.

It involves maximizing a likelihood function in order to find the probability distribution and parameters that best explain the observed data.

It provides a framework for predictive modeling in machine learning where finding model parameters can be framed as an optimization problem.

(http://www.autoadmit.com/thread.php?thread_id=5804141&forum_id=2в#49470559)



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Date: November 29th, 2025 2:59 PM
Author: arousing menage

MLE is commonly used in logistic regression, Gaussian Mixture Models (GMMs), Hidden Markov Models (HMMs), and Natural Language Processing (NLP). In AI-driven applications, it helps in predictive modeling, speech recognition, and anomaly detection. By finding parameter values that make the observed data most probable, MLE ensures that models generalize well and make reliable predictions.

https://www.appliedaicourse.com/blog/maximum-likelihood-estimation-in-machine-learning/

(http://www.autoadmit.com/thread.php?thread_id=5804141&forum_id=2в#49470563)



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Date: November 30th, 2025 9:33 PM
Author: arousing menage

Unnnnngh

https://x.com/distant_earth83/status/1995033549368373672?t=GESEqbgPvIh_viAj6k4wfw&s=19

(http://www.autoadmit.com/thread.php?thread_id=5804141&forum_id=2в#49473216)