DEV Community

Linear regression as likelihood maximization

artemborin on September 19, 2023

Linear regression is a tool for forecasting outcomes by analyzing the connections among variables. It's about crafting an optimal line to represent...
Collapse
 
ste02956653 profile image
Jack Steven

Recognizing biases and patterns is foundational to sound data analysis.

Collapse
 
jennysmith444444 profile image
Jenny

Your point about validating the model regularly is spot on!

Collapse
 
ste02956653 profile image
Jack Steven

Thoroughly enjoyed the emphasis on understanding the data before diving into linear regression and likelihood maximization.

Collapse
 
raafa94097342 profile image
raafa

The emphasis on choosing the right error metric resonates strongly, it's crucial for adapting models effectively to align with specific objectives.

Collapse
 
eissa_mala41742 profile image
Malak Eissa

Really appreciate the detailed insights! This provides a fresh perspective on utilizing linear regression as a tool for likelihood maximization, enhancing its predictive accuracy.


Collapse
 
robert31991 profile image
Robert Smeth

Recognizing biases and patterns is foundational to sound data analysis.

Collapse
 
mijanur9271 profile image
Rifat

Very nice posit

Collapse
 
ronikumar profile image
Williams Joseph

Really appreciate the detailed insights! This provides a fresh perspective on utilizing linear regression as a tool for likelihood maximization, enhancing its predictive accuracy.


Collapse
 
j2j2117 profile image
Jeje

Thoroughly enjoyed the emphasis on understanding the data before diving into linear regression and likelihood maximization.

Collapse
 
rorretta128830 profile image
rorretta1292

The emphasis on choosing the right error metric resonates strongly, it's crucial for adapting models effectively to align with specific objectives.

Collapse
 
parvej56192 profile image
Masud parvej

Staying updated with tools is vital in our ever-evolving tech world.

Collapse
 
ellameller1 profile image
Ella Meller

Your point about validating the model regularly is spot on!