#LinearRegression

2025-04-15

Is machine learning merely a form of curve-fitting?

Python Job Supportpythonjobsupport
2025-04-10

Forecasting in Excel using Linear Regression

Forecasting Hello Friends, In this video, you will learn how to do the sales forecasting in Excel. We have ... source

quadexcel.com/wp/forecasting-i

Journal of Plant Ecologyjpecol
2025-03-30

Bingqian Su et al. established a based on growth and its driving factors on China’s , developed considering , , and using and three .
doi.org/10.1093/jpe/rtae104

Distribution of study sites on the Loess Plateau in the synthesis.
Elod Pal Csirmazcsirmaz@fosstodon.org
2025-03-22

A quick note on treating linear and logistic regression models as kind of neural networks, and whether a partnered 40-year-old with two children will buy a green or a red balloon.

onkeypress.blogspot.com/2023/0

#machinelearning #ai #linearregression #NeuralNetworks #Statistics

Amit Kamalbhai Dhananiamitdhanani2019
2025-02-15

How to Train Machine Learning model withou ML Library with simple Python code a internal work ? then follow below link - it has video also

amitdhanani.in/2025/02/15/how-

2025-02-02

@data @datadon 🧵

Accuracy! To counter regression dilution, a method is to add a constraint on the statistical modeling.
Regression Redress restrains bias by segregating the residual values.
My article: data.yt/kit/regression-redress

#bias #modeling #dataDev #AIDev #modelEvaluation #regression #modelling #dataLearning #linearRegression #probability #probabilities #statistics #stats #correctionRatio #ML #distributions #accuracy #RegressionRedress #Python #RStats

2025-01-30

@data @datadon 🧵

How to assess a statistical model?
How to choose between variables?

Pearson's #correlation is irrelevant if you suspect that the relationship is not a straight line.

If monotonic relationship:
"#Spearman’s rho is particularly useful for small samples where weak correlations are expected, as it can detect subtle monotonic trends." It is "widespread across disciplines where the measurement precision is not guaranteed".
"#Kendall’s Tau-b is less affected [than Spearman’s rho] by outliers in the data, making it a robust option for datasets with extreme values."
Ref: statisticseasily.com/kendall-t

#normality #normalDistribution #modeling #dataDev #AIDev #ML #modelEvaluation #regression #modelling #dataLearning #featureEngineering #linearRegression #modeling #probability #probabilities #statistics #stats #correctionRatio #ML #Pearson #bias #regressionRedress #distributions

2024-12-29

"In real life, we weigh the anticipated consequences of the decisions that we are about to make. That approach is much more rational than limiting the percentage of making the error of one kind in an artificial (null hypothesis) setting or using a measure of evidence for each model as the weight."
Longford (2005) stat.columbia.edu/~gelman/stuf

#modeling #nullHypothesis #probability #probabilities #pValues #statistics #stats #statisticalLiteracy #bias #inference #modelling #regression #linearRegression

2024-11-24

The Coding Train dude is precious. This is the Math teacher I wish I had for every grade I was taught math. youtube.com/watch?v=szXbuO3bVR #math #mathematics #linearregression

Towards Data Sciencetowardsdatascience@me.dm
2024-11-12

In Elisa Yao's newest article, she breaks down the process of implementing Linear Regression in Python using a simple dataset known as “Boston Housing”, step by step.

#LinearRegression #Python

towardsdatascience.com/predict

2024-10-24

@datadon

#Lasso #LinearRegression "is useful in some contexts due to its tendency to prefer solutions with fewer non-zero coefficients, effectively reducing the number of features upon which the given solution is dependent"

scikit-learn.org/stable/module 🧵

#dataDev #AIDev #ML #sklearn #python #interpretability

2024-10-24

For the next few months, Dr. Andrej-Nikolai Spiess (openalex.org/works?page=1&filt) will be a guest in my working group.

We are working on a paper where we show that 29 % of papers in top journals like Science, Nature & PNAS were skewed by a single influential data point! Time to rethink our reliance on p-values and explore alternative measures like #dfstat. #reproducibilitycrisis #linearregression #rstats

Moreover, we will work on #qPCR related software like PCRedux (joss.theoj.org/papers/10.21105)

#JOSS

Show several plots with the effect of influential data points on linear regression: How do different measures respond to outliers? (A) dfbeta(slope), (B) dffits, (C) covratio, (D) hat value, (E) Cook‘s D, and (F) p-value. Outliers in orange areas exceed cut-off values; green indicates significant p-values.

No permssion to train AI in this post.
2024-10-23

@datadon

"The following sections discuss several state-of-the-art interpretable and explainable #ML methods. The selection of works does not comprise an exhaustive survey of the literature. Instead, it is meant to illustrate the commonest properties and inductive biases behind interpretable models and [black-box] explanation methods using concrete instances."
wires.onlinelibrary.wiley.com/ 🧵

#interpretability #explainability #aiethics #compliance #taxonomy #ethicalai #aievaluation #linearRegression

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