Regression is a supervised machine learning method for predicting continuous values. The regression algorithm's ultimate purpose is to plot the best-fit line or curve between the data. Variance, bias, and error are the three main metrics used to evaluate the trained regression model.
Model selection is a procedure in statistics that allows researchers to analyse the relative value of many statistical models in order to discover which one is the best match for the observed data. One of the most prominent approaches of model selection is the Akaike information criterion.
The task of picking a statistical model from a group of candidate models given data is known as model selection. A pre-existing set of data is considered in the simplest circumstances. However, the assignment might also include experiment design so that the data acquired is well-suited to the model selection problem.
In order to optimally reveal the structure of the problem to the learning algorithm, certain techniques require specialised data preparation. As a result, we must take it a step further and define model selection as the act of choosing between several model development pipelines.
Model selection is a procedure in statistics that allows researchers to analyse the relative value of many statistical models in order to discover which one is the best match for the observed data. One of the most prominent approaches of model selection is the Akaike information criterion.
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Suresh Kumar
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Hi Sir,
I want a clearity up on these
1. To learn Data Science "Machine learning" is part of it but we have to learn additionally python libraries (panda, numpy, matplotlib) or else in ML enough.
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Ayush Bharti
4
how can i download the finaldata.csv?
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Jagannath Mahato
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Hello Kushal Sir!
Your way of teaching is very good. I thank you from my heart ❤️ that you are providing such good content for free.
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Muhammad Qasim
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Hi Kushal ! Your way of teaching is extremely helpful and you are one of the best teacher in the world.
Extremely helpful and I recommend to my peer as well for this course.
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Shafi Akhtar
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Aniket Kumar prasad
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Very helpful and easy to understand all the concepts, best teacher for learning ML.
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Rishu Shrivastav
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explained everything in detail. I have a question learnvern provide dataset , and ppt ? or not?
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VIKAS CHOUBEY
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very nicely explained
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Vrushali Kandesar
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Awesome and very nicely explained!!!
One importing thing to notify to team is by mistakenly navie's practical has been added under svm lecture and vice versa (Learning Practical 1)
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