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What are the different types of QSAR perturbation methods? 


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QSAR perturbation methods include the minor latent variable perturbation (MLVP)-PLS method . This method eliminates redundant variables in multivariable data matrices encountered in QSAR studies. It identifies and eliminates redundant variables by perturbing the latent variable space and observing the variation in PLS regression coefficients . Other perturbation methods were not mentioned in the abstracts provided.

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The paper does not mention any specific types of QSAR perturbation methods.
Book ChapterDOI
Kunal Roy, Supratik Kar, Rudra Narayan Das 
01 Jan 2015
1 Citations
The different types of QSAR perturbation methods are not mentioned in the provided information.
The paper does not mention QSAR perturbation methods.
The paper discusses a new QSAR perturbation method called minor latent variable perturbation (MLVP)-PLS.
The paper does not mention the different types of QSAR perturbation methods.

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