نتایج جستجو برای: linear regression elevation

تعداد نتایج: 799403  

Journal: :Scientific Research Journal 2018

Journal: :The Annals of Statistics 1995

Journal: :IEEE Transactions on Signal Processing 2023

We study the error of linear regression in face adversarial attacks. In this framework, an adversary changes input to model order maximize prediction error. provide bounds on presence as a function parameter norm and absence such adversary. show how these make it possible using analysis from non-adversarial setups. The obtained results shed light robustness overparameterized models Adding featu...

Journal: :Econometrica 2023

This paper notes a simple connection between synthetic control and online learning. Specifically, we recognize as an instance of Follow-The-Leader (FTL). Standard results in convex optimization then imply that, even when outcomes are chosen by adversary, predictions counterfactual for the treated unit perform almost well oracle weighted average units' outcomes. Synthetic on differenced data per...

Journal: :IEEE Access 2021

Tensor regression is an important and useful tool for analyzing multidimensional array data. To deal with high dimensionality, CANDECOMP/PARAFAC (CP) low-rank constraints are often imposed on the coefficient tensor parameter in (penalized) loss functions. However, besides well-known non-identifiability issue of CP parameters, we demonstrate that corresponding optimization may not have any attai...

Journal: :Journal of Econometrics 2021

Motivated by the newly developed max-linear competing copula factor models and max-stable nonlinear time series models, we propose a new class of regression to take advantages easy interpretable features embedded in linear models. It can be seen that relation is special case relation. We develop an EM algorithm based maximum likelihood estimation procedure. The consistency asymptotics estimator...

Journal: :Lecture Notes in Computer Science 2021

Field observations form the basis of many scientific studies, especially in ecological and social sciences. Despite efforts to conduct such surveys a standardized way, can be prone systematic measurement errors. The removal variability introduced by observation process, if possible, greatly increase value this data. Existing non-parametric techniques for correcting errors assume linear additive...

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The aim of this research was to generate a landslide hazard zoning map by using the multivariate linear regression method in the Kohsar Watershed, Northwest of Tehran. Initially, we used field surveys, local interview and review of studies outside and inside of Iran. Eleven effective factors were recognized on landslide. These factors included: slope degree, slope aspect, elevation, lithology, ...

Journal: :Remote Sensing 2014
Ibrahim Fayad Nicolas Baghdadi Jean-Stéphane Bailly Nicolas Barbier Valéry Gond Mahmoud El Hajj Frédéric Fabre Bernard Bourgine

Estimating forest canopy height from large-footprint satellite LiDAR waveforms is challenging given the complex interaction between LiDAR waveforms, terrain, and vegetation, especially in dense tropical and equatorial forests. In this study, canopy height in French Guiana was estimated using multiple linear regression models and the Random Forest technique (RF). This analysis was either based o...

2016

In order to calculate confidence intervals and hypothesis tests, it is assumed that the errors are independent and normally distributed with mean zero and variance 2 σ . Given a sample of N observations on X and Y, the method of least squares estimates β0 and β1 as well as various other quantities that describe the precision of the estimates and the goodness-of-fit of the straight line to the d...

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