On the Choice of Linear Regression Algorithms for Biological and Ecological Applications

Journal Title: Annual Research & Review in Biology - Year 2016, Vol 10, Issue 3

Abstract

Model II regression (i.e. minimizing residuals obliquely) is the adequate alternative to Model I regression by Ordinary Least Squares (i.e. minimizing residuals vertically) given the absence of well-established dependence relationships or x measured with error. Yet, it has no perfect solution. Determining the true slope from errors-in-the-variables models requires the errors in x and y estimated from higher order moments. However, their accurate estimation requires enormous data sets and thus they are not applicable to most ecological problems. The alternative Reduced Major Axis (RMA) is dependent on a strict set of assumptions, hardly met with real data, making it prone to bias, whereas Principal Components Analysis (PCA) becomes less reliable with decreasing correlations while x and y presenting approximate variances. We used artificial data (allowing for the determination of the true slope) to demonstrate when RMA or PCA should be preferred. Consequently, we propose using PCA whenever r2+s2x/s2y is higher than 1.5. Otherwise, we suggest generating artificial data manipulated to match the structure of the original, and to test which method provides closer estimates to the input true slope. We provide a user-friendly script to perform this task. We tested the use of RMA and PCA with real data about intraspecific and interspecific biomass-density relations in algae and seagrass, algae frond growth, crustacean and bird morphometry, sardine fisheries and social sciences data, commonly finding widely divergent slope estimates leading to severely biased parameter estimations and model applications. Their analyses support the suggested approach for method selection summarized above.

Authors and Affiliations

Vasco M. N. C. S. Vieira, Joel Creed, Ricardo A. Scrosati, Anabela Santos, Georg Dutschke, Francisco Leitão, Aschwin H. Engelen, Oscar R. Huanel, Marie-Laure Guillemin, Marcos Mateus, Ramiro Neves

Keywords

Related Articles

Study of -141 DRD2 Dopamine Receptor Gene Polymorphism (rs1799732) and Heroin Dependence

Previous studies showed that the dopamine receptor D2 (DRD2) may be associated with drug dependence. This study aimed to determine the role of DRD2 in development of substance dependence in Iranian-Azeri heroin-dependent...

Morphological Diversity and Cytological Studies in Some Accessions of Vigna vexillata (L.) A. Richard

Aim: The objectives of this study were to characterize and evaluate intraspecific relationship among twenty-six accessions of Vigna vexillata (L.) and work out interrelationship among the morphological traits which could...

Antibacterial Activity of Corn Starch Films Incorporated with Zataria multiflora and Bonium persicum Essential Oils

Introduction: Nowadays biodegradable packaging such as edible coatings and films, are known as alternatives to plastic compounds and synthetic packaging since they are carriers for food additives (e.g. natural ingredient...

Phylogenetic Considerations in the Evolutionary Development of Aminoglycoside Resistance Genes in Pathogenic Bacteria

This study revisits antibiotic resistance as a source of evolutionary development in pathogenic bacteria. By taking a molecular phylogenetic approach to this inquiry, I seek to find homologous correlations in antimicrobi...

Quantitative Analysis of Cassava Products and Their Impacts on the Livelihood of Value Chain Actors: Case of the Centre Region of Cameroon

This study was carried out to analyze the trend of cassava (Manihot esculenta) products and impacts on the livelihood of value chain actors in the Centre Region of Cameroon. Thus, surveys were carried out in 2016, in six...

Download PDF file
  • EP ID EP351071
  • DOI 10.9734/ARRB/2016/25219
  • Views 102
  • Downloads 0

How To Cite

Vasco M. N. C. S. Vieira, Joel Creed, Ricardo A. Scrosati, Anabela Santos, Georg Dutschke, Francisco Leitão, Aschwin H. Engelen, Oscar R. Huanel, Marie-Laure Guillemin, Marcos Mateus, Ramiro Neves (2016). On the Choice of Linear Regression Algorithms for Biological and Ecological Applications. Annual Research & Review in Biology, 10(3), 1-9. https://europub.co.uk/articles/-A-351071