A regression strategy for analyzing environmental data generated by spatio-temporal processes |
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Affiliation: | 1. Department of Mathematical Sciences, University of Montana, Missoula, MT 59812, USA;2. Mail Stop: 242-4, NASA Ames Research Center, Moffett Field, CA 94035, USA;1. Dipartimento di Elettronica, Informazione e Bioingegneria, Politecnico di Milano, via Ponzio 34/5, I-20133 Milano, Italy;2. Dipartimento di Bioscienze, Università degli Studi di Parma, viale Usberti 11/A, I-43100 Parma, Italy;3. INRA, UR1115 PSH, F-84914 Avignon, France;4. Consorzio Interuniversitario per le Scienze del Mare, piazzale Flaminio 9, I-00196 Roma, Italy;5. Station Biologique de la Tour du Valat, Le Sambuc, F-13200 Arles, France;6. Hopkins Marine Station, Stanford University, 120 Oceanview Blvd, 93950 Pacific Grove, CA, USA;1. Department of Physics, University of Azad Jammu and Kashmir, Muzaffarabad, Pakistan;2. Department of Chemistry, University of Poonch, Rawalakot, Azad Kashmir, Pakistan;3. National Centre for Physics, QAU Islamabad, Pakistan;1. Department of Health, Animal Science and Food Safety – Università degli Studi di Milano, Via Trentacoste 2, 20134, Milano, Italy;2. Department of Food Science and Health. Andalusian Institute of Agricultural and Fisheries Research and Training (IFAPA), Avda. Menéndez Pidal s/n, 14004, Córdoba, Spain;1. Independent Researcher, Calle Cartero Casiano Díaz 19, Bajo B, La Gallega, Sta. Cruz de Tenerife, 38107, Tenerife, Canary Islands, Spain;2. Centro de Investigaciones en Biodiversidad y Ambientes Sustentables (CIBAS), Universidad Católica de la Santísima Concepción, Concepción, Chile;3. Departmento de Ecología, Facultad de Ciencias, Universidad Católica de la Santísima Concepción, Casilla 297, Concepción, Chile;4. Department of Biology, Miami University, Oxford, OH, 45056, USA;5. Department of Physical, Chemical and Natural Systems, Faculty of Experimental Sciences, University Pablo de Olavide, E-41013, Seville, Spain |
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Abstract: | ![]() Highly complex spatio-temporal environmental data sets are becoming common in ecology because of the increasing use of large-scale simulation models and automated data collection devices. The spatial and temporal dimensions present real and difficult challenges for the interpretation of these data. A particularly difficult problem is that the relationship among variables can vary in dramatically in response to environmental variation; consequently, a single model may not provide adequate fit. The temporal dimension presents both opportunities for improved prediction because explanatory variables sometimes exert delayed effects on response variables, and problems because variables are often serially correlated. This article presents a regression strategy for accommodating these problems and exploiting serial correlation. The strategy is illustrated by a case study of simulated net primary production (SNPP) that compares ocean-atmosphere indices to terrestrial climate variables as predictors of SNPP across the conterminous United States, and describes spatial variation in the relative importance of terrestrial climate variables towards predicting SNPP. We found that the relationship between ocean-atmosphere indices and SNPP varies substantially over the United States, and that there is evidence of a substantive link only in the western portions of the United States. Evidence of multi-year delays in the effect of terrestrial climate effects on SNPP were also found. |
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