Statistical procedures for spatial point pattern recognition.
Qüestiió (2002)
- Volume: 26, Issue: 1-2, page 29-59
- ISSN: 0210-8054
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topMateu, Jorge. "Statistical procedures for spatial point pattern recognition.." Qüestiió 26.1-2 (2002): 29-59. <http://eudml.org/doc/40368>.
@article{Mateu2002,
abstract = {Spatial structures in the form of point patterns arise in many different contexts, and in most of them the key goal concerns the detection and recognition of the underlying spatial pattern. Particularly interesting is the case of pattern analysis with replicated data in two or more experimental groups. This paper compares design-based and model-based approaches to the analysis of this kind of spatial data. Basic questions about pattern detection concern estimating the properties of the underlying spatial point process within each experimental group, and comparing the properties between groups. The paper discusses how either approach can be implemented in the specific context of a single-factor replicated experiment and uses simulations to show how the model-based approach can be more efficient when the underlying model assumptions hold, but potentially misleading otherwise.},
author = {Mateu, Jorge},
journal = {Qüestiió},
keywords = {Proceso de Markov; Inferencia; Modelos paramétricos; Reconocimiento de formas; Patrones puntuales; expected significance levels; replicated patterns; spatial point structures},
language = {eng},
number = {1-2},
pages = {29-59},
title = {Statistical procedures for spatial point pattern recognition.},
url = {http://eudml.org/doc/40368},
volume = {26},
year = {2002},
}
TY - JOUR
AU - Mateu, Jorge
TI - Statistical procedures for spatial point pattern recognition.
JO - Qüestiió
PY - 2002
VL - 26
IS - 1-2
SP - 29
EP - 59
AB - Spatial structures in the form of point patterns arise in many different contexts, and in most of them the key goal concerns the detection and recognition of the underlying spatial pattern. Particularly interesting is the case of pattern analysis with replicated data in two or more experimental groups. This paper compares design-based and model-based approaches to the analysis of this kind of spatial data. Basic questions about pattern detection concern estimating the properties of the underlying spatial point process within each experimental group, and comparing the properties between groups. The paper discusses how either approach can be implemented in the specific context of a single-factor replicated experiment and uses simulations to show how the model-based approach can be more efficient when the underlying model assumptions hold, but potentially misleading otherwise.
LA - eng
KW - Proceso de Markov; Inferencia; Modelos paramétricos; Reconocimiento de formas; Patrones puntuales; expected significance levels; replicated patterns; spatial point structures
UR - http://eudml.org/doc/40368
ER -
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