scholarly journals Statistical modeling of seasonal wastewater inflows based on periodogram technique: a case study for Kuwait

Urban Water ◽  
2012 ◽  
Author(s):  
J. Almedeij ◽  
R. Aljarallah
Keyword(s):  
2021 ◽  
Author(s):  
Henrik Singmann ◽  
Gregory Edward Cox ◽  
David Kellen ◽  
Suyog Chandramouli ◽  
Clintin Davis-Stober ◽  
...  

Statistical modeling is generally meant to describe patterns in data in service of the broader scientific goal of developing theories to explain those patterns. Statistical models support meaningful inferences when models are built so as to align parameters of the model with potential causal mechanisms and how they manifest in data. When statistical models are instead based on assumptions chosen by default, Attempts to draw inferences can be uninformative or even paradoxical—in essence, the tail is trying to wag the dog.These issues are illustrated by van Doorn et al. (in press) in the context of using BayesFactors to identify effects and interactions in linear mixed models. We show that the problems identified in their applications can be circumvented by using priors over inherently meaningful units instead of default priors on standardized scales. This case study illustrates how researchers must directly engage with a number of substantive issues in order to support meaningful inferences, of which we highlight two: The first is the problem of coordination, which requires a researcher to specify how the theoretical constructs postulated by a model are functionally related to observable variables. The second is the problem of generalization, which requires a researcher to consider how a model may represent theoretical constructs shared across similar but non-identical situations, along with the fact that model comparison metrics like Bayes Factors do not directly address this form of generalization. For statistical modeling to serve the goals of science, models cannot be based on default assumptions, but should instead be based on an understanding of their coordination function and on how they represent causal mechanisms that may be expected to generalize to other related scenarios.


2018 ◽  
Vol 77 (3) ◽  
Author(s):  
Maryam Ghazanfari Shabankareh ◽  
Hakimeh Amanipoor ◽  
Sedigheh Battaleb-Looie ◽  
Javad Dravishi Khatooni

2007 ◽  
Author(s):  
Subhash C. Basak ◽  
Denise Mills ◽  
Douglas M. Hawkins ◽  
Jessica J. Kraker ◽  
Theodore E. Simos ◽  
...  
Keyword(s):  

1987 ◽  
Vol 12 (2) ◽  
pp. 101-128 ◽  
Author(s):  
D. A. Freedman

In 1967, Blau and Duncan proposed a path model for education and stratification. This is one of the most influential applications of statistical modeling technique to social data. There is recent use of the same technique in Hope’s (1984) comparative study of Scotland and the United States, As Others See Us: Schooling and Social Mobility in Scotland and the United States. A review of path analysis is offered here, with Hope’s model used as an example, the object being to suggest the limits of the method in analyzing complex phenomena.


2015 ◽  
Vol 13 (2) ◽  
pp. 353-382 ◽  
Author(s):  
Karolina Krawczak ◽  
Dylan Glynn

This study focuses on the conceptual category of mirativity and its constructional construal in English. We propose an operationalization of mirativity with a view to investigating the phenomenon within the usage-based quantitative methodology of multifactorial analysis (Geeraerts, Grondelaers, & Bakema, 1994; Gries, 2003). The proposed operationalization is founded on two usage dimensions, i.e., the degree of performativity of the utterance and the degree of incongruity of the described event. It is argued that mirativity, in its prototypical form, can be operationally defined as a combination of high levels of these two variables. The feasibility of this operationalization in usage-based quantitative research is tested in a case study investigating three surprise-encoding constructions in English: [what + the + np], [what + a + np] and [to + my + np]. The data, amounting to 350 observations of the three constructions, were extracted from dialogic online diaries and submitted to detailed manual annotation and subsequent multivariate statistical modeling. The results reveal a usage continuum ranging from [what + the + np] through [to + my + np] to [what + a + np] relative to the high degrees of performativity and incongruity.


2013 ◽  
Vol 27 (5) ◽  
pp. 1439-1455 ◽  
Author(s):  
Jaber M. A. Alkasseh ◽  
Mohd Nordin Adlan ◽  
Ismail Abustan ◽  
Hamidi Abdul Aziz ◽  
Abu Bakar Mohamad Hanif

2021 ◽  
Author(s):  
Jian Zhou

This thesis is aimed at finding solutions and statistical modeling techniques to analyze the video content in a way such that intelligent and efficient interaction with video is possible. In our work, we investigate several fundamental tasks for content analysis of video. Specifically, we propose an outline video parsing algorithm using basic statistical measures and an off-line solution using Independent Component Analysis (ICA). A spatiotemporal video similarity model based on dynamic programming is developed. For video object segmentation and tracking, we develop a new method based on probabilistic fuzzy c-means and Gibbs random fields. Theoretically, we develop a generic framework for sequential data analysis. The new framework integrates both Hidden Markov Model and ICA mixture model. The re-estimation formulas for model parameter learning are also derived. As a case study, the new model is applied to golf video for semantic event detection and recognition.


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