Statistical Approaches for Treatments over Time (Repeated Observations) in Nile Tilapia

2019 ◽  
Vol 60 (1) ◽  
pp. 49
Author(s):  
Fatma Abdallah
2014 ◽  
Vol 30 (8) ◽  
pp. 1237-1243 ◽  
Author(s):  
Karen Leffondre ◽  
Julie Boucquemont ◽  
Giovanni Tripepi ◽  
Vianda S. Stel ◽  
Georg Heinze ◽  
...  

Soil Research ◽  
2014 ◽  
Vol 52 (4) ◽  
pp. 349 ◽  
Author(s):  
S. B. Karunaratne ◽  
T. F. A. Bishop ◽  
I. O. A. Odeh ◽  
J. A. Baldock ◽  
B. P. Marchant

The importance of soil organic carbon (SOC) in maintaining soil health is well understood. However, there is growing interest in studying SOC with an emphasis on quantifying its changes in space and time. This is because of the potential for soil to be used to sequester atmospheric C. There are many issues which make this difficult, for example shortcomings in sampling designs, and differences in vertical and lateral sampling supports between surveys, particularly if legacy data are used as the baseline survey. In this study, we systematically work through these issues and show how a protocol can be developed using design-based and model-based statistical approaches to estimate changes in SOC in space and time at different spatial supports. We demonstrate this protocol in a small subcatchment in the upper Namoi valley for estimating the change in SOC over time, whereby the baseline dataset was collected during 1999–2001 and is compared with a dataset from November 2010. The results from both design-based and model-based approaches revealed a drop in SOC across the catchment between the two survey periods. A 0.26% drop in SOC was reported globally across the catchment. Nevertheless, the change in SOC reported for both approaches was not statistically significant.


2021 ◽  
Vol 12 ◽  
Author(s):  
Robert R. McCrae

Some accounts of the evolution of music suggest that it emerged from emotionally expressive vocalizations and serves as a necessary counterweight to the cognitive elaboration of language. Thus, emotional expression appears to be intrinsic to the creation and perception of music, and music ought to serve as a model for affect itself. Because music exists as patterns of changes in sound over time, affect should also be seen in patterns of changing feelings. Psychologists have given relatively little attention to these patterns. Results from statistical approaches to the analysis of affect dynamics have so far been modest. Two of the most significant treatments of temporal patterns in affect—sentics and vitality affects have remained outside mainstream emotion research. Analysis of musical structure suggests three phenomena relevant to the temporal form of emotion: affect contours, volitional affects, and affect transitions. I discuss some implications for research on affect and for exploring the evolutionary origins of music and emotions.


1976 ◽  
Vol 87 (2) ◽  
pp. 423-432 ◽  
Author(s):  
J. G. Rowell ◽  
D. E. Walters

SummarySplit-plot (or split-block) analyses are commonly applied to experimental results where several successive observations of the same variable have been recorded on each experimental unit. The assumptions required for such analyses receive scant attention and it often seems unlikely that these assumptions would be satisfied in experimental situations. Five sets of results are presented to support this proposition. An alternative analytical approach is suggested in which contrasts over time are analysed; such a method is always valid, computationally simple, and readily interpretable, and may also be used to gauge the validity of the split-plot analysis.


2020 ◽  
Author(s):  
Andrew Martinez ◽  
Luke Jackson ◽  
Felix Pretis ◽  
Katarina Juselius

<p>The greatest sources of uncertainty for future sea-level rise are the Greenland and Antarctic ice sheets. An important aspect of this uncertainty is the potential interconnectivity between them, which may amplify underlying instabilities in individual ice sheets. We explore these connections empirically by modelling the ice sheets as a cointegrated system. We consider two specications which allow the ice sheets to follow either an I(1) or an I(2) process in order to disentangle the long-run theory consistent relationships in the data. We examine the stability of these relationships over time both in and out of sample and eximine how a sudden loss of ice in Greenland propagates through the system. We show that a 1 Gigatonne loss of ice leads to a large and persistent loss of ice in West Arctica which is partially offset by an accumulation of ice in East Antarctica. Accounting for the long-run interactions between the ice sheets helps to improve our understanding of future instabilities and provides useful projections of the future paths of the ice sheets.</p>


2013 ◽  
Vol 398-399 ◽  
pp. 19-26 ◽  
Author(s):  
Alexander Panda ◽  
Shu Chen ◽  
Albert C. Shaw ◽  
Heather G. Allore

2020 ◽  
Vol 45 (1) ◽  
pp. 28-39
Author(s):  
Pascal R. Deboeck ◽  
David A. Cole ◽  
Kristopher J. Preacher ◽  
Rex Forehand ◽  
Bruce E. Compas

Many interventions are characterized by repeated observations on the same individuals (e.g., baseline, mid-intervention, two to three post-intervention observations), which offer the opportunity to consider differences in how individuals vary over time. Effective interventions may not be limited to changing means, but instead may also include changes to how variables affect each other over time. Continuous time models offer the opportunity to specify differing underlying processes for how individuals change from one time to the next, such as whether it is the level or change in a variable that is related to changes in an outcome of interest. After introducing continuous time models, we show how different processes can produce different expected covariance matrices. Thus, models representing differing underlying processes can be compared, even with a relatively small number of repeated observations. A substantive example comparing models that imply different underlying continuous time processes will be fit using panel data, with parameters reflecting differences in dynamics between control and intervention groups.


2021 ◽  
Author(s):  
Fabian Thomas ◽  
Adam Shehata ◽  
Lukas P Otto ◽  
Judith Möller ◽  
Elisabeth Prestele

Abstract Choosing an appropriate statistical model to analyze reciprocal relations between individuals’ attitudes, beliefs, or behaviors over time can be challenging. Often, decisions for or against specific models are rather implicit and it remains unclear whether the statistical approach fits the theory of interest. For longitudinal models, this is problematic since within- and between-person processes can be confounded leading to wrong conclusions. Taking the perspective of the reinforcing spirals model (RSM) focusing on media effects and selection, we compare six statistical models that were recently used to analyze the RSM and show their ability to separate within- and between-person components. Using empirical data capturing respondents’ development during adolescence, we show that results vary across statistical models. Further, Monte Carlo simulations indicate that some approaches might lead to wrong conclusions if specific communication dynamics are present. In sum, we recommend using approaches that explicitly model and clearly separate within- and between-person effects.


2021 ◽  
Author(s):  
Erwin Stolz ◽  
Hannes Mayerl ◽  
Wolfgang Freidl

BACKGROUND: It is unclear how strong and long lasting the effects of recurring COVID-19 restrictions on older adults' loneliness are. METHODS: 469 retired older adults (60+) provided 8,814 repeated observations of loneliness (27 waves) in the Austrian Corona Panel Project between March 2020 and December 2021. Ordinal mixed regression models were used to estimate the effect of the stringency of COVID-19 restrictions (SI) on loneliness. RESULTS: The proportion of older adults who reported to be often lonely correlated closely (r=0.63) with the SI over time: both peaked during lockdowns (SI=82, often lonely=10-12%) and were lowest during the summer of 2020 (SI=36, often lonely=5- 6%). Results from regression models indicate, that when the SI increased above 60 (=strict lockdown), an increase in loneliness followed. Older adults who lived alone were more affected than those living with others. CONCLUSIONS: Stringent COVID-19 restrictions lead to situational loneliness, par- ticularly among those who lived alone. Efforts should be made to enable older adults who live alone to have save in-person contact during lockdown periods.


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