Contextual Variation in the Determinants of Fertility

Author(s):  
Fred C. Pampel
Keyword(s):  
Semiotica ◽  
2020 ◽  
Vol 0 (0) ◽  
Author(s):  
Tadeusz Ciecierski

AbstractThe article presents two concepts of indexicality. The first, more standard and narrow, identifies indexicality with systematic (meaning controlled) context-sensitivity. The second, broader (derived from the work of Jerzy Pelc), conceives indexicality in terms of the potential variability of the general semiotic characteristics expressions (with respect to the context of use). The text introduces the concept of a pragmatic matrix that serves for a schematic representation of contextual variation. I also recapitulate briefly the views of Jerzy Pelc on the meaning (manner of use) and use of expressions, and briefly indicate its relationship approaches with contemporary debates around contextualism and status of non-sentential speech acts. Finally, the relationship between the broader notion of indexicality and the directival theory of meaning is analyzed.


The Forum ◽  
2021 ◽  
Vol 19 (2) ◽  
pp. 203-227
Author(s):  
Vladimir E. Medenica ◽  
Matthew Fowler

Abstract While much attention has been paid to understanding the drivers of support for Donald Trump, less focus has been placed on understanding the factors that led individuals to turn out and vote or stay home. This paper compares non-voters and voters in the 2016 election and explores how self-reported candidate preference prior to the election predicted turnout across three different state contexts: (1) all states, (2) closely contested states won by Trump, and (3) closely contested states won by Clinton. We find that preference for both candidates predicted turnout in the aggregate (all states) and in closely contested states won by Clinton, but only preference for Trump predicted turnout in the closely contested states won by Trump. Moreover, we find that political interest is negatively associated with preference for Clinton when examining candidate preferences among non-voters. Our analysis suggests that non-voters in the 2016 election held meaningful candidate preferences that impacted voter turnout but that state context played an important role in this relationship. This study sheds light on an understudied component of the 2016 election, the attitudes and behavior of non-voters, as well as points to the importance of incorporating contextual variation in future work on electoral behavior and voter turnout.


Diachronica ◽  
2012 ◽  
Vol 29 (2) ◽  
pp. 139-161 ◽  
Author(s):  
Esther L. Brown ◽  
William D. Raymond

Using a corpus of Medieval Spanish text, we examine factors affecting the Modern Standard Spanish outcome of the initial /f/ in Latin FV‑ words. Regression analyses reveal that the frequency of a word’s use in extralexical phonetic reducing environments and lexical stress patterns significantly predict the modern distribution of f‑ ([f]) and h‑ (Ø) in the Spanish lexicon of FV‑ words. Quantification of extralexical phonetic context of use has not previously been incorporated in studies of diachronic phonology. We find no effect of word frequency, lexical phonology, word class, or word transmission history. The results suggest that rather than frequency of use, it is more specifically a word’s likelihood of use in contexts favoring reduction that promotes phonological change. The failure to find a significant effect of transmission history highlights the relative importance of language internal sources of change. Results are consistent with usage-based approaches; contextual variation creates differential articulatory pressures among words, yielding variable pronunciations that, when registered in memory, promote diachronic change.


2016 ◽  
Vol 75 (1) ◽  
pp. 46-65 ◽  
Author(s):  
Andrada Tomoaia-Cotisel ◽  
Timothy W. Farrell ◽  
Leif I. Solberg ◽  
Carolyn A. Berry ◽  
Neil S. Calman ◽  
...  

Care management (CM) is a promising team-based, patient-centered approach “designed to assist patients and their support systems in managing medical conditions more effectively.” As little is known about its implementation, this article describes CM implementation and associated lessons from 12 Agency for Healthcare Research and Quality–sponsored projects. Two rounds of data collection resulted in project-specific narratives that were analyzed using an iterative approach analogous to framework analysis. Informants also participated as coauthors. Variation emerged across practices and over time regarding CM services provided, personnel delivering these services, target populations, and setting(s). Successful implementation was characterized by resource availability (both monetary and nonmonetary), identifying as well as training employees with the right technical expertise and interpersonal skills, and embedding CM within practices. Our findings facilitate future context-specific implementation of CM within medical homes. They also inform the development of medical home recognition programs that anticipate and allow for contextual variation.


2020 ◽  
Vol 12 (21) ◽  
pp. 3493
Author(s):  
Dipanwita Dutta ◽  
Gang Chen ◽  
Chen Chen ◽  
Sara A. Gagné ◽  
Changlin Li ◽  
...  

Invasive plants are a major agent threatening biodiversity conservation and directly affecting our living environment. This study aims to evaluate the potential of deep learning, one of the fastest-growing trends in machine learning, to detect plant invasion in urban parks using high-resolution (0.1 m) aerial image time series. Capitalizing on a state-of-the-art, popular architecture residual neural network (ResNet), we examined key challenges applying deep learning to detect plant invasion: relatively limited training sample size (invasion often confirmed in the field) and high forest contextual variation in space (from one invaded park to another) and over time (caused by varying stages of invasion and the difference in illumination condition). To do so, our evaluations focused on a widespread exotic plant, autumn olive (Elaeagnus umbellate), that has invaded 20 urban parks across Mecklenburg County (1410 km2) in North Carolina, USA. The results demonstrate a promising spatial and temporal generalization capacity of deep learning to detect urban invasive plants. In particular, the performance of ResNet was consistently over 96.2% using training samples from 8 (out of 20) or more parks. The model trained by samples from only four parks still achieved an accuracy of 77.4%. ResNet was further found tolerant of high contextual variation caused by autumn olive’s progressive invasion and the difference in illumination condition over the years. Our findings shed light on prioritized mitigation actions for effectively managing urban invasive plants.


Author(s):  
Lauren B. Schmidt

AbstractThe present study examines whether, and to what degree, regressive voicing assimilation of Spanish /s/ (as in


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