Sound and Ritualistic Language in Charles Williams’ War in Heaven

Aries ◽  
2021 ◽  
pp. 1-37
Author(s):  
Gwen Grant

Abstract This study uncovers a link between sound patterns and ritualistic language in Charles Williams’ novels through an analysis of the relationship between type of sound and content. The study focuses on War in Heaven with a view to conducting a preliminary exploration into this link, and establishing possibilities for future research. Like Williams’ other novels, War in Heaven is saturated with the symbolism and ritual practices he learned in The Fellowship of the Rosy Cross and, potentially, the Hermetic Order of the Golden Dawn. Williams’ experimentation with sound to convey his experience of ritual is explored through the framework of Roman Jakobson’s “Poetic Function”, to establish how Williams may have intended sound to contribute to the experience of the reader. Using a data driven approach, the study explores how sound patterns work with ritualistic content across War in Heaven, discovering a link between fricative sounds and ritualistic events.

2020 ◽  
Vol 22 (5) ◽  
pp. 942-957
Author(s):  
Lilun Du ◽  
Qing Li

Problem definition: Service providers often recruit a large number people over a short period of time, a practice known as high-volume recruitment. In this study, we describe a data-driven approach that can be used to streamline the recruitment process and aid decision making. The recruitment process consists of two stages: screening and interview. All candidates are evaluated in the screening stage, but only those with sufficiently high screening scores are short-listed for an interview. After the interview stage, offers are made based on the screening and interview scores. We define the error rate as the probability that a candidate who is rejected during either stage might have had a higher job performance than the median job performance of the candidates recruited had he or she been accepted. To ensure the error rate is no higher than a certain level, how many candidates should be short-listed, and, after the interview, how should candidates be ranked based on the two scores? Academic/practical relevance: High-volume recruitment is challenging because decisions have to be made for many people, under tight time constraints, and under uncertainty. Our approach does not require knowledge about the cost of evaluating candidates and the utility of selecting candidates; hence, it is easier to implement in practice. We apply the approach to the process of recruiting students for a postgraduate business program. Methodology: We use stochastic modeling and regression. Results: We provide a procedure for estimating the error rate as a function of the percentage of candidates short-listed for interviews. We show that the estimated error rate is asymptotically unbiased and converges to the true error rate in probability. We then run a linear regression analysis to estimate the relationship between job performance and the screening and interview scores. In a case study involving a postgraduate business program, the job performance measure we adopt is the grade point average in the program, observable only for the students enrolled in the program. We find that the interview score is statistically significant, but the screening score is not. Managerial implications: For the postgraduate program, our study demonstrates that the time-intensive interview process has substantial value. We should increase, rather than reduce, as suggested by the program administrators before our study, the weight assigned to the interview score and the time spent on the interview process. Knowing the relationship between the error rate and the percentage of candidates short-listed for interviews, the program administrators can determine the appropriate percentage for any given error rate deemed acceptable and improve the ranking of candidates. Our approach is general and can be applied to other high-volume recruiters.


2021 ◽  
Vol 12 (1) ◽  
Author(s):  
Willa I. Voorhies ◽  
Jacob A. Miller ◽  
Jewelia K. Yao ◽  
Silvia A. Bunge ◽  
Kevin S. Weiner

AbstractThe lateral prefrontal cortex (LPFC) is disproportionately expanded in humans compared to non-human primates, although the relationship between LPFC brain structures and uniquely human cognitive skills is largely unknown. Here, we test the relationship between variability in LPFC tertiary sulcal morphology and reasoning scores in a cohort of children and adolescents. Using a data-driven approach in independent discovery and replication samples, we show that the depth of specific LPFC tertiary sulci is associated with individual differences in reasoning scores beyond age. To expedite discoveries in future neuroanatomical-behavioral studies, we share tertiary sulcal definitions with the field. These findings support a classic but largely untested theory linking the protracted development of tertiary sulci to late-developing cognitive processes.


Author(s):  
Senxu Lu ◽  
Xiangyu Ding ◽  
Yuanhe Wang ◽  
Xiaoyun Hu ◽  
Tong Sun ◽  
...  

Recent accumulating researches implicate that non-coding RNAs (ncRNAs) including microRNA (miRNA), circular RNA (circRNA), and long non-coding RNA (lncRNAs) play crucial roles in colorectal cancer (CRC) initiation and development. Notably, N6-methyladenosine (m6A) methylation, the critical posttranscriptional modulators, exerts various functions in ncRNA metabolism such as stability and degradation. However, the interaction regulation network among ncRNAs and the interplay with m6A-related regulators has not been well documented, particularly in CRC. Here, we summarize the interaction networks and sub-networks of ncRNAs in CRC based on a data-driven approach from the publications (IF > 6) in the last quinquennium (2016–2021). Further, we extend the regulatory pattern between the core m6A regulators and m6A-related ncRNAs in the context of CRC metastasis and progression. Thus, our review will highlight the clinical potential of ncRNAs and m6A modifiers as promising biomarkers and therapeutic targets for improving the diagnostic precision and treatment of CRC.


2019 ◽  
Vol 33 (2) ◽  
pp. 535-553
Author(s):  
Yongli Li ◽  
Sihan Li ◽  
Chuang Wei ◽  
Jiaming Liu

Purpose Due to the unintentional or even the intentional mistakes arising from a survey, the purpose of this paper is to present a data-driven method for detecting students’ friendship network based on their daily behaviour data. Based on the detected friendship network, this paper further aims to explore how the considered network effects (i.e. friend numbers (FNs), structural holes (SHs) and friendship homophily) influence students’ GPA ranking. Design/methodology/approach The authors collected the campus smart card data of 8,917 sophomores registered in one Chinese university during one academic year, uncovered the inner relationship between the daily behaviour data with the friendship to infer the friendship network among students, and further adopted the ordered probit regression model to test the relationship between network effects with GPA rankings by controlling several influencing variables. Findings The data-driven approach of detecting friendship network is demonstrated to be useful and the empirical analysis illustrates that the relationship between GPA ranking and FN presents an inverted “U-shape”, richness in SHs positively affects GPA ranking, and making more friends within the same department will benefit promoting GPA ranking. Originality/value The proposed approach can be regarded as a new information technology for detecting friendship network from the real behaviour data, which is potential to be widely used in many scopes. Moreover, the findings from the designed empirical analysis also shed light on how to improve GPA rankings from the angle of network effect and further guide how many friends should be made in order to achieve the highest GPA level, which contributes to the existing literature.


2021 ◽  
Author(s):  
Saeid Sadeghi ◽  
Maghsoud Amiri ◽  
Farzaneh Mansoori Mooseloo

Nowadays, the increase in data acquisition and availability and complexity around optimization make it imperative to jointly use artificial intelligence (AI) and optimization for devising data-driven and intelligent decision support systems (DSS). A DSS can be successful if large amounts of interactive data proceed fast and robustly and extract useful information and knowledge to help decision-making. In this context, the data-driven approach has gained prominence due to its provision of insights for decision-making and easy implementation. The data-driven approach can discover various database patterns without relying on prior knowledge while also handling flexible objectives and multiple scenarios. This chapter reviews recent advances in data-driven optimization, highlighting the promise of data-driven optimization that integrates mathematical programming and machine learning (ML) for decision-making under uncertainty and identifies potential research opportunities. This chapter provides guidelines and implications for researchers, managers, and practitioners in operations research who want to advance their decision-making capabilities under uncertainty concerning data-driven optimization. Then, a comprehensive review and classification of the relevant publications on the data-driven stochastic program, data-driven robust optimization, and data-driven chance-constrained are presented. This chapter also identifies fertile avenues for future research that focus on deep-data-driven optimization, deep data-driven models, as well as online learning-based data-driven optimization. Perspectives on reinforcement learning (RL)-based data-driven optimization and deep RL for solving NP-hard problems are discussed. We investigate the application of data-driven optimization in different case studies to demonstrate improvements in operational performance over conventional optimization methodology. Finally, some managerial implications and some future directions are provided.


2020 ◽  
Author(s):  
Willa I. Voorhies ◽  
Jacob A. Miller ◽  
Jewelia K. Yao ◽  
Silvia A. Bunge ◽  
Kevin S. Weiner

ABSTRACTWhile the disproportionate expansion of lateral prefrontal cortex (LPFC) throughout evolution is commonly accepted, the relationship between evolutionarily new LPFC brain structures and uniquely human cognitive skills is largely unknown. Here, we tested the relationship between variability in evolutionarily new LPFC tertiary sulci and reasoning skills in a pediatric cohort. A novel data-driven approach in independent discovery and replication samples revealed that the depth of specific LPFC tertiary sulci predicts individual differences in reasoning skills beyond age. These findings support a classic, yet untested, theory linking the protracted development of tertiary sulci to late-developing cognitive processes. We conclude by proposing a mechanistic hypothesis relating the depth of LPFC tertiary sulci to anatomical connections. We suggest that deeper LPFC tertiary sulci reflect reduced short-range connections in white matter, which in turn, improve the efficiency of local neural signals underlying cognitive skills such as reasoning that are central to human cognitive development.


2021 ◽  
Vol 376 (1822) ◽  
pp. 20200424 ◽  
Author(s):  
Leor Zmigrod ◽  
Ian W. Eisenberg ◽  
Patrick G. Bissett ◽  
Trevor W. Robbins ◽  
Russell A. Poldrack

Although human existence is enveloped by ideologies, remarkably little is understood about the relationships between ideological attitudes and psychological traits. Even less is known about how cognitive dispositions—individual differences in how information is perceived and processed— sculpt individuals' ideological worldviews, proclivities for extremist beliefs and resistance (or receptivity) to evidence. Using an unprecedented number of cognitive tasks ( n = 37) and personality surveys ( n = 22), along with data-driven analyses including drift-diffusion and Bayesian modelling, we uncovered the specific psychological signatures of political, nationalistic, religious and dogmatic beliefs. Cognitive and personality assessments consistently outperformed demographic predictors in accounting for individual differences in ideological preferences by 4 to 15-fold. Furthermore, data-driven analyses revealed that individuals’ ideological attitudes mirrored their cognitive decision-making strategies. Conservatism and nationalism were related to greater caution in perceptual decision-making tasks and to reduced strategic information processing, while dogmatism was associated with slower evidence accumulation and impulsive tendencies. Religiosity was implicated in heightened agreeableness and risk perception. Extreme pro-group attitudes, including violence endorsement against outgroups, were linked to poorer working memory, slower perceptual strategies, and tendencies towards impulsivity and sensation-seeking—reflecting overlaps with the psychological profiles of conservatism and dogmatism. Cognitive and personality signatures were also generated for ideologies such as authoritarianism, system justification, social dominance orientation, patriotism and receptivity to evidence or alternative viewpoints; elucidating their underpinnings and highlighting avenues for future research. Together these findings suggest that ideological worldviews may be reflective of low-level perceptual and cognitive functions. This article is part of the theme issue ‘The political brain: neurocognitive and computational mechanisms’.


Author(s):  
Bing Xu ◽  
◽  
Qiuqin He ◽  
Jun Qian ◽  
Jiangping Dong ◽  
...  

This study uses technical indicator data to propose a new data-driven approach called nonparametric path identification to investigate the differences in the determinants, mechanism, and impact of the Sino-US stock markets. First, MA_5 is relevant to NASDAQ, whereas MA_10 is relevant to SSEC, which indicates that the trend of NASDAQ is more stable than that of SSEC. Second, different nonlinear mechanisms exist in the two stock markets, such that MA_10 and SAR have a nonlinear correlation to SSEC and NASDAQ, respectively. This finding indicates that the volatility reversion of NASDAQ is faster than SSEC. In addition, the relationship of middle Bollinger Bands (mavg) with SSEC is linear, whereas that with NASDAQ is nonlinear. Third, the most significant impact on SSEC is from CMF, whereas that on NASDAQ is from Average Directional Index (ADX). This result indicates the existence of more speculative behavior in SSEC than in NASDAQ.


2020 ◽  
Vol 32 (4) ◽  
pp. 979-1002 ◽  
Author(s):  
Martine Baars ◽  
Lisette Wijnia ◽  
Anique de Bruin ◽  
Fred Paas

Abstract Research has shown a bi-directional association between the (perceived) amount of invested effort to learn or retrieve information (e.g., time, mental effort) and metacognitive monitoring judgments. The direction of this association likely depends on how learners allocate their effort. In self-paced learning, effort allocation is usually data driven, where the ease of memorizing is used as a cue, resulting in a negative correlation between effort and monitoring judgments. Effort allocation is goal driven when it is strategically invested (e.g., based on the importance of items or time pressure) and likely results in a positive correlation. The current study used a meta-analytic approach to synthesize the results from several studies on the relationship between effort and monitoring judgments. The results showed that there was a negative association between effort and monitoring judgments (r = − .355). Furthermore, an exploration of possible moderators of this association between effort and monitoring was made. The negative association was no longer significant when goal-driven regulation was manipulated. Furthermore, it was found that the type of monitoring judgment (i.e., a weaker association for prospective judgments) and type of task (stronger association for problem-solving tasks relative to paired associates) moderated the relation between effort and monitoring. These results have important implications for future research on the use of effort as a cue for monitoring in self-regulated learning.


Crisis ◽  
2016 ◽  
Vol 37 (3) ◽  
pp. 232-235 ◽  
Author(s):  
Christopher R. DeCou ◽  
Monica C. Skewes

Abstract. Background: Previous research has demonstrated an association between alcohol-related problems and suicidal ideation (SI). Aims: The present study evaluated, simultaneously, alcohol consequences and symptoms of alcohol dependence as predictors of SI after adjusting for depressive symptoms and alcohol consumption. Method: A sample of 298 Alaskan undergraduates completed survey measures, including the Young Adult Alcohol Consequences Questionnaire, the Short Alcohol Dependence Data Questionnaire, and the Beck Depression Inventory – II. The association between alcohol problems and SI status was evaluated using sequential logistic regression. Results: Symptoms of alcohol dependence (OR = 1.88, p < .05), but not alcohol-related consequences (OR = 1.01, p = .95), emerged as an independent predictor of SI status above and beyond depressive symptoms (OR = 2.39, p < .001) and alcohol consumption (OR = 1.08, p = .39). Conclusion: Alcohol dependence symptoms represented a unique risk for SI relative to alcohol-related consequences and alcohol consumption. Future research should examine the causal mechanism behind the relationship between alcohol dependence and suicidality among university students. Assessing the presence of dependence symptoms may improve the accuracy of identifying students at risk of SI.


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