scholarly journals Computational timeline reconstruction of the stories surrounding Trump: Story turbulence, narrative control, and collective chronopathy

PLoS ONE ◽  
2021 ◽  
Vol 16 (12) ◽  
pp. e0260592
Author(s):  
Peter Sheridan Dodds ◽  
Joshua R. Minot ◽  
Michael V. Arnold ◽  
Thayer Alshaabi ◽  
Jane Lydia Adams ◽  
...  

Measuring the specific kind, temporal ordering, diversity, and turnover rate of stories surrounding any given subject is essential to developing a complete reckoning of that subject’s historical impact. Here, we use Twitter as a distributed news and opinion aggregation source to identify and track the dynamics of the dominant day-scale stories around Donald Trump, the 45th President of the United States. Working with a data set comprising around 20 billion 1-grams, we first compare each day’s 1-gram and 2-gram usage frequencies to those of a year before, to create day- and week-scale timelines for Trump stories for 2016–2021. We measure Trump’s narrative control, the extent to which stories have been about Trump or put forward by Trump. We then quantify story turbulence and collective chronopathy—the rate at which a population’s stories for a subject seem to change over time. We show that 2017 was the most turbulent overall year for Trump. In 2020, story generation slowed dramatically during the first two major waves of the COVID-19 pandemic, with rapid turnover returning first with the Black Lives Matter protests following George Floyd’s murder and then later by events leading up to and following the 2020 US presidential election, including the storming of the US Capitol six days into 2021. Trump story turnover for 2 months during the COVID-19 pandemic was on par with that of 3 days in September 2017. Our methods may be applied to any well-discussed phenomenon, and have potential to enable the computational aspects of journalism, history, and biography.

Author(s):  
Serhy Yekelchyk

Conventional wisdom dictates that Ukraine’s political crises can be traced to the linguistic differences and divided political loyalties that have long fractured the country. However, this theory obscures the true significance of Ukraine’s recent civic revolution and the conflict’s crucial international dimension. The 2013-14 Ukrainian revolution presented authoritarian powers in Russia with both a democratic and a geopolitical challenge. In reality, political conflict in Ukraine is reflective of global discord, stemming from differing views on state power, civil society, and democracy. Ukraine’s sudden prominence in American politics has compounded an already-widespread misunderstanding of what is actually happening in the nation. In the American media, Ukraine has come to signify an inherently corrupt place, rather than a real country struggling in the face of great challenges. Ukraine: What Everyone Needs to Know® is an updated edition of Serhy Yekelchyk’s 2015 publication, The Conflict in Ukraine. It addresses Ukraine’s relations with the West, particularly the United States, from the perspective of Ukrainians. The book explains how independent Ukraine fell victim to crony capitalism, how its people rebelled twice in the last two decades in the name of democracy and against corruption, and why Russia reacted so aggressively to the strivings of Ukrainians. Additionally, it looks at what we know about alleged Ukrainian interference in the 2016 US presidential election, the factors behind the stunning electoral victory of the political novice Volodymyr Zelensky, and the ways in which the events leading to the impeachment proceedings against President Donald Trump have changed the Russia-Ukraine-US relationship. This volume is essential reading for anyone who wants to understand the forces that have shaped contemporary politics in this increasingly important part of Europe, as well as the international background of the impeachment proceedings in the US


Subject Bond markets outlook. Significance Eurostat today reported that the euro-area economy grew by 0.6% quarter-on-quarter in October-December 2017, and by 2.6% in the whole of 2017, outpacing growth of 2.3% in the United States and 1.8% in the United Kingdom. The yield on benchmark 10-year US Treasury bonds has surpassed the level it reached after Donald Trump’s US presidential election victory when investors positioned themselves for higher growth and prices. The tax bill and modestly rising prices have reinvigorated the ‘trumpflation trade’ of investors shifting from bonds to equities. Signs that the ECB may start withdrawing monetary stimulus faster than expected, coupled with robust global GDP growth, are putting further upward pressure on global yields. Impacts The US treasury secretary’s Davos remarks that a weaker dollar helps US activity could fuel further euro strength, challenging ECB policy. This month’s IMF update upgraded its global growth forecasts but warned of risks, especially asset bubbles and financial vulnerabilities. Global equity fund inflows are surging, fuelling dangerous overvaluations in certain sectors including technology.


2021 ◽  
Vol 8 (Supplement_1) ◽  
pp. S359-S360
Author(s):  
Kelly Zalocusky ◽  
Shemra Rizzo ◽  
Devika Chawla ◽  
Yifeng Chia ◽  
Tripthi Kamath ◽  
...  

Abstract Background COVID-19 remains a threat to public health, with over 30 million cases in the US alone. As understanding of optimal patient care has improved, treatment guidelines have continued to evolve. This study characterized real-world trends in treatment for US patients hospitalized with COVID-19, stratified by whether patients required invasive ventilation. Methods US patients diagnosed and hospitalized with COVID-19 between March 23 and December 31, 2020, in the Optum de-identified COVID-19 electronic health record (EHR) data set were identified. Both drug and procedure codes were used to ascertain medications, and both procedure and diagnostic codes were used to detect invasive ventilation during hospitalization. Medication trends were estimated by computing proportions of hospitalized patients receiving each drug weekly during the study period. Results In this cohort of 71,366 hospitalized patients, the largest observed change in care was related to chloroquine/hydroxychloroquine (HCQ) (Figure). HCQ usage peaked at 87% of patients receiving invasive ventilation (54% without ventilation) in the first week of this study (March 23-29), but declined to < 5% of patients, regardless of ventilation status, by the end of May. In contrast, dexamethasone usage was 10% at baseline in patients receiving ventilation (1% without ventilation) and increased to a steady state of >85% of patients receiving ventilation ( >50% without ventilation) by the end of June. Similarly, remdesivir usage increased sharply from a baseline of 2% of patients and continued to rise to a peak of 79% of patients receiving invasive ventilation (44% without ventilation) in November before declining. Conclusion Meaningful shifts in treatments for US patients hospitalized with COVID-19 were observed from March through December 2020. A dramatic decline was observed for HCQ use, likely owing to safety concerns, while usage of dexamethasone and remdesivir increased as evidence of their efficacy mounted. Across medications, usage was substantially more prevalent among patients requiring invasive ventilation compared with patients with less severe cases. Disclosures Kelly Zalocusky, PhD, F. Hoffmann-La Roche Ltd. (Shareholder)Genentech, Inc. (Employee) Shemra Rizzo, PhD, F. Hoffmann-La Roche Ltd. (Shareholder)Genentech, Inc. (Employee) Devika Chawla, PhD MSPH, F. Hoffmann-La Roche Ltd. (Shareholder)Genentech, Inc. (Employee) Yifeng Chia, PhD, F. Hoffmann-La Roche Ltd (Shareholder)Genentech, Inc. (Employee) Tripthi Kamath, PhD, F. Hoffmann-La Roche Ltd (Shareholder)Genentech, Inc. (Employee) Larry Tsai, MD, F. Hoffmann-La Roche Ltd (Shareholder)Genentech, Inc. (Employee)


ILR Review ◽  
2019 ◽  
Vol 72 (5) ◽  
pp. 1262-1277 ◽  
Author(s):  
Robert W. Fairlie ◽  
Javier Miranda ◽  
Nikolas Zolas

The field of entrepreneurship is growing rapidly and expanding into new areas. This article presents a new compilation of administrative panel data on the universe of business start-ups in the United States, which will be useful for future research in entrepreneurship. To create the US start-up panel data set, the authors link the universe of non-employer firms to the universe of employer firms in the Longitudinal Business Database (LBD). Start-up cohorts of more than five million new businesses per year, which create roughly three million jobs, can be tracked over time. To illustrate the potential of the new start-up panel data set for future research, the authors provide descriptive statistics for a few examples of research topics using a representative start-up cohort.


2020 ◽  
Author(s):  
Piyush Mathur ◽  
Tavpritesh Sethi ◽  
Anya Mathur ◽  
Kamal Maheshwari ◽  
Jacek Cywinski ◽  
...  

UNSTRUCTURED Introduction The COVID-19 pandemic exhibits an uneven geographic spread which leads to a locational mismatch of testing, mitigation measures and allocation of healthcare resources (human, equipment, and infrastructure).(1) In the absence of effective treatment, understanding and predicting the spread of COVID-19 is unquestionably valuable for public health and hospital authorities to plan for and manage the pandemic. While there have been many models developed to predict mortality, the authors sought to develop a machine learning prediction model that provides an estimate of the relative association of socioeconomic, demographic, travel, and health care characteristics of COVID-19 disease mortality among states in the United States(US). Methods State-wise data was collected for all the features predicting COVID-19 mortality and for deriving feature importance (eTable 1 in the Supplement).(2) Key feature categories include demographic characteristics of the population, pre-existing healthcare utilization, travel, weather, socioeconomic variables, racial distribution and timing of disease mitigation measures (Figure 1 & 2). Two machine learning models, Catboost regression and random forest were trained independently to predict mortality in states on data partitioned into a training (80%) and test (20%) set.(3) Accuracy of models was assessed by R2 score. Importance of the features for prediction of mortality was calculated via two machine learning algorithms - SHAP (SHapley Additive exPlanations) calculated upon CatBoost model and Boruta, a random forest based method trained with 10,000 trees for calculating statistical significance (3-5). Results Results are based on 60,604 total deaths in the US, as of April 30, 2020. Actual number of deaths ranged widely from 7 (Wyoming) to 18,909 (New York).CatBoost regression model obtained an R2 score of 0.99 on the training data set and 0.50 on the test set. Random Forest model obtained an R2 score of 0.88 on the training data set and 0.39 on the test set. Nine out of twenty variables were significantly higher than the maximum variable importance achieved by the shadow dataset in Boruta regression (Figure 2).Both models showed the high feature importance for pre-existing high healthcare utilization reflective in nursing home beds per capita and doctors per 100,000 population. Overall population characteristics such as total population and population density also correlated positively with the number of deaths.Notably, both models revealed a high positive correlation of deaths with percentage of African Americans. Direct flights from China, especially Wuhan were also significant in both models as predictors of death, therefore reflecting early spread of the disease. Associations between deaths and weather patterns, hospital bed capacity, median age, timing of administrative action to mitigate disease spread such as the closure of educational institutions or stay at home order were not significant. The lack of some associations, e.g., administrative action may reflect delayed outcomes of interventions which were not yet reflected in data. Discussion COVID-19 disease has varied spread and mortality across communities amongst different states in the US. While our models show that high population density, pre-existing need for medical care and foreign travel may increase transmission and thus COVID-19 mortality, the effect of geographic, climate and racial disparities on COVID-19 related mortality is not clear. The purpose of our study was not state-wise accurate prediction of deaths in the US, which has already been challenging.(6) Location based understanding of key determinants of COVID-19 mortality, is critically needed for focused targeting of mitigation and control measures. Risk assessment-based understanding of determinants affecting COVID-19 outcomes, using a dynamic and scalable machine learning model such as the two proposed, can help guide resource management and policy framework.


2020 ◽  
Vol 7 (1) ◽  
pp. 163-180
Author(s):  
Saagar S Kulkarni ◽  
Kathryn E Lorenz

This paper examines two CDC data sets in order to provide a comprehensive overview and social implications of COVID-19 related deaths within the United States over the first eight months of 2020. By analyzing the first data set during this eight-month period with the variables of age, race, and individual states in the United States, we found correlations between COVID-19 deaths and these three variables. Overall, our multivariable regression model was found to be statistically significant.  When analyzing the second CDC data set, we used the same variables with one exception; gender was used in place of race. From this analysis, it was found that trends in age and individual states were significant. However, since gender was not found to be significant in predicting deaths, we concluded that, gender does not play a significant role in the prognosis of COVID-19 induced deaths. However, the age of an individual and his/her state of residence potentially play a significant role in determining life or death. Socio-economic analysis of the US population confirms Qualitative socio-economic Logic based Cascade Hypotheses (QLCH) of education, occupation, and income affecting race/ethnicity differently. For a given race/ethnicity, education drives occupation then income, where a person lives, and in turn his/her access to healthcare coverage. Considering socio-economic data based QLCH framework, we conclude that different races are poised for differing effects of COVID-19 and that Asians and Whites are in a stronger position to combat COVID-19 than Hispanics and Blacks.


2020 ◽  
Vol 117 (16) ◽  
pp. 8836-8844 ◽  
Author(s):  
Asad L. Asad

Deportation has become more commonplace in the United States since the mid-2000s. Latin American noncitizens—encompassing undocumented and documented immigrants—are targeted for deportation. Deportation’s threat also reaches naturalized and US-born citizens of Latino descent who are largely immune to deportation but whose loved ones or communities are deportable. Drawing on 6 y of data from the National Survey of Latinos, this article examines whether and how Latinos’ deportation fears vary by citizenship and legal status and over time. Compared with Latino noncitizens, Latino US citizens report lower average deportation fears. However, a more complex story emerges when examining this divide over time: Deportation fears are high but stable among Latino noncitizens, whereas deportation fears have increased substantially among Latino US citizens. These trends reflect a growing national awareness of—rather than observable changes to—deportation policy and practice since the 2016 US presidential election. The article highlights how deportation or its consequences affects a racial group that the US immigration regime targets disproportionately.


2006 ◽  
Vol 195 ◽  
pp. 118-132 ◽  
Author(s):  
Cynthia Miller

Using a unique data set from the US to examine the association between employment stability and childcare stability, we find that childcare use is fairly stable for current and former welfare recipients. In addition, although childcare instability contributes to employment instability, it does not appear to be the major reason women leave their jobs. In this case, employment retention programmes in the US, while not losing focus on childcare issues, should also address other barriers to keeping jobs, such as limited education and lack of work experience.


2020 ◽  
Author(s):  
Asad L. Asad

Deportation has become more commonplace in the United States since the mid-2000s. Latin American noncitizens—encompassing undocumented and documented immigrants—are targeted for deportation. Deportation’s threat also reaches naturalized and US-born citizens of Latino descent who are largely immune to deportation but whose loved ones or communities are deportable. Drawing on 6 y of data from the National Survey of Latinos, this article examines whether and how Latinos’ deportation fears vary by citizenship and legal status and over time. Compared with Latino noncitizens, Latino US citizens report lower average deportation fears. However, a more complex story emerges when examining this divide over time: Deportation fears are high but stable among Latino noncitizens, whereas deportation fears have increased substantially among Latino US citizens. These trends reflect a growing national awareness of—rather than observable changes to—deportation policy and practice since the 2016 US presidential election. The article highlights how deportation or its consequences affects a racial group that the US immigration regime targets disproportionately.


2020 ◽  
Author(s):  
Jorn op den Buijs ◽  
Marten Pijl ◽  
Andreas Landgraf

BACKGROUND Predictive analytics based on data from remote monitoring of elderly via a personal emergency response system (PERS) in the United States can identify subscribers at high risk for emergency hospital transport. These risk predictions can subsequently be used to proactively target interventions and prevent avoidable, costly health care use. It is, however, unknown if PERS-based risk prediction with targeted interventions could also be applied in the German health care setting. OBJECTIVE The objectives were to develop and validate a predictive model of 30-day emergency hospital transport based on data from a German PERS provider and compare the model with our previously published predictive model developed on data from a US PERS provider. METHODS Retrospective data of 5805 subscribers to a German PERS service were used to develop and validate an extreme gradient boosting predictive model of 30-day hospital transport, including predictors derived from subscriber demographics, self-reported medical conditions, and a 2-year history of case data. Models were trained on 80% (4644/5805) of the data, and performance was evaluated on an independent test set of 20% (1161/5805). Results were compared with our previously published prediction model developed on a data set of PERS users in the United States. RESULTS German PERS subscribers were on average aged 83.6 years, with 64.0% (743/1161) females, with 65.4% (759/1161) reported 3 or more chronic conditions. A total of 1.4% (350/24,847) of subscribers had one or more emergency transports in 30 days in the test set, which was significantly lower compared with the US data set (2455/109,966, 2.2%). Performance of the predictive model of emergency hospital transport, as evaluated by area under the receiver operator characteristic curve (AUC), was 0.749 (95% CI 0.721-0.777), which was similar to the US prediction model (AUC=0.778 [95% CI 0.769-0.788]). The top 1% (12/1161) of predicted high-risk patients were 10.7 times more likely to experience an emergency hospital transport in 30 days than the overall German PERS population. This lift was comparable to a model lift of 11.9 obtained by the US predictive model. CONCLUSIONS Despite differences in emergency care use, PERS-based collected subscriber data can be used to predict use outcomes in different international settings. These predictive analytic tools can be used by health care organizations to extend population health management into the home by identifying and delivering timelier targeted interventions to high-risk patients. This could lead to overall improved patient experience, higher quality of care, and more efficient resource use.


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