Using portfolio theory in spatial targeting of forest carbon payments: an effective strategy to address spatiotemporal variation in land-use opportunity costs?

2020 ◽  
Vol 50 (2) ◽  
pp. 170-184
Author(s):  
Bijay P. Sharma ◽  
Seong-Hoon Cho

The objective of our research is to extend current conservation applications of modern portfolio theory (MPT) to develop a framework for the cost-efficient budget distribution for a forest carbon payment program that optimizes risk–reward trade-offs in the presence of economic growth uncertainty over time. We consider correlation across space and time of the fluctuating opportunity costs of restoring forestland under changing future economic conditions using a case study of eight states in the central and southern Appalachian region of the United States. The findings suggest that optimal budget allocation decisions that ignore the covariance component of the spatial variance–covariance structure of forest carbon returns fail to minimize the true risk of conservation investment for any level of expected return. The importance of incorporating the spatial covariance in targeting conservation payments is made explicit through alternative approaches using multi-objective (mean–variance) optimization and an ex post analysis with and without the covariance component of the spatial variance–covariance structure of forest carbon return on investment (ROI). A comparison of these approaches against our MPT-based approach revealed misleading risk–return expectations if the ROI covariance is ignored in the spatial targeting of forest carbon payments under uncertainty.

2020 ◽  
Vol 22 (Supplement_3) ◽  
pp. iii466-iii466
Author(s):  
Karina Black ◽  
Jackie Middleton ◽  
Sunita Ghosh ◽  
David Eisenstat ◽  
Samor Patel

Abstract BACKGROUND Proton therapy for benign and malignant tumors has dosimetric and clinical advantages over photon therapy. Patients in Alberta, Canada are referred to the United States for proton treatment. The Alberta Heath Care Insurance Plan (AHCIP) pays for the proton treatment and the cost of flights to and from the United States (direct costs). This study aimed to determine the out-of-pocket expenses incurred by patients or their families (indirect costs). METHODS Invitation letters linked to an electronic survey were mailed to patients treated with protons between 2008 and 2018. Expenses for flights for other family members, accommodations, transportation, food, passports, insurance, and opportunity costs including lost wages and productivity were measured. RESULTS Fifty-nine invitation letters were mailed. Seventeen surveys were completed (28.8% response rate). One paper survey was mailed at participant request. Nine respondents were from parent/guardian, 8 from patients. All patients were accompanied to the US by a family member/friend. Considerable variability in costs and reimbursements were reported. Many of the accompanying family/friends had to miss work; only 3 patients themselves reported missed work. Time away from work varied, and varied as to whether it was paid or unpaid time off. CONCLUSIONS Respondents incurred indirect monetary and opportunity costs which were not covered by AHCIP when traveling out of country for proton therapy. Prospective studies could help provide current data minimizing recall bias. These data may be helpful for administrators in assessing the societal cost of out-of-country referral of patients for proton therapy.


2021 ◽  
Author(s):  
Rajshree Agarwal ◽  
Martin Ganco ◽  
Joseph Raffiee

We examine how institutional factors may affect microlevel career decisions by individuals to create new firms by impacting their ability to exercise entrepreneurial preferences, their accumulation of human capital, and the opportunity costs associated with new venture formation. We focus on an important institutional factor—immigration-related work constraints—given that technologically intensive firms in the United States not only draw upon immigrants as knowledge workers but also because such firms are disproportionately founded by immigrants. We examine the implications of these constraints using the National Science Foundation’s Scientists and Engineers Statistical Data System, which tracks the careers of science and engineering graduates from U.S. universities. Relative to natives, we theorize and show that immigration-related work constraints in the United States suppress entrepreneurship as an early career choice of immigrants by restricting labor market options to paid employment jobs in organizational contexts tightly matched with the immigrant’s educational training (job-education match). Work experience in paid employment job-education match is associated with the accumulation of specialized human capital and increased opportunity costs associated with new venture formation. Consistent with immigration-related work constraints inhibiting individuals with entrepreneurial preferences from engaging in entrepreneurship, we show that when the immigration-related work constraints are released, immigrants in job-education match are more likely than comparable natives to found incorporated employer firms. Incorporated employer firms can both leverage specialized human capital and provide the expected returns needed to justify the increased opportunity costs associated with entrepreneurial entry. We discuss our study’s contributions to theory and practice.


2018 ◽  
Author(s):  
Mathew Hauer

Small area and subnational population projections are important for understanding long-term demographic changes. I provide county-level population projections by age, sex, and race in five-year intervals for the period 2015-2100 for all U.S. counties. Using historic U.S. census data in temporally rectified county boundaries and race groups for the period 1990-2015, I calculate cohort-change ratios (CCRs) and cohort-change differences (CCDs) for eighteen five-year age groups (0-85+), two sex groups (Male and Female), and four race groups (White NH, Black NH, Other NH, Hispanic) for all U.S counties. I then project these CCRs/CCDs using ARIMA models as inputs into Leslie matrix population projection models and control the projections to the Shared Socioeconomic Pathways. I validate the methods using ex-post facto evaluations using data from 1969-2000 to project 2000-2015. My results are reasonably accurate for this period. These data have numerous potential uses and can serve as inputs for addressing questions involving sub-national demographic change in the United States.


Author(s):  
Alejandro Henao ◽  
Wesley E. Marshall

Millions of people in the United States travel by personal automobile to attend professional sports matches played at various stadiums. Engineering and planning publications lack information on parking provisions for major sporting events. The results from this paper on parking outcomes suggest that the current parking provisions are not efficient. This case study examines parking supply, parking utilization, event auto occupancy, and event auto modal share at four major professional sports venues in the Denver, Colorado, region. The percentage of parking supply per parking demand was calculated for several surveyed games in terms of the average attendance, and parking utilization was evaluated during nonevent periods. In general, the surveys of the games indicated that more parking was provided than was necessary, even when attendance was higher than typical. For an event with average attendance, parking utilization was as low as 65%, with 2.2 persons per vehicle. In contrast, when parking occupancy was high, auto occupancy increased to 3.0 persons per vehicle. With such different carpool rates, as well as evidence suggesting that spectators who travel to some facilities are willing to park and walk farther than a half-mile, the results suggest that parking supply and travel behavior are endogenous and should not be treated independently. This study also considered parking occupancy at nonevent times and found whole-scale underutilization, even in downtown locations with great opportunity costs.


2021 ◽  
pp. 089124242110461
Author(s):  
Charles Swenson

Tourist taxes are an important source of revenue for many governments. In the United States, all states impose them in the form of hotel/motel occupancy taxes, yet there is little ex post evidence as to whether such taxes affect occupancy rates. This study uses a precise establishment-level data source to examine California's varying rates by city, enabling powerful tests. The author finds that such taxes have negligible impacts on hotel sales and employment. On the other hand, hotels/motels operating in higher tax-rate cities tended to have more financial stress in terms of lower Dun and Bradstreet credit ratings.


2009 ◽  
Vol 99 (4) ◽  
pp. 1451-1483 ◽  
Author(s):  
Ľuboš Pástor ◽  
Pietro Veronesi

We develop a general equilibrium model in which stock prices of innovative firms exhibit “bubbles” during technological revolutions. In the model, the average productivity of a new technology is uncertain and subject to learning. During technological revolutions, the nature of this uncertainty changes from idiosyncratic to systematic. The resulting bubbles in stock prices are observable ex post but unpredictable ex ante, and they are most pronounced for technologies characterized by high uncertainty and fast adoption. We find empirical support for the model's predictions in 1830–1861 and 1992–2005 when the railroad and Internet technologies spread in the United States. (JEL G12, L86, L92, N21, N22, N71, N72)


Assessment ◽  
2018 ◽  
Vol 27 (3) ◽  
pp. 508-517 ◽  
Author(s):  
Mark A. Whisman ◽  
Regina Miranda ◽  
David M. Fresco ◽  
Richard G. Heimberg ◽  
Elizabeth L. Jeglic ◽  
...  

Although women demonstrate higher levels of rumination than men, it is unknown whether instruments used to measure rumination have the same psychometric properties for women and men. To examine this question, we evaluated measurement invariance of the brooding and reflection subscales from the Ruminative Responses Scale (RRS) by gender, using data from four samples of undergraduates from three universities within the United States ( N = 4,205). A multigroup confirmatory factor analysis revealed evidence for configural, metric, and scalar invariance of the covariance structure of the 10-item version of the RRS. There were statistically significant latent mean differences between women and men, with women scoring significantly higher than men on both brooding and reflection. These findings suggest that the 10-item version of the RRS provides an assessment of rumination that is psychometrically equivalent across gender. Consequently, gender differences in brooding and reflection likely reflect valid differences between women and men.


2018 ◽  
Vol 49 (1) ◽  
pp. 109-121 ◽  
Author(s):  
Stephan Rabie ◽  
Anthony V Naidoo

South African career counselling practices have predominantly been informed by vocational theories and models developed in the United States and Europe. In view of South Africa’s peculiar history and its unique cultural and linguistic environment, the indiscriminate application of Western career models has become increasingly contentious, as the majority of these models fail to account for culture-specific values that influence an individual’s career interests, decision-making, and development. The South African Career Interest Inventory was developed to address this contention, through operationalising John Holland’s vocational personality theory in South Africa. This study adapted and translated the South African Career Interest Inventory into isiXhosa, in the process constructing the first career interest inventory in a South African indigenous language. Subsequently, we investigated the structural validity of the South African Career Interest Inventory, and therefore Holland’s model, on a sample of isiXhosa-speaking secondary school learners ( n = 266). The randomisation test of hypothesised order relations, multidimensional scaling, and covariance structure modelling were employed to examine the structural validity of the inventory. The results demonstrated the South African Career Interest Inventory–isiXhosa version to be a reliable and valid measure of vocational interest on an early isiXhosa adolescent sample, suggesting the tenability of Holland’s model in the South African context. Implications for research and practice are discussed.


2010 ◽  
Vol 23 (10) ◽  
pp. 2759-2781 ◽  
Author(s):  
Martin P. Tingley ◽  
Peter Huybers

Abstract Reconstructing the spatial pattern of a climate field through time from a dataset of overlapping instrumental and climate proxy time series is a nontrivial statistical problem. The need to transform the proxy observations into estimates of the climate field, and the fact that the observed time series are not uniformly distributed in space, further complicate the analysis. Current leading approaches to this problem are based on estimating the full covariance matrix between the proxy time series and instrumental time series over a “calibration” interval and then using this covariance matrix in the context of a linear regression to predict the missing instrumental values from the proxy observations for years prior to instrumental coverage. A fundamentally different approach to this problem is formulated by specifying parametric forms for the spatial covariance and temporal evolution of the climate field, as well as “observation equations” describing the relationship between the data types and the corresponding true values of the climate field. A hierarchical Bayesian model is used to assimilate both proxy and instrumental datasets and to estimate the probability distribution of all model parameters and the climate field through time on a regular spatial grid. The output from this approach includes an estimate of the full covariance structure of the climate field and model parameters as well as diagnostics that estimate the utility of the different proxy time series. This methodology is demonstrated using an instrumental surface temperature dataset after corrupting a number of the time series to mimic proxy observations. The results are compared to those achieved using the regularized expectation–maximization algorithm, and in these experiments the Bayesian algorithm produces reconstructions with greater skill. The assumptions underlying these two methodologies and the results of applying each to simple surrogate datasets are explored in greater detail in Part II.


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