25,621 research outputs found
Causal inference via algebraic geometry: feasibility tests for functional causal structures with two binary observed variables
We provide a scheme for inferring causal relations from uncontrolled
statistical data based on tools from computational algebraic geometry, in
particular, the computation of Groebner bases. We focus on causal structures
containing just two observed variables, each of which is binary. We consider
the consequences of imposing different restrictions on the number and
cardinality of latent variables and of assuming different functional
dependences of the observed variables on the latent ones (in particular, the
noise need not be additive). We provide an inductive scheme for classifying
functional causal structures into distinct observational equivalence classes.
For each observational equivalence class, we provide a procedure for deriving
constraints on the joint distribution that are necessary and sufficient
conditions for it to arise from a model in that class. We also demonstrate how
this sort of approach provides a means of determining which causal parameters
are identifiable and how to solve for these. Prospects for expanding the scope
of our scheme, in particular to the problem of quantum causal inference, are
also discussed.Comment: Accepted for publication in Journal of Causal Inference. Revised and
updated in response to referee feedback. 16+5 pages, 26+2 figures. Comments
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An MDL approach to the climate segmentation problem
This paper proposes an information theory approach to estimate the number of
changepoints and their locations in a climatic time series. A model is
introduced that has an unknown number of changepoints and allows for series
autocorrelations, periodic dynamics, and a mean shift at each changepoint time.
An objective function gauging the number of changepoints and their locations,
based on a minimum description length (MDL) information criterion, is derived.
A genetic algorithm is then developed to optimize the objective function. The
methods are applied in the analysis of a century of monthly temperatures from
Tuscaloosa, Alabama.Comment: Published in at http://dx.doi.org/10.1214/09-AOAS289 the Annals of
Applied Statistics (http://www.imstat.org/aoas/) by the Institute of
Mathematical Statistics (http://www.imstat.org
The effects of three forms of observing a basketball game on subsequent aggression
This experimental study was designed to test whether viewing a West Coast Athletic Conference Basketball Game in person had a significantly greater effect on spectators than watching the same event on television or listening to it on the radio. The literature revealed mixed opinions concerning this type of testing
CONDITIONAL DEMAND AND ENDOGENEITY? A CASE STUDY OF DEMAND FOR JUICE PRODUCTS
The question of endogeneity of conditional expenditures, as well as prices, in conditional demand equations for justices is examined. Both conditional expenditures and prices were found to be uncorrelated with the conditional demand errors, based on Wu-Hausman tests. Conditional demand error variance/covariance estimates and corresponding Slutsky coefficient estimates were approximately proportional, as predicted by the theory of rational random behavior, further supporting independence of conditional expenditures and conditional errors for juice demands.Demand and Price Analysis,
First-principles study of the Young's modulus of Si <001> nanowires
We report the results of first-principles density functional theory
calculations of the Young's modulus and other mechanical properties of
hydrogen-passivated Si nanowires. The nanowires are taken to have
predominantly {100} surfaces, with small {110} facets. The Young's modulus, the
equilibrium length and the residual stress of a series of prismatic wires are
found to have a size dependence that scales like the surface area to volume
ratio for all but the smallest wires. We analyze the physical origin of the
size dependence, and compare the results to two existing models.Comment: 5 pages, 3 figure
Advertising and Product Confusion: A Case Study of Grapefruit Juice
Demand relationships for two closely related products -- grapefruit juice and grapefruit-juice cocktail -- were estimated from grocery-store scanner data to analyze the contention that consumer confusion exists between the two products. Results suggest confusion may exist, with grapefruit-juice advertising not only increasing the demand for grapefruit juice but also for grapefruit-juice cocktail.advertising, demand, grapefruit juice, cocktail, scanner data, Agribusiness, Consumer/Household Economics, Demand and Price Analysis,
Mixed-Integer Convex Nonlinear Optimization with Gradient-Boosted Trees Embedded
Decision trees usefully represent sparse, high dimensional and noisy data.
Having learned a function from this data, we may want to thereafter integrate
the function into a larger decision-making problem, e.g., for picking the best
chemical process catalyst. We study a large-scale, industrially-relevant
mixed-integer nonlinear nonconvex optimization problem involving both
gradient-boosted trees and penalty functions mitigating risk. This
mixed-integer optimization problem with convex penalty terms broadly applies to
optimizing pre-trained regression tree models. Decision makers may wish to
optimize discrete models to repurpose legacy predictive models, or they may
wish to optimize a discrete model that particularly well-represents a data set.
We develop several heuristic methods to find feasible solutions, and an exact,
branch-and-bound algorithm leveraging structural properties of the
gradient-boosted trees and penalty functions. We computationally test our
methods on concrete mixture design instance and a chemical catalysis industrial
instance
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Childhood and Intergenerational Poverty: The Long-Term Consequences of Growing Up Poor
Children growing up in low-income families face many challenges that children from more advantaged families do not. These children are more likely to experience multiple family transitions, move frequently, and change schools. The schools they attend are less well funded, and the neighborhoods they live in are more disadvantaged. The parents of these children have fewer resources to invest in them and, as a consequence, their homes have fewer cognitively-stimulating materials, and their parents invest less in their education. The stress of living in poverty and struggling to meet daily needs can also impair parenting. Social and economic deprivation during childhood and adolescence can have a lasting effect on individuals, making it difficult for children who grow up in low-income families to escape poverty when they become adults. Because the negative effects of deprivation on human development tend to cumulate, individuals with greater exposure to poverty during childhood are likely to have more difficulty escaping poverty as adults. In this research brief, we examine patterns of exposure to poverty during childhood and the association between these patterns and poverty in early and middle adulthood. Data for this study come from the Panel Study of Income Dynamics (PSID), which collects information on the social and economic status of PSID families and their offspring every year. We find that individuals who grow up in poor families are much more likely to be poor in early adulthood. Moreover, the chances of being poor in early adulthood increase sharply as the time spent living in poverty during childhood increases. At all levels of poverty during childhood, African-Americans are more likely than whites to be poor in early and middle adulthood
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