73,447 research outputs found
North American Species of the Genus Hydrochoreutes (Acarina: Pionidae)
Excerpt: Members of the water mite genus Hydrochoreutes have a Holarctic distribution. They are found in lakes, ponds, and sluggish streams, but usually only in small numbers and therefore long series of specimens are difficult to obtain. Two species, ungulatus (Koch) and krameri Piersig, have a widespread range in Europe and Siberia and the latter species is also known from Algeria. Marshall (1937) reported ungulatus from Maine, Michigan, Wisconsin and California. However, the present author has seen no specimens from North America which can be assigned to the latter species and the illustrations in Marshall\u27s paper are definitely not those of ungulatus. Therefore. there are no authentic records of the latter species in the New World. Cook (1956) named a new species, intermedius, from North America. Both the description and illustrations are inadequate for the latter and it is treated along with four new species in this paper
'A view from north of the border': Scotland's 'forgotten' contribution to the history of the prime-time BBC1 contemporary single TV play slot
Investigation into the combination of complementary MOS and complementary bipolar circuits on a monolithic silicon chip Final report
Combination of complementary MOS and complementary bipolar circuits on monolithic silicon chi
Principal Fitted Components for Dimension Reduction in Regression
We provide a remedy for two concerns that have dogged the use of principal
components in regression: (i) principal components are computed from the
predictors alone and do not make apparent use of the response, and (ii)
principal components are not invariant or equivariant under full rank linear
transformation of the predictors. The development begins with principal fitted
components [Cook, R. D. (2007). Fisher lecture: Dimension reduction in
regression (with discussion). Statist. Sci. 22 1--26] and uses normal models
for the inverse regression of the predictors on the response to gain reductive
information for the forward regression of interest. This approach includes
methodology for testing hypotheses about the number of components and about
conditional independencies among the predictors.Comment: Published in at http://dx.doi.org/10.1214/08-STS275 the Statistical
Science (http://www.imstat.org/sts/) by the Institute of Mathematical
Statistics (http://www.imstat.org
Matrix-Variate Regressions and Envelope Models
Modern technology often generates data with complex structures in which both
response and explanatory variables are matrix-valued. Existing methods in the
literature are able to tackle matrix-valued predictors but are rather limited
for matrix-valued responses. In this article, we study matrix-variate
regressions for such data, where the response Y on each experimental unit is a
random matrix and the predictor X can be either a scalar, a vector, or a
matrix, treated as non-stochastic in terms of the conditional distribution Y|X.
We propose models for matrix-variate regressions and then develop envelope
extensions of these models. Under the envelope framework, redundant variation
can be eliminated in estimation and the number of parameters can be notably
reduced when the matrix-variate dimension is large, possibly resulting in
significant gains in efficiency. The proposed methods are applicable to high
dimensional settings.Comment: 28 pages, 4 figure
Developing alternatives for optimal representation of seafloor habitats and associated communities in Stellwagen Bank National Marine Sanctuary
The implementation of various types of marine protected areas is one of several management tools available for conserving representative examples of the biological
diversity within marine ecosystems in general and National Marine Sanctuaries in particular. However, deciding where and how many sites to establish within a given area
is frequently hampered by incomplete knowledge of the distribution of organisms and an understanding of the potential tradeoffs that would allow planners to address frequently competing interests in an objective manner. Fortunately, this is beginning to change. Recent studies on the continental shelf of the northeastern United States suggest that substrate and water mass characteristics are highly correlated with the composition of benthic communities and may therefore, serve as proxies for the distribution of biological biodiversity. A detailed geo-referenced interpretative map of major sediment types
within Stellwagen Bank National Marine Sanctuary (SBNMS) has recently been developed, and computer-aided decision support tools have reached new levels of sophistication. We demonstrate the use of simulated annealing, a type of mathematical optimization, to identify suites of potential conservation sites within SBNMS that equally represent 1) all major sediment types and 2) derived habitat types based on both sediment and depth in the smallest amount of space. The Sanctuary was divided into 3610 0.5 min2 sampling units. Simulations incorporated constraints on the physical dispersion of sampling units to varying degrees such that solutions included between one and four site clusters. Target representation goals were set at 5, 10, 15, 20, and 25 percent of each sediment type, and 10 and 20 percent of each habitat type. Simulations consisted of 100 runs, from which we identified the best solution (i.e., smallest total area) and four nearoptimal alternates. We also plotted total instances in which each sampling unit occurred in solution sets of the 100 runs as a means of gauging the variety of spatial configurations available under each scenario. Results suggested that the total combined area needed to represent each of the sediment types in equal proportions was equal to the percent representation level sought. Slightly larger areas were required to represent all habitat types at the same representation levels. Total boundary length increased in direct proportion to the number of sites at all levels of representation for simulations involving sediment and habitat classes, but increased more rapidly with number of sites at higher
representation levels. There were a large number of alternate spatial configurations at all representation levels, although generally fewer among one and two versus three- and four-site solutions. These differences were less pronounced among simulations targeting habitat representation, suggesting that a similar degree of flexibility is inherent in the spatial arrangement of potential protected area systems containing one versus several sites for similar levels of habitat representation. We attribute these results to the distribution of sediment and depth zones within the Sanctuary, and to the fact that even levels of representation were sought in each scenario. (PDF contains 33 pages.
Determining the dimension of iterative Hessian transformation
The central mean subspace (CMS) and iterative Hessian transformation (IHT)
have been introduced recently for dimension reduction when the conditional mean
is of interest. Suppose that X is a vector-valued predictor and Y is a scalar
response. The basic problem is to find a lower-dimensional predictor \eta^TX
such that E(Y|X)=E(Y|\eta^TX). The CMS defines the inferential object for this
problem and IHT provides an estimating procedure. Compared with other methods,
IHT requires fewer assumptions and has been shown to perform well when the
additional assumptions required by those methods fail. In this paper we give an
asymptotic analysis of IHT and provide stepwise asymptotic hypothesis tests to
determine the dimension of the CMS, as estimated by IHT. Here, the original IHT
method has been modified to be invariant under location and scale
transformations. To provide empirical support for our asymptotic results, we
will present a series of simulation studies. These agree well with the theory.
The method is applied to analyze an ozone data set.Comment: Published at http://dx.doi.org/10.1214/009053604000000661 in the
Annals of Statistics (http://www.imstat.org/aos/) by the Institute of
Mathematical Statistics (http://www.imstat.org
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