Maakuntien suurimmissa kaupungeissa kirjastohankintoihin käytetään vuonna 2020 keskimäärin kuusi euroa asukasta kohden.Suomen yleisten kirjastojen pitämän tilastotietokannan perusteella hankintamäärärahat eivät ole merkittävästi vähentyneet vuoden 2015 valtionosuusuudistuksen jälkeen.
Tilaston perusteella hankintoihin on käytetty vuoden 2014 jälkeen noin 23 miljoonaa euroa vuosittain. Vuoden 2018 hankintoihin käytetty summa nousi yhteenlaskettuna 24,2 miljoonaan euroon.
On kuitenkin huomattava, että paikoin hankintamäärärahoja oli supistettu voimakkaasti jo ennen uudistusta. Vaikka hankintamäärärahat valtakunnantasolla nousivatkin vuodeksi 2018, rahaa oli silti vähemmän kuin vuonna 2010.
A list of subject guides to statistics maintained by different libraries, mostly government documents. Includes General and Specific Subjects and Specific Titles (such as CPS).
Looking for interesting data sets? Here's a list of more than 100 of the best stuff, from dolphin relationships to political campaign donations to death row prisoners.
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University of Virginia Library. This resource provides access to the 1944 through 2000 County and City Data Books. This service provides the opportunity to create custom printouts and/or customized data subsets (subsets only available for 1988-2000).
These macros compute nonparametric survival curve estimates from interval-censored data. Confidence intervals for survival curves and log-rank tests comparing survival curves from several groups are also provided.
NOTE: Beginning with SAS/STAT 13.1 in SAS 9.4 TS1M1, the functionality of these macros has been updated and added to the ICLIFETEST procedure. For details, see the ICLIFETEST documentation.
PURPOSE:
These macros compute nonparametric maximum likelihood estimates (NPMLEs) of survival curves from interval-censored data. Confidence intervals for survival curves and log-rank tests comparing survival curves from several groups are also provided.
The %ITEM macro computes descriptive statistics for analysis of data from a multiple-choice test. Each observation contains the answers from one subject to a set of questions ("items"). The data are compared to an answer key to determine which answers are correct. The score for each subject is computed as the number of correct answers. The output is very similar to that from the ITEM procedure in the SUGI Supplemental library, but several incorrect statistics have been fixed.
The %JACK and %BOOT macros do jackknife and bootstrap analyses for simple random samples, computing approximate standard errors, bias-corrected estimates, and confidence intervals assuming a normal sampling distribution.
The %JACK macro does jackknife analyses for simple random samples, computing approximate standard errors, bias-corrected estimates, and confidence intervals assuming a normal sampling distribution.
The %BOOT macro does elementary nonparametric bootstrap analyses for simple random samples, computing approximate standard errors, bias-corrected estimates, and confidence intervals assuming a normal sampling distribution. Also, for regression models, the %BOOT macro can resample either observations or residuals.
The %BOOTCI macro computes several varieties of confidence intervals that are suitable for sampling distributions that are not normal.
The %MULTNORM macro provides tests and plots of multivariate normality. A test of univariate normality is also given for each of the variables. A chi-square quantile-quantile plot of the observations' squared Mahalanobis distances can be obtained allowing a visual assessment of multivariate normality. Univariate histograms with overlaid normal curves are also available.
NOTE: Beginning in SAS 9, you can use the ODS GRAPHICS ON; statement and the PLOTS=SCATTER(ELLIPSE=MEAN) or PLOTS=SCATTER(ELLIPSE=PREDICTED) option in the PROC CORR statement to get confidence ellipse plots about the mean or individual values.
PURPOSE:
The %CONELIP macro generates confidence ellipses for bivariate normal data. It can either create ellipses for the data or ellipses about the mean.
NOTE: The MVN macro is obsolete. Beginning in SAS 9.2, use the RANDNORMAL function in SAS/IML software or PROC SIMNORMAL in SAS/STAT software to generate multivariate normal data.
PURPOSE:
The %MVN macro generates multivariate normal data using the Cholesky root of the variance-covariance matrix. Bivariate normal data can be generated using the DATA step.
NOTE: Beginning in SAS 9.4, this macro is no longer needed. Use the OUTPLC= option in Base SAS PROC CORR to save a matrix of polychoric (or tetrachoric) correlations.
PURPOSE:
The %POLYCHOR macro creates a SAS data set containing a correlation matrix of polychoric correlations or a distance matrix based on polychoric correlations.
Nonparametric comparison of areas under correlated ROC curves. Provides point and confidence interval estimates of each curve's area and of the pairwise differences among the areas. Tests of the pairwise differences are also given. Any contrast among the areas may be estimated and tested.
Produce a plot of the Receiver Operating Characteristic (ROC) curve associated with a fitted binary-response model. Label points on the ROC curve using statistic or input variable values. Identify optimal cutpoints on the ROC curve using several optimality criteria such as correct classification, efficiency, cost, and others. Plot optimality criteria against a selected variable.
The %VARTEST macro provides a one-tailed test of the null hypothesis that the variance equals a non-zero constant for normally distributed data. It also provides point- and confidence interval estimates.
NOTE: The CIBASIC option in PROC UNIVARIATE provides one- and two-sided confidence intervals for the standard deviation and variance. PROC TTEST provides a confidence interval for the standard deviation using either of two methods.
PURPOSE:
The %VARTEST macro tests the null hypothesis that the variance (or standard deviation) of a set of independent and identically normally distributed values is equal to a specified constant against an alternative that the variance (or standard deviation) exceeds the constant. The macro also provides point- and confidence interval estimates for the variance and standard deviation.
The %INTRACC macro calculates reliabilities for intraclass correlations. The macro calculates the six intraclass correlations discussed in Shrout and Fleiss (1979). Additionally it calculates two intraclass correlations using formulae from Winer (1971) which are identical to two of the six from Shrout and Fleiss. It also calculates the reliability of the mean of nrater ratings, where nrater is a parameter of the macro, using the Spearmen-Brown prophecy formula so that one can examine the effect obtaining more raters would have on the reliability of a mean.
NOTE: This macro is obsolete beginning with SAS 8.0. Use the STDIZE procedure in SAS/STAT software beginning in that release.
PURPOSE:
The %STDIZE macro standardizes one or more numeric variables in a SAS data set by subtracting a location measure and dividing by a scale measure. A variety of location and scale measures are provided, including estimates that are resistant to outliers and clustering
NOTE: Beginning in SAS 9.2, the QIC statistic is produced by PROC GENMOD. Beginning in SAS 9.4 TS1M2, QIC is available in PROC GEE.
PURPOSE:
The %QIC macro computes the QIC and QICu statistics proposed by Pan (2001) for GEE (generalized estimating equations) models. These statistics allow comparisons of GEE models (model selection) and selection of a correlation structure.
The %CumIncid macro for estimating and plotting cumulative incidence functions with competing risks is discussed.
This version of the CUMINCID macro applies only to SAS 9.1 which is available on the Downloads tab. For SAS 9.2 and later, refer to the Autocall macro library.
The CUMINCID macro computes the crude cumulative-incidence function estimates for homogeneous (no covariates) survival data whose endpoints are subjected to competing risks: see Kalbfleish and Prentice(1980). Standard errors and pointwise confidence limits are also computed. The estimated crude cumulative-incidence curve is displayed as a step function using ODS Graphics.
Overview
This sample shows one way of computing Mahalanobis distance in each of the following scenarios:
from each observation to the mean
from each observation to a specific observation
from each observation to all other observations (all possible pairs)
What we present here is a macro that will automatically check all the numeric variables in a SAS data set for a specific data value, and produce a report showing which variables contain this special value and how many times it appeared. The macro is called FIND_VALUE
Many of us are presented with SAS data sets where codes such as 9999 are intermingled with real data values. Sometimes these codes represent missing values; sometimes they represent other non-data values.
If you run SAS procedures on numeric variables in such a data set, you will, obviously, produce nonsense. What we present here is a macro that will automatically check all the numeric variables in a SAS data set for a specific data value, and produce a report showing which variables contain this special value and how many times it appeared.
The macro is called FIND_VALUE and is presented below. You can download this macro and many other useful macros from the SAS Companion Web Site: support.sas.com/publishing. Search for my book, Cody's Data Cleaning Techniques, Second Edition, and then click on the link to download the programs and data files from the book.
This sample creates four adverse event with relative risk plots. An adverse event with relative risk plot is a two-panel display of the most frequently occurring adverse events sorted by relative risk for a clinical study.
The sample requires a macro that can be downloaded from the Downloads tab. After downloading the program, the sample code on the Full Code tab can be submitted from your SAS session.
This sample combines macro programming with PROC FREQ and DATA Step logic to count the number of missing and non-missing values for every variable in a data set. The results are stored in a data set.
This sample illustrates one method of counting the number of missing and non-missing values for each variable in a data set. Two methods for structuring the resulting data set are shown.
piwik is an open source (GPL license) web analytics software. It gives interesting reports on your website visitors, your popular pages, the search engines keywords they used, the language they speak… and so much more.
J. Wermter, und U. Hahn. 44th Annual Meeting of the Association for Computational Linguistics, Seite 785--792. Sydney, Australia, Association for Computational Linguistics, (Juli 2006)