Échantillonnage stratifiévignette|Vous prenez un échantillon aléatoire stratifié en divisant d'abord la population en groupes homogènes (semblables en eux-mêmes) (strates) qui sont distincts les uns des autres, c'est-à-dire. Le groupe 1 est différent du groupe 2. Ensuite, choisissez un EAS (échantillon aléatoire simple) distinct dans chaque strate et combinez ces EAS pour former l'échantillon complet. L'échantillonnage aléatoire stratifié est utilisé pour produire des échantillons non biaisés.
Mathematical formulation of the Standard ModelThis article describes the mathematics of the Standard Model of particle physics, a gauge quantum field theory containing the internal symmetries of the unitary product group SU(3) × SU(2) × U(1). The theory is commonly viewed as describing the fundamental set of particles – the leptons, quarks, gauge bosons and the Higgs boson. The Standard Model is renormalizable and mathematically self-consistent, however despite having huge and continued successes in providing experimental predictions it does leave some unexplained phenomena.
Muon g-2Muon g − 2 (pronounced "gee minus two") is a particle physics experiment at Fermilab to measure the anomalous magnetic dipole moment of a muon to a precision of 0.14 ppm, which is a sensitive test of the Standard Model. It might also provide evidence of the existence of new particles. The muon, like its lighter sibling the electron, acts like a tiny magnet. The parameter known as the "g factor" indicates how strong the magnet is and the rate of its gyration in an externally applied magnetic field.
Simple random sampleIn statistics, a simple random sample (or SRS) is a subset of individuals (a sample) chosen from a larger set (a population) in which a subset of individuals are chosen randomly, all with the same probability. It is a process of selecting a sample in a random way. In SRS, each subset of k individuals has the same probability of being chosen for the sample as any other subset of k individuals. A simple random sample is an unbiased sampling technique. Simple random sampling is a basic type of sampling and can be a component of other more complex sampling methods.
Convenience samplingConvenience sampling (also known as grab sampling, accidental sampling, or opportunity sampling) is a type of non-probability sampling that involves the sample being drawn from that part of the population that is close to hand. This type of sampling is most useful for pilot testing. Convenience sampling is not often recommended for research due to the possibility of sampling error and lack of representation of the population. But it can be handy depending on the situation. In some situations, convenience sampling is the only possible option.
Sample mean and covarianceThe sample mean (sample average) or empirical mean (empirical average), and the sample covariance or empirical covariance are statistics computed from a sample of data on one or more random variables. The sample mean is the average value (or mean value) of a sample of numbers taken from a larger population of numbers, where "population" indicates not number of people but the entirety of relevant data, whether collected or not. A sample of 40 companies' sales from the Fortune 500 might be used for convenience instead of looking at the population, all 500 companies' sales.
Nombre de sujets nécessairesEn statistique, la détermination du nombre de sujets nécessaires est l'acte de choisir le nombre d'observations ou de répétitions à inclure dans un échantillon statistique. Ce choix est très important pour pouvoir faire de l'inférence sur une population. En pratique, la taille de l'échantillon utilisé dans une étude est déterminée en fonction du coût de la collecte des données et de la nécessité d'avoir une puissance statistique suffisante.
Règle 68-95-99,7vignette|Illustration de la règle 68-95-99.7 (à partir d'une expérience réelle, ce qui explique l'asymétrie par rapport à la loi normale). En statistique, la règle 68-95-99,7 (ou règle des trois sigmas ou règle empirique) indique que pour une loi normale, presque toutes les valeurs se situent dans un intervalle centré autour de la moyenne et dont les bornes se situent à trois écarts-types de part et d'autre de celle-ci. Environ 68,27 % des valeurs se situent à moins d'un écart-type de la moyenne.
Uncertainty quantificationUncertainty quantification (UQ) is the science of quantitative characterization and estimation of uncertainties in both computational and real world applications. It tries to determine how likely certain outcomes are if some aspects of the system are not exactly known. An example would be to predict the acceleration of a human body in a head-on crash with another car: even if the speed was exactly known, small differences in the manufacturing of individual cars, how tightly every bolt has been tightened, etc.
Noncentral t-distributionThe noncentral t-distribution generalizes Student's t-distribution using a noncentrality parameter. Whereas the central probability distribution describes how a test statistic t is distributed when the difference tested is null, the noncentral distribution describes how t is distributed when the null is false. This leads to its use in statistics, especially calculating statistical power. The noncentral t-distribution is also known as the singly noncentral t-distribution, and in addition to its primary use in statistical inference, is also used in robust modeling for data.