dynamic sequential model - определение. Что такое dynamic sequential model
Diclib.com
Словарь ChatGPT
Введите слово или словосочетание на любом языке 👆
Язык:

Перевод и анализ слов искусственным интеллектом ChatGPT

На этой странице Вы можете получить подробный анализ слова или словосочетания, произведенный с помощью лучшей на сегодняшний день технологии искусственного интеллекта:

  • как употребляется слово
  • частота употребления
  • используется оно чаще в устной или письменной речи
  • варианты перевода слова
  • примеры употребления (несколько фраз с переводом)
  • этимология

Что (кто) такое dynamic sequential model - определение

STATISTICAL METHOD
Dynamic panel model; Panel regression; Panel model

Sequential art         
  • [[Eadweard Muybridge]] was interested in what closely-spaced sequential photography could show about motion; his works blur the line between science and art, although they are not proper comics.
CATEGORY OF ART THAT PRESENTS A SEQUENCE; COMICS ARE A PROMINENT EXAMPLE
Sequential Art; Graphic narrative; Graphic literature; Pictorial narrative; Sequential storytelling; Sequential narrative; Narrative illustration; Sequential pictorial narrative; Sequential sculpture; Letteratura disegnata; Graphic storytelling; Sequential literature
In comics studies, sequential art is a term proposed by comics artist Will EisnerWill Eisner, Comics and Sequential Art, Poorhouse Press, 1990 (1st ed.: 1985), p.
Aerospool WT9 Dynamic         
  • Aerospool WT9 Dynamic with fixed landing gear
  • Aerospool WT9 Dynamic with retractable gear
  • Aerospool WT9 Dynamic in flight
LIGHT SPORT AIRCRAFT BY AEROSPOOL IN SLOVAKIA
Aerospool WT 9 Dynamic; Aerospool WT-9 Dynamic; Aerospool Dynamic
The Aerospool WT9 Dynamic is a Slovak ultralight and light-sport aircraft, designed and produced by Aerospool of Prievidza. The aircraft is supplied as a complete ready-to-fly-aircraft.
Dynamic global vegetation model         
COMPUTER MODEL THAT SIMULATES SHIFTS IN POTENTIAL VEGETATION AND ITS ASSOCIATED BIOGEOCHEMICAL AND HYDROLOGICAL CYCLES AS A RESPONSE TO SHIFTS IN CLIMATE
Dynamic general vegetation model; DGVM; Dynamic Global Vegetation Model
A Dynamic Global Vegetation Model (DGVM) is a computer program that simulates shifts in potential vegetation and its associated biogeochemical and hydrological cycles as a response to shifts in climate. DGVMs use time series of climate data and, given constraints of latitude, topography, and soil characteristics, simulate monthly or daily dynamics of ecosystem processes.

Википедия

Panel analysis

Panel (data) analysis is a statistical method, widely used in social science, epidemiology, and econometrics to analyze two-dimensional (typically cross sectional and longitudinal) panel data. The data are usually collected over time and over the same individuals and then a regression is run over these two dimensions. Multidimensional analysis is an econometric method in which data are collected over more than two dimensions (typically, time, individuals, and some third dimension).

A common panel data regression model looks like y i t = a + b x i t + ε i t {\displaystyle y_{it}=a+bx_{it}+\varepsilon _{it}} , where y {\displaystyle y} is the dependent variable, x {\displaystyle x} is the independent variable, a {\displaystyle a} and b {\displaystyle b} are coefficients, i {\displaystyle i} and t {\displaystyle t} are indices for individuals and time. The error ε i t {\displaystyle \varepsilon _{it}} is very important in this analysis. Assumptions about the error term determine whether we speak of fixed effects or random effects. In a fixed effects model, ε i t {\displaystyle \varepsilon _{it}} is assumed to vary non-stochastically over i {\displaystyle i} or t {\displaystyle t} making the fixed effects model analogous to a dummy variable model in one dimension. In a random effects model, ε i t {\displaystyle \varepsilon _{it}} is assumed to vary stochastically over i {\displaystyle i} or t {\displaystyle t} requiring special treatment of the error variance matrix.

Panel data analysis has three more-or-less independent approaches:

  • independently pooled panels;
  • random effects models;
  • fixed effects models or first differenced models.

The selection between these methods depends upon the objective of the analysis, and the problems concerning the exogeneity of the explanatory variables.