H
HLM-
Hierarchical Linear and Nonlinear Modeling(層次化的線性和非線性建模)
在社會研究和其它領域,所研究的數據通常包含了一個層次化的結構。即是說,對于研究的單個對象都被包含在某個分類之中,而這個分類對于研究會有一定的影響。我們可以把所研究的個體當作是等級1的單元,這個個體所在的群組可以被當作是等級2的單元。以此類推,等級2的群組所處的組織為等級3的單元,等級3的群組所處的組織為等級4的單元。這方面的例子有很多,比如教育系統(第一級為學生,第二級為老師,第三級為學校,第四級為學區)以及社區(第一級為個人,第二級為小區),顯而易見,要清楚分析這樣的數據需要專業的軟件。HLM(也被稱為多層次建模)支持研究單一分析中的任何層次關系,而同時兼顧每個層次間的相關變化。
HLM程序可以利用每個層級所指定的變量,生成一個包含可解釋每個層級變化的解釋變量的線性模型,使模型與結果變量相匹配。HLM不僅能夠評估每個層級的模型參數,還能夠預測與每個層級抽樣單元相關的隨機效應。它在教育研究領域有著廣泛應用,包含了這個領域流行的數據分層結構,適用于數據包含分層結構的任何研究領域,這其中也包含了縱向研究,可將對個人的重復測量嵌套進所研究的個體之中。另外,雖然上面的示例顯示的是分層結構中任何層次的成員只能夠嵌套在一個更高層級的成員里,但是HLM還提供了另外一種關系狀況,除開“嵌套”,還可能是“交叉”,比如,某個學生可能是研究期間里多個教室的成員之一。
HLM程序支持連續、計數、二進制和名義(continuous, count,ordinal,nominal)的結果變量,并假設期望結果與線性組解釋變量的函數關系,這種關系通過合適的鏈接函數進行定義。比如,身份鏈接identity link(連續結果)和分對數鏈接 logit link(二進制結果)。
HLM - Hierarchical Linear and Nonlinear Modeling (HLM)
The HLM program can fit models to outcome variables that generate a linear model with explanatory variables that account for variations at each level, utilizing variables specified at each level. HLM not only estimates model coefficients at each level, but it also predicts the random effects associated with each sampling unit at every level. While commonly used in education research due to the prevalence of hierarchical structures in data from this field, it is suitable for use with data from any research field that have a hierarchical structure. This includes longitudinal analysis, in which an individual's repeated measurements can be nested within the individuals being studied. In addition, although the examples above implies that members of this hierarchy at any of the levels are nested exclusively within a member at a higher level, HLM can also provide for a situation where membership is not necessarily "nested", but "crossed", as is the case when a student may have been a member of various classrooms during the duration of a study period.
The HLM program allows for continuous, count, ordinal, and nominal outcome variables and assumes a functional relationship between the expectation of the outcome and a linear combination of a set of explanatory variables. This relationship is defined by a suitable link function, for example, the identity link (continuous outcomes) or logit link (binary outcomes).
Four-level nested models:
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Four-level nested models for cross-sectional data (for example, models for item response within students within classrooms within schools).
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Four-level models for longitudinal data (for example items within time points within persons within neighborhoods).
Four-way cross-classified and nested mixtures:
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Repeated measures on students who are moving across teachers within schools over time, or item responses nested within immigrants who are cross-classified by country of origin and country of destination.
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Repeated measures on persons who are simultaneously living in a given neighborhood and attending a given school.
Hierarchical models with dependent random effects:
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Spatially dependent neighborhood effects.
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Social network interactions.
HLM 7 also offers new flexibility in estimating hierarchical generalized linear models through the use of Adaptive Gauss-Hermite Quadrature (AGH) and high-order Laplace approximations to maximum likelihood. The AGH approach has been shown to work very well when cluster sizes are small and variance components are large. the high-order Laplace approach requires somewhat larger cluster sizes but allows an arbitrarily large number of random effects (important when cluster sizes are large)
New HTML output that supplies elegant notation for statistical models including visually attractive tables is also now available, allowing the user to cut and paste output of interest into manuscripts.
HLM 7 manual
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A hard copy of the HLM 7 manual is not available.
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PDF copies of the HLM 7 manual are available via the HLM 7 Manual option on the Help menu of the full, rental, trial, and student editions of HLM 7 for Windows.