IPC분류정보
국가/구분 |
United States(US) Patent
등록
|
국제특허분류(IPC7판) |
|
출원번호 |
US-0424878
(2003-04-29)
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발명자
/ 주소 |
- Stephenson,David Mark
- Monach,William Reynolds
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출원인 / 주소 |
- Daniel H. Wagner Associates, Inc.
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인용정보 |
피인용 횟수 :
44 인용 특허 :
0 |
초록
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Provided is an automated process for producing accurate statistical models from sample data tables. The process solves for optimal parameters of each statistical model considered, computes test statistics and degrees of freedom in the model, and uses these test statistics and degrees of freedom to e
Provided is an automated process for producing accurate statistical models from sample data tables. The process solves for optimal parameters of each statistical model considered, computes test statistics and degrees of freedom in the model, and uses these test statistics and degrees of freedom to establish a complete ordering of the statistical models. In cases where the sample data table is sufficiently small, the process constructs and analyzes all reasonable statistical models that might fit the data table provided. In cases where the number of possible models is prohibitively high, the process begins by constructing and solving more general models and then constructs and solves those more detailed models that are similar to those general models that achieved the highest ordering. In either of these two cases, the process arrives at a statistical model that is highest in the ordering and is thus deemed most suitable to model the sample data table.
대표청구항
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What is claimed is: 1. A process for producing, from sample data tables, an accurate statistical model, including choice of significant covariates and correlations between model covariates, the process comprising: a. providing a sample data table listing either (a) the recorded occurrences of one o
What is claimed is: 1. A process for producing, from sample data tables, an accurate statistical model, including choice of significant covariates and correlations between model covariates, the process comprising: a. providing a sample data table listing either (a) the recorded occurrences of one of two or more possible events, (b) the recorded number of occurrences of a possible event, and (c) the recorded measurements of a set of variables; b. generating statistical models fitting the sample data table; c. solving for optimal parameters of each statistical model considered; d. using model test statistics and the number of degrees of freedom in each model to assess the suitability of models, to arrive at a complete ordering of the models, and to determine which additional models to build, solve, and test; e. providing a statistical model that has the highest observed ordering, and thus most closely fits the sample data table; f. providing average table values, including the possibility of values in table entries where no sample data occurred, based on that model that attained the highest ordering when fit to the sample data table. 2. The process according to claim 1, additionally comprising: automating modeling and analysis of data using general linear statistical models, the only required inputs being the sample data table and, in the case of logistic modeling, an indication of which variable is to be considered as the response variable. 3. The process according to claim 1, additionally comprising: specifying which covariates must interact in the models and which covariates are considered to be ordinal, and then specifying at which stage of the process ordinal models should be considered. 4. The process according to claim 1, additionally comprising: automatically constructing and solving for the optimal model parameters of all possible hierarchical nominal and ordinal models. 5. The process according to claim 4, additionally comprising: automatically determining model test statistics and degrees of freedom for each model and using said test statistics and degrees of freedom to generate a complete ordering of the statistical models, whereby any model may be compared against any other model. 6. The process according to claim 4, additionally comprising: specifying that a heuristic, rather than exhaustive, exploration of possible statistical models be performed on the nominal models, on the nominal and ordinal models, or on the ordinal models only.
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