1 / 14

Comparison Of Multilevel Model And Its Statistical Diagnostics

Diagnostics in statistical analysis is atmost important as there may be few influential observations which may distort the inference of the problem statement at hand. Diagnostic measures are to be selected with the suitable model in validating the multi-level regression results with greater accuracy. Statswork offers statistical services as per the requirements of the customers. When you Order statistical Services at Statswork, we promise you the following u2013 Always on Time, outstanding customer support, and High-quality Subject Matter Experts. <br>Contact Us:<br><br>Website: www.statswork.com<br><br>Email: info@statswork.com<br><br>United Kingdom: 44-1143520021<br><br>India: 91-4448137070<br>t<br>WhatsApp: 91-8754446690<br>

statsworkfb
Download Presentation

Comparison Of Multilevel Model And Its Statistical Diagnostics

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. NOV 4, 2019 Research paper Comparison of multilevel model and its statistical diagnostics Tags: Statswork | Linear Regression Models | Multilevel model | Statistical diagnostics | Programmers | Statistical Data Analysis | Data Analysis Services Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  2. STATISTICAL DIAGNOSTICS Diagnostics in statistical analysis is atmost important because there may be few influential observations which may distort the inference of the problem statement at hand. All influential observations are not outliers, but some outliers are influential. Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  3. MULTILEVEL DATA AND ITS DIAGNOSTICS Multi-level models are the statistical models of parameters (like in usual linear regression model) that vary at more than one level. Referred with many terms, namely, mixed-effect models, random effect model, hierarchical models and many more. With the advent of statistical software and computations, multi-level or hierarchical models are widely used for longitudinal repeated measures analysis and in many meta data applications. Multi-level models also applicable for non-linear case too by using appropriate Generalized Linear Mixed Models. Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  4. TABLE:1 FIXED EFFECT MODEL USING REGRESSION Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  5. TABLE:2 RANDOM EFFECT MODEL USING REGRESSION Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  6. TABLE:3 HIERARCHICAL MODEL Like in linear regression model, the mixed model also must satisfies the assumptions of the model. If any one of the assumptions is violated, then the data is taken to the diagnostics part of the model. Mostly, researchers checks the data for the independence. If it gets violated, then the most popular residual diagnostics is carried out to identify the influential or outlier points which deviate from other. Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  7. TABLE:4 LINEAR REGRESSION BETWEEN ATTRACTIVENESS AND PURCHASE INTENTION TABLE:5 R, R-SQUARE AND ADJUSTED R- SQUARE Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  8. Residual diagnostics in the multilevel models needs careful attention. TABLE:6 RESIDUALS OF LINEAR REGRESSION Usually statistical analysis practitioner prefer to fit a level 1 (with one independent variable) regression model with and without the influential points and compare the plots of the residuals. Later to fit level 2 regression model and cross check the results. Bootstrapping technique with jacknife residuals can also be useful in diagnosing the multi-level model for greater accuracy. Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  9. TABLE:7 MULTIPLE REGRESSION ANALYSIS TO PREDICT ONE DEPENDENT VARIABLE BASED ON MORE THAN ONE INDEPENDENT VARIABLE Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  10. SOFTWARE PACKAGES IN R FOR DIAGNOSING MULTI-LEVEL MODEL Used for linear mixed model diagnostics. Misspecification is a major problem when using usual residual statistics such as Pearson and Response in the multi-level modelling. Residplot Used for the diagnostics for hierarchical models. Used for residual diagnostics of GLMMs. Provides deletion diagnostics with the help of distance based metrics such as Cook’s distance, COVratio, COVtrace and MDFFITS. DHARMa HLMdiag Overcomes the drawback of residplot package and gives a straightforward method as in linear regression models. Allows the user to obtain the residuals through least square estimates or bayes estimates. Also allows the user to obtain various residuals using marginal, conditional distributions. Unusual pattern in the data are identified using the residual vs the predicted plots. Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  11. OTHER MULTI-LEVEL MODELS Diagnostic tools for random effects model with an application to growth curve model- Lindsey and Lindsey (2000). 01 Diagnostics for multilevel models in a more concrete way- Snijders and Berkhof (2007). 02 Case deletion diagnostics in multilevel models for identifying the influential observations in the data- Shi and Chen (2008). 03 Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  12. SUMMARY There have been a lot of applications emerging for multilevel regression models especially in the meta data and it became a common practice in the field of statistics to make the model more accurate. Thus, more appropriate diagnostic measures are to be selected with the suitable model in validating the multi-level regression results with greater accuracy. Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  13. Statswork Lab @ Statswork.com www.statswork.com Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

  14. PHONE NUMBER UK : +44-1143520021 INDIA : +91-4448137070 GET IN TOUCH WITH US EMAIL ADDRESS info@statswork.com Research Planing | Data Collection | Semantic Annotation | Consumer & Retail Analytics | Econometrics Copyright © 2019 Statswork. All rights reserved

More Related