Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

Robust Modeling in the Presence of Outliers for Food Grain Production in India


Affiliations
1 Division of Statistics and Computer Science, Sher-e-Kashmir University of Agricultural Sciences and Technology of Jammu, Jammu (J&K), India
     

   Subscribe/Renew Journal


The traditional ordinary least squares procedure (OLS) is the most frequently used method for analyzing food grain production data (1983-2014), but ignore the presence of outliers or influential data points which may distort the regression estimates obtained from OLS. These data points may remain unnoticed and can have a strong adverse affect on the regression estimates. In this paper, two approaches i.e., robust M-regression and quantile regression to linear robust regression analysis are presented, as these methods provide formal procedure to overcome from the situation of outliers and influential observations and to reduce their influence on the final estimates of the regression co-efficients by using Cobb-Douglas production function. Moreover, 0.90th quantile regression model comes out to be best on the basis of AIC (-47.17), SBIC (-36.91), elasticity of production, marginal value productivity, sign, size and the variables significant effect on foodgrain production than OLS and robust M-regression. Also, the variables NSA and AC were best in order to increase the food grain production on the basis of quantile 0.90th regression, elasticity of production and MVP at 0.90th quantile.

Keywords

Ordinary Least Square, Outliers, Robust Regression, Quantile Regression, M-Estimator, Food Grain Production.
Subscription Login to verify subscription
User
Notifications
Font Size


  • Cameron, A. C. and Trivedi, P. K. (2009). Microeconometrics using stata, Stata Corp LP, Texas.
  • Chaudhuri, P., Doksum, K. and Samarov A. (1997). On average derivative quantile regression. Annl. Stat., 25(2): 715–744.
  • Cobb, C.W. and Douglas, P.H. (1928). A theory of production. American Econ. Rev., 18 : 139-65.
  • Cook, R.D. (1979). Influential observations in linear regression. J. American Stat. Assoc., 19(1): 15-18.
  • Firpo, S., Fortin, N.M. and Lemieux, T. (2009). Unconditional quantile regressions. Econometrica, 77(3): 953-973.
  • Galton, F. (1885). Regression towards mediocrity in heredity stature. J. Anthropological Institute, 15: 246-263.
  • Gutenbrunner, C. and Jureckova, J. (1992). Regression rank scores and regression quantiles. Annl. Stat., 20(1): 305–330.
  • He, X. and Zhu, L.X. (2003). A lack-of-fit test for quantile regression. J. American Stat. Assoc., 98 (464):1013-1022.
  • Huber, P. J. (1973). Robust regression: Asymptotics, conjectures and monte carlo. Annl Stat., 1(5): 799-821.
  • Knight, K. (1998). Limiting distributions for L1 regression estimators under general conditions. Annl Stat., 26(2): 755–770.
  • Koenker, R. and Bassett, G. (1978). Regression quantiles. Econometrica, 46 (1): 33-50.
  • Koenker, R. and Portnoy, S. (1987). L-estimation for linear models. J. American Stat. Assoc., 82(399): 851–857.
  • Koenker, R. and Machado, J. A. F. (1999). Goodness of fit and related inference processes for quantile regression. J. American Stat. Assoc., 94(448): 1296–1310.
  • Meintanis, S.G. and Donatos, G.S. (1997). A comparative study of some robust methods for coefficient-estimation in linear regression. Computational Stat. & Data Anal, 23: 525–540.
  • Meloun, M. and Militky, J. (2001). Detection of single influential points in OLS regression model building. Analytica Chimica Acta, 439 (2):169-191.
  • Pol, A.P., Pascual, M.B. and Vazquez, P.C. (2006). Robust estimators and bootstrap confidence intervals applied to tourism spending. Tourism Mgmt., 27: 42–50.
  • Portnoy, S. (1991). Asymptotic behavior of regression quantiles in nonstationary, dependent cases. J. Multivariate Analysis, 38 (1): 100–113.
  • Portnoy, S. and Koenker, R. (1997). The gaussian hare and the laplacian tortoise. Stat. Sci., 12: 279–300.
  • Portnoy, S. (2003). Censored regression quantiles. J. American Stat. Assoc., 98 (464): 1001-1012.
  • Powell, J. L. (1984). Least absolute deviations estimation for the censored regression model. J. Econometrics, 25: 303–325.
  • Powell, J.L. (1986). Censored regression quantiles. J. Econometrics, 32:143-55.
  • Rai, M. (2006). Green revolution II. A lecture note by Director General, Indian Council of Agricultural Research, Ministry of Agriculture, Govt. of India in ASSOCHAM (Association Chambers of Commerce and Industry of India) Summit at New Delhi, India.
  • Rousseeuw, P. J. and Leroy, A. M. (1987). Robust regression and outlier detection. Hoboken: Wiley. SAS Users Group International Conference.
  • http://dfpd.nic.in/writereaddata/images/pdf/ann-2014-15.pdf.

Abstract Views: 217

PDF Views: 0




  • Robust Modeling in the Presence of Outliers for Food Grain Production in India

Abstract Views: 217  |  PDF Views: 0

Authors

Sunali Mahajan
Division of Statistics and Computer Science, Sher-e-Kashmir University of Agricultural Sciences and Technology of Jammu, Jammu (J&K), India
Manish Sharma
Division of Statistics and Computer Science, Sher-e-Kashmir University of Agricultural Sciences and Technology of Jammu, Jammu (J&K), India
Banti Kumar
Division of Statistics and Computer Science, Sher-e-Kashmir University of Agricultural Sciences and Technology of Jammu, Jammu (J&K), India

Abstract


The traditional ordinary least squares procedure (OLS) is the most frequently used method for analyzing food grain production data (1983-2014), but ignore the presence of outliers or influential data points which may distort the regression estimates obtained from OLS. These data points may remain unnoticed and can have a strong adverse affect on the regression estimates. In this paper, two approaches i.e., robust M-regression and quantile regression to linear robust regression analysis are presented, as these methods provide formal procedure to overcome from the situation of outliers and influential observations and to reduce their influence on the final estimates of the regression co-efficients by using Cobb-Douglas production function. Moreover, 0.90th quantile regression model comes out to be best on the basis of AIC (-47.17), SBIC (-36.91), elasticity of production, marginal value productivity, sign, size and the variables significant effect on foodgrain production than OLS and robust M-regression. Also, the variables NSA and AC were best in order to increase the food grain production on the basis of quantile 0.90th regression, elasticity of production and MVP at 0.90th quantile.

Keywords


Ordinary Least Square, Outliers, Robust Regression, Quantile Regression, M-Estimator, Food Grain Production.

References