Accès libre

Keeping Land in Grass: Re-Enrollment Motivations with the Environmental Quality Incentive Program after the Conservation Reserve Program

À propos de cet article

Citez

Amaya, A., Presser, S., 2016. Nonresponse Bias for Univariate and Multivariate Estimates of Social Activities and Roles. Public Opinion Quarterly 81(1), 1–36. AmayaA. PresserS. 2016 Nonresponse Bias for Univariate and Multivariate Estimates of Social Activities and Roles Public Opinion Quarterly 81 1 1 36 Search in Google Scholar

Barnes, J.C., Sketch, M., Gramza, A.R., Sorice, M.G., Iovanna, R., Dayer, A.A., 2020. Land use decisions after the Conservation Reserve Program: Re-enrollment, reversion, and persistence in the southern Great Plains. Conservation Science and Practice 2(9), e254. BarnesJ.C. SketchM. GramzaA.R. SoriceM.G. IovannaR. DayerA.A. 2020 Land use decisions after the Conservation Reserve Program: Re-enrollment, reversion, and persistence in the southern Great Plains Conservation Science and Practice 2 9 e254 Search in Google Scholar

Brooks, M.E., Dalal, D.K., Nolan, K.P., 2014. Are common language effect sizes easier to understand than traditional effect sizes? Journal of Applied Psychology 99, 332–340. BrooksM.E. DalalD.K. NolanK.P. 2014 Are common language effect sizes easier to understand than traditional effect sizes? Journal of Applied Psychology 99 332 340 Search in Google Scholar

Cliff, N., 1993. Dominance statistics: Ordinal analyses to answer ordinal questions. Psychological Bulletin 114, 494–509. CliffN. 1993 Dominance statistics: Ordinal analyses to answer ordinal questions Psychological Bulletin 114 494 509 Search in Google Scholar

Cohen, J., 1988. Statistical power analysis for the behavioral sciences, 2nd ed. Erlbaum, Hillsdale, NJ. CohenJ. 1988 Statistical power analysis for the behavioral sciences 2nd ed Erlbaum Hillsdale, NJ Search in Google Scholar

Coon, J.J., Van Riper, C.J., Morton, L.W., Miller, J.R., 2020. Evaluating Nonresponse Bias in Survey Research Conducted in the Rural Midwest. Society & Natural Resources 33, 968–986. CoonJ.J. Van RiperC.J. MortonL.W. MillerJ.R. 2020 Evaluating Nonresponse Bias in Survey Research Conducted in the Rural Midwest Society & Natural Resources 33 968 986 Search in Google Scholar

Dayer, A.A., Lutter, S.H., Sesser, K.A., Hickey, C.M., Gardali, T., 2018. Private Landowner Conservation Behavior Following Participation in Voluntary Incentive Programs: Recommendations to Facilitate Behavioral Persistence: Facilitating landowner behavioral persistence. Conservation Letters 11, e12394. DayerA.A. LutterS.H. SesserK.A. HickeyC.M. GardaliT. 2018 Private Landowner Conservation Behavior Following Participation in Voluntary Incentive Programs: Recommendations to Facilitate Behavioral Persistence: Facilitating landowner behavioral persistence Conservation Letters 11 e12394 Search in Google Scholar

de Winter, J.F.C., Dodou, D., n.d. Five-Point Likert Items: t test versus Mann-Whitney-Wilcoxon (Addendum added October 2012). Practical Assessment, Research, and Evaluation 15, Article 11. de WinterJ.F.C. DodouD. n.d. Five-Point Likert Items: t test versus Mann-Whitney-Wilcoxon (Addendum added October 2012) Practical Assessment, Research, and Evaluation 15 Article 11. Search in Google Scholar

Delaney, H.D., Vargha, A., 2002. Comparing several robust tests of stochastic equality with ordinally scaled variables and small to moderate sized samples. Psychological Methods 7, 485–503. DelaneyH.D. VarghaA. 2002 Comparing several robust tests of stochastic equality with ordinally scaled variables and small to moderate sized samples Psychological Methods 7 485 503 Search in Google Scholar

Farm Service Agency (FSA), USDA, 2022. Acres on Contracts Expiring Between 2018 – 2022 that Have Been Enrolled More than Once. https://www.fsa.usda.gov/Assets/USDA-FSA-Public/usdafiles/Conservation/PDF/Acres%20on%20Contracts%20Expiring%20Between%202018-2%20that%20Have%20Been%20Enrolled%20More%20than%20Once%20Sep%202017.pdf. Accessed 9/29/2023. Farm Service Agency (FSA), USDA 2022 Acres on Contracts Expiring Between 2018 – 2022 that Have Been Enrolled More than Once https://www.fsa.usda.gov/Assets/USDA-FSA-Public/usdafiles/Conservation/PDF/Acres%20on%20Contracts%20Expiring%20Between%202018-2%20that%20Have%20Been%20Enrolled%20More%20than%20Once%20Sep%202017.pdf. Accessed 9/29/2023. Search in Google Scholar

Fritz, C.O., Morris, P.E., Richler, J.J., 2012. Effect size estimates: Current use, calculations, and interpretation. Journal of Experimental Psychology: General 141, 2–18. FritzC.O. MorrisP.E. RichlerJ.J. 2012 Effect size estimates: Current use, calculations, and interpretation Journal of Experimental Psychology: General 141 2 18 Search in Google Scholar

Groves, R.M., 2006. Nonresponse Rates and Nonresponse Bias in Household Surveys. Public Opinion Quarterly 70, 646–675. GrovesR.M. 2006 Nonresponse Rates and Nonresponse Bias in Household Surveys Public Opinion Quarterly 70 646 675 Search in Google Scholar

Hellevik, O., 2016. Extreme nonresponse and response bias: A “worst case” analysis. Quality & Quantity 50, 1969–1991. HellevikO. 2016 Extreme nonresponse and response bias: A “worst case” analysis Quality & Quantity 50 1969 1991 Search in Google Scholar

Hendra, R., Hill, A., 2019. Rethinking Response Rates: New Evidence of Little Relationship Between Survey Response Rates and Nonresponse Bias. Evaluation Review 43, 307–330. HendraR. HillA. 2019 Rethinking Response Rates: New Evidence of Little Relationship Between Survey Response Rates and Nonresponse Bias Evaluation Review 43 307 330 Search in Google Scholar

Kassambara, A., 2022. rstatix: Pipe-Friendly Framework for Basic Statistical Tests. R package version 0.7.1, 2022. https://CRAN.R-project.org/package=rstatix KassambaraA. 2022 rstatix: Pipe-Friendly Framework for Basic Statistical Tests. R package version 0.7.1, 2022 https://CRAN.R-project.org/package=rstatix Search in Google Scholar

Kirk, R.E., 1996. Practical Significance: A Concept Whose Time Has Come. Educational and Psychological Measurement 56, 746–759. KirkR.E. 1996 Practical Significance: A Concept Whose Time Has Come Educational and Psychological Measurement 56 746 759 Search in Google Scholar

Kloke, J., McKean, J.W., 2014. Nonparametric Statistical Methods Using R, Chapman and Hall/CRC. KlokeJ. McKeanJ.W. 2014 Nonparametric Statistical Methods Using R Chapman and Hall/CRC Search in Google Scholar

Liu, P., Wang, Y., Zhang, W., 2023. The influence of the Environmental Quality Incentives Program on local water quality. American Journal of Agricultural Economics 105, 27–51. LiuP. WangY. ZhangW. 2023 The influence of the Environmental Quality Incentives Program on local water quality American Journal of Agricultural Economics 105 27 51 Search in Google Scholar

Maher, A.T., Quintana Ashwell, N.E., Tanaka, J.A., Ritten, J.P., Maczko, K.A., 2023. Financial barriers and opportunities for conservation adoption on U.S. rangelands: A region-wide, ranch-level economic assessment of NRCS-sponsored Greater Sage-grouse habitat conservation programs. Journal of Environmental Management 329, 116420. MaherA.T. Quintana AshwellN.E. TanakaJ.A. RittenJ.P. MaczkoK.A. 2023 Financial barriers and opportunities for conservation adoption on U.S. rangelands: A region-wide, ranch-level economic assessment of NRCS-sponsored Greater Sage-grouse habitat conservation programs Journal of Environmental Management 329 116420 Search in Google Scholar

Mangiafico, S.S., 2023a. rcompanion: Functions to Support Extension Education Program Evaluation. R package version 2.4.30, 2023. https://CRAN.R-project.org/package=rcompanion MangiaficoS.S. 2023a rcompanion: Functions to Support Extension Education Program Evaluation R package version 2.4.30, 2023. https://CRAN.R-project.org/package=rcompanion Search in Google Scholar

Mangiafico, S.S., 2023b. Two-sample Mann–Whitney U Test, in: Summary and Analysis of Extension Program Evaluation in R. Rutgers Cooperative Extension, New Brunswick, NJ. MangiaficoS.S. 2023b Two-sample Mann–Whitney U Test in: Summary and Analysis of Extension Program Evaluation in R Rutgers Cooperative Extension New Brunswick, NJ Search in Google Scholar

McGraw, K.O., Wong, S.P., 1992. A common language effect size statistic. Psychological Bulletin 111, 361–365. McGrawK.O. WongS.P. 1992 A common language effect size statistic Psychological Bulletin 111 361 365 Search in Google Scholar

Pathak, S., Paudel, K.P., Adusumilli, N.C., 2021. Impact of the Federal Conservation Program Participation on Conservation Practice Adoption Intensity in Louisiana, USA. Environmental Management 68, 1–16. PathakS. PaudelK.P. AdusumilliN.C. 2021 Impact of the Federal Conservation Program Participation on Conservation Practice Adoption Intensity in Louisiana, USA Environmental Management 68 1 16 Search in Google Scholar

Prokopy, L.S., Floress, K., Arbuckle, J.G., Church, S.P., Eanes, F.R., Gao, Y., Gramig, B.M., Ranjan, P., Singh, A.S., 2019. Adoption of agricultural conservation practices in the United States: Evidence from 35 years of quantitative literature. Journal of Soil and Water Conservation 74, 520–534. ProkopyL.S. FloressK. ArbuckleJ.G. ChurchS.P. EanesF.R. GaoY. GramigB.M. RanjanP. SinghA.S. 2019 Adoption of agricultural conservation practices in the United States: Evidence from 35 years of quantitative literature Journal of Soil and Water Conservation 74 520 534 Search in Google Scholar

R Core Team, 2022. R: A language and environment for statistical computing. R 4.2.2, 2022. Vienna, Austria. https://www.R-project.org/ R Core Team 2022 R: A language and environment for statistical computing R 4.2.2, 2022. Vienna, Austria. https://www.R-project.org/ Search in Google Scholar

Ranjan, P., Church, S.P., Floress, K., Prokopy, L.S., 2019. Synthesizing Conservation Motivations and Barriers: What Have We Learned from Qualitative Studies of Farmers' Behaviors in the United States? Society & Natural Resources 32, 1171–1199. RanjanP. ChurchS.P. FloressK. ProkopyL.S. 2019 Synthesizing Conservation Motivations and Barriers: What Have We Learned from Qualitative Studies of Farmers' Behaviors in the United States? Society & Natural Resources 32 1171 1199 Search in Google Scholar

Ruscio, J., 2008. A probability-based measure of effect size: Robustness to base rates and other factors. Psychological Methods 13, 19–30. RuscioJ. 2008 A probability-based measure of effect size: Robustness to base rates and other factors Psychological Methods 13 19 30 Search in Google Scholar

Skaggs, R.K., Kirksey, R.E., Harper, W.M., 1994. Determinants And Implication of Post-CRP Land Use Decisions. Journal of Agricultural and Resource Economics 19(2), 299–312. SkaggsR.K. KirkseyR.E. HarperW.M. 1994 Determinants And Implication of Post-CRP Land Use Decisions Journal of Agricultural and Resource Economics 19 2 299 312 Search in Google Scholar

Sweikert, L.A., Gigliotti, L.M., 2019a. Evaluating the role of Farm Bill conservation program participation in conserving America's grasslands. Land Use Policy 81, 392–399. SweikertL.A. GigliottiL.M. 2019a Evaluating the role of Farm Bill conservation program participation in conserving America's grasslands Land Use Policy 81 392 399 Search in Google Scholar

Sweikert, L.A., Gigliotti, L.M., 2019b. Understanding conservation decisions of agriculture producers. The Journal of Wildlife Management 83, 993–1004. SweikertL.A. GigliottiL.M. 2019b Understanding conservation decisions of agriculture producers The Journal of Wildlife Management 83 993 1004 Search in Google Scholar

Torchiano, M., 2016. Effsize - a package for efficient effect size computation. https://zenodo.org/record/196082. TorchianoM. 2016 Effsize - a package for efficient effect size computation https://zenodo.org/record/196082. Search in Google Scholar

Vargha, A., Delaney, H.D., 2000. A Critique and Improvement of the “CL” Common Language Effect Size Statistics of McGraw and Wong. Journal of Educational and Behavioral Statistics 25, 101. VarghaA. DelaneyH.D. 2000 A Critique and Improvement of the “CL” Common Language Effect Size Statistics of McGraw and Wong Journal of Educational and Behavioral Statistics 25 101 Search in Google Scholar

Wan, Z., Xia, X., Lo, D., Murphy, G.C., 2020. How does Machine Learning Change Software Development Practices? IEEE Transactions on Software Engineering 49, 1857–1871. WanZ. XiaX. LoD. MurphyG.C. 2020 How does Machine Learning Change Software Development Practices? IEEE Transactions on Software Engineering 49 1857 1871 Search in Google Scholar

eISSN:
2719-5430
Langue:
Anglais
Périodicité:
4 fois par an
Sujets de la revue:
Life Sciences, Ecology, other