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Acknowledgments
This discussion brings me back to my own dissertational work under the guidance of Grace Wahba in the early 2000’s. The work has evolved into many ideas in different forms and shapes over the years. I am grateful to Grace for her inspirations and wish her very happy 80th birthday this year (2014) along with all of her former and present students and colleagues.
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This comment refers to the invited paper available at doi:10.1007/s11750-014-0338-8.
Lee’s research was supported in part by National Science Foundation grant DMS-12-09194.
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Lee, Y. Comments on: Support vector machines maximizing geometric margins for multi-class classification. TOP 22, 852–855 (2014). https://doi.org/10.1007/s11750-014-0341-0
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DOI: https://doi.org/10.1007/s11750-014-0341-0