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@ARTICLE{Harms:1022469,
      author       = {Harms, Melanie and Herty, Michael and Segala, Chiara and
                      Zerz, Eva},
      title        = {{S}parse control in microscopic and mean-field
                      leader-follower models},
      journal      = {AIMS mathematics},
      volume       = {10},
      number       = {8},
      issn         = {2473-6988},
      address      = {Springfield, MO},
      publisher    = {AIMS Press},
      reportid     = {RWTH-2025-10049},
      pages        = {19147-19172},
      year         = {2025},
      cin          = {111410 / 110000 / 114710 / 111400 / 114920},
      ddc          = {510},
      cid          = {$I:(DE-82)111410_20170801$ / $I:(DE-82)110000_20140620$ /
                      $I:(DE-82)114710_20140620$ / $I:(DE-82)111400_20191118$ /
                      $I:(DE-82)114920_20140620$},
      pnm          = {OAPKF - Open-Access-Publikation mit Unterstützung der RWTH
                      Aachen University (021000-OAPKF) / SFB 1481 B04 - Sparsity
                      fördernde Muster in kinetischen Hierarchien (B04)
                      (504291427) / SFB 1481 B05 - Sparsifizierung zeitabhängiger
                      Netzwerkflußprobleme mittels diskreter Optimierung (B05)
                      (504292598) / SFB 1481 B06 - Kinetische Theorie trifft
                      algebraische Systemtheorie (B06) (504292976) / DFG project
                      G:(GEPRIS)462234017 - Meanfield Theorie zur Analysis von
                      Deep Learning Methoden (462234017) / DFG project
                      G:(GEPRIS)442047500 - SFB 1481: Sparsity und singuläre
                      Strukturen (442047500) / DFG project G:(GEPRIS)441826958 -
                      SPP 2298: Theoretische Grundlagen von Deep Learning
                      (441826958)},
      pid          = {G:(DE-82)021000-OAPKF / G:(GEPRIS)504291427 /
                      G:(GEPRIS)504292598 / G:(GEPRIS)504292976 /
                      G:(GEPRIS)462234017 / G:(GEPRIS)442047500 /
                      G:(GEPRIS)441826958},
      typ          = {PUB:(DE-HGF)16},
      UT           = {WOS:001558423500004},
      doi          = {10.3934/math.2025856},
      url          = {https://publications.rwth-aachen.de/record/1022469},
}