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Polynomial Kernels for
   Planar F-deletion
Polynomial Kernels for
       Planar F-deletion

Fedor V. Fomin, Daniel Lokshtanov and Saket Saurabh
Polynomial Kernels for
            Planar F-deletion *

     Fedor V. Fomin, Daniel Lokshtanov and Saket Saurabh




when F contains connected graphs
Outline
Outline

éêçäçÖìÉ
Outline

ëâÉíÅÜÉë=çÑ=âÉó=áÇÉ~ë
Outline

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Polynomial  Kernels  for  Planar  F-­deletion
Polynomial  Kernels  for  Planar  F-­deletion

      qÜÉ=píçêó=pç=c~ê
RÉëíêáÅíÉÇ=`~ëÉë=çÑ=mä~å~ê=cJÇÉäÉíáçå
RÉëíêáÅíÉÇ=`~ëÉë=çÑ=mä~å~ê=cJÇÉäÉíáçå


                 |G|  p(k)?
RÉëíêáÅíÉÇ=`~ëÉë=çÑ=mä~å~ê=cJÇÉäÉíáçå


                                      |G|  p(k)?
                        åç
Infer the existence of a protrusion
RÉëíêáÅíÉÇ=`~ëÉë=çÑ=mä~å~ê=cJÇÉäÉíáçå


                                       |G|  p(k)?
                        åç
Infer the existence of a protrusion

                         no  protrusions?



                                      Reject the instance
RÉëíêáÅíÉÇ=`~ëÉë=çÑ=mä~å~ê=cJÇÉäÉíáçå


                                       |G|  p(k)?
                        åç
Infer the existence of a protrusion

                         no  protrusions?



     Reduce the protrusion            Reject the instance
RÉëíêáÅíÉÇ=`~ëÉë=çÑ=mä~å~ê=cJÇÉäÉíáçå


                                       |G|  p(k)?
                        åç
Infer the existence of a protrusion

                         no  protrusions?



     Reduce the protrusion            Reject the instance
RÉëíêáÅíÉÇ=`~ëÉë=çÑ=mä~å~ê=cJÇÉäÉíáçå


                                       |G|  p(k)?
                        åç                                  óÉë
Infer the existence of a protrusion                           Poly Kernel

                         no  protrusions?



     Reduce the protrusion            Reject the instance
RÉëíêáÅíÉÇ=`~ëÉë=çÑ=mä~å~ê=cJÇÉäÉíáçå


                                       |G|  p(k)?
                        åç                                  óÉë
Infer the existence of a protrusion                           Poly Kernel
                    Lemmas  17-­23
                         no  protrusions?



     Reduce the protrusion            Reject the instance
RÉëíêáÅíÉÇ=`~ëÉë=çÑ=mä~å~ê=cJÇÉäÉíáçå


                                       |G|  p(k)?
                        åç                                  óÉë
Infer the existence of a protrusion                           Poly Kernel
                    Lemmas  17-­23
                         no  protrusions?



     Reduce the protrusion            Reject the instance
                  Theorem  2,3
mä~å~ê=cJÇÉäÉíáçå


                                       |G|  p(k)?
                        åç                                  óÉë
Infer the existence of a protrusion                           Poly Kernel
                    Lemmas  17-­23
                         no  protrusions?



     Reduce the protrusion            Reject the instance
                  Theorem  2,3
mä~å~ê=cJÇÉäÉíáçå


                                       |G|  p(k)?
                        åç                                  óÉë
Infer the existence of a protrusion                           Poly Kernel

                         no  protrusions?



     Reduce the protrusion            Reject the instance
                  Theorem  2,3
mä~å~ê=cJÇÉäÉíáçå


                                       |G|  p(k)?
                        åç                                  óÉë
Infer the existence of a protrusion                           Poly Kernel

                         no  protrusions?



     Reduce the protrusion            Reject the instance
mä~å~ê=cJÇÉäÉíáçå


                                       |G|  p(k)?
                        åç                                  óÉë
Infer the existence of a protrusion
    Infer  near-­protrusions                                  Poly Kernel

                         no  protrusions?



     Reduce the protrusion            Reject the instance
mä~å~ê=cJÇÉäÉíáçå


                                       |G|  p(k)?
                        åç                                  óÉë
Infer the existence of a protrusion
    Infer  near-­protrusions                                  Poly Kernel

                         no  protrusions?



     Irrelevant  Edges
     Reduce the protrusion            Reject the instance
X




GX
Approximate  F-­deletion  set
  X




GX
Approximate  F-­deletion  set
  X




GX



       constant  treewidth  zone
Approximate  F-­deletion  set
  X




GX



       constant  treewidth  zone
Approximate  F-­deletion  set
  X




GX



       constant  treewidth  zone
Approximate  F-­deletion  set
  X



         constant  boundary...?




GX



       constant  treewidth  zone
k




k
k




k
The  Space  of  all  t-­boundaried  graphs
The  Space  of  all  t-­boundaried  graphs
The  Space  of  all  t-­boundaried  graphs
Polynomial  Kernels  for  Planar  F-­deletion
Polynomial  Kernels  for  Planar  F-­deletion

           `çåíáåìÉÇKKK
Approximate  F-­deletion  set
  X



         constant  boundary...?




GX



       constant  treewidth  zone
Approximate  F-­deletion  set
  X



         constant  boundary...?




GX



       constant  treewidth  zone
Approximate  F-­deletion  set
  X



         constant  boundary...?




GX



       constant  treewidth  zone
Approximate  F-­deletion  set
  X



         constant  boundary...?




GX



       constant  treewidth  zone
Approximate  F-­deletion  set
  X



         constant  boundary...?




GX



       constant  treewidth  zone
Approximate  F-­deletion  set
  X



         constant  boundary...?




GX



       constant  treewidth  zone
For  every  guess  we  have  a  protrusion
But  it  may  not  be  safe  to  reduce  them!
ëíê~íÉÖó=çìíäáåÉ
ë~ÑÉíó=ö=ëáòÉ=ö=íáãÉ
Suppose  the  protrusion  gives  us  a  way  of
         finding  irrelevant  edges.



      ë~ÑÉíó=ö=ëáòÉ=ö=íáãÉ
If  every  guess  declares  an  edge  to  be  irrelevant,
        then  it  is  safe  to  remove  it  from  G.



           ë~ÑÉíó=ö=ëáòÉ=ö=íáãÉ
If  every  guess  declares  an  edge  to  be  irrelevant,
             then  it  is  safe  to  remove  it  from  G.



                ë~ÑÉíó=ö=ëáòÉ=ö=íáãÉ

If  there  are  more  than  poly(k)  edges  incident  on  a  single  
 vertex,  then  one  of  them  is  not  relevant  to  any  guess.
Deleting  an  edge  never  increases  OPT.
Deleting  an  edge  never  increases  OPT.



         G
Deleting  an  edge  never  increases  OPT.



         G               G{e}
Deleting  an  edge  never  increases  OPT.



         G               G{e}
Deleting  an  edge  never  increases  OPT.



         G                 G{e}



  Determine  why  G  is  a  no-­instance,
      and  don’t  interfere  with  it.
G  does  not  have  a Vertex  Cover of  size 2
G  does  not  have  a Vertex  Cover of  size 2
G  does  not  have  a Vertex  Cover of  size 2
G  does  not  have  a Vertex  Cover of  size 2
G  does  not  have  a Vertex  Cover of  size 2
G  does  not  have  a Vertex  Cover of  size 2
G  does  not  have  a F-­deletion  Set of  size 2
G  does  not  have  a F-­deletion  Set of  size k
G  does  not  have  a F-­deletion  Set of  size k
       G  does  not  belong  to  [FDel]k
G  does  not  have  a F-­deletion  Set of  size k
       G  does  not  belong  to  [FDel]k


        But  [FDel]k  is  closed  under  
       minors,  and  hence  has  a  finite  
              obstruction  set  S.
G  does  not  have  a F-­deletion  Set of  size k
           G  does  not  belong  to  [FDel]k


            But  [FDel]k  is  closed  under  
           minors,  and  hence  has  a  finite  
                  obstruction  set  S.



S  “witnesses”  the  fact  that  G  is  a  NO  instance.  
Edges  not  involved  in  copies  of  S  are...  irrelevant!
We  don’t  know  the  obstruction  sets.
We  don’t  know  the  obstruction  sets.


Even  if  we  did,  minor  models  of  graphs  in  
       S  could  be  arbitrarily  large.
Approximate  F-­deletion  set


  X




GX




       constant  treewidth  zone
Approximate  F-­deletion  set


  X




GX




       constant  treewidth  zone
Approximate  F-­deletion  set


  X




                                      
GX




       constant  treewidth  zone
Approximate  F-­deletion  set


  X




                                      
GX




       constant  treewidth  zone
Approximate  F-­deletion  set


  X




                                         
GX




       constant  treewidth  zone
Before
      Approximate  F-­deletion  set


  X




                                              
GX




       constant  treewidth  zone
Before   After
      Approximate  F-­deletion  set


  X




                                              
GX




       constant  treewidth  zone
Before   After
      Approximate  F-­deletion  set


  X




GX




       constant  treewidth  zone
Before   After
      Approximate  F-­deletion  set


  X




GX




       constant  treewidth  zone
Before   After
      Approximate  F-­deletion  set


  X




GX




       constant  treewidth  zone
ë~ÑÉíó=ö=ëáòÉ=ö=íáãÉ
Avoiding  some  obstruction  to  membership  in  FDelk




   ë~ÑÉíó=ö=ëáòÉ=ö=íáãÉ
Avoiding  some  obstruction  to  membership  in  FDelk



Large  degree  implies  the  existence  of  at  least  one  irrelevant  edge




             ë~ÑÉíó=ö=ëáòÉ=ö=íáãÉ
Avoiding  some  obstruction  to  membership  in  FDelk



  Large  degree  implies  the  existence  of  at  least  one  irrelevant  edge



Use  near-­protrusions,  cost  vectors,  finite  index,  CMSO  expressibility.



               ë~ÑÉíó=ö=ëáòÉ=ö=íáãÉ
X
       Approximate  F-­deletion  set




GX




      constant  treewidth  zone:  tw=c
X
       Approximate  F-­deletion  set




GX




      constant  treewidth  zone:  tw=c
X
       Approximate  F-­deletion  set




                                                   Case  1

GX                                      There  is  a  (k+c+1)-­sized
                                             (u,v)-­separator.




      constant  treewidth  zone:  tw=c
X
       Approximate  F-­deletion  set




                                                   Case  1

GX                                      There  is  a  (k+c+1)-­sized
                                             (u,v)-­separator.




      constant  treewidth  zone:  tw=c
X
                            Approximate  F-­deletion  set




                                                                        Case  1

                   GX                                        There  is  a  (k+c+1)-­sized
                                                                  (u,v)-­separator.



bounded  by  poly(k)



                           constant  treewidth  zone:  tw=c
X
                            Approximate  F-­deletion  set




                                                                      Case  2

                   GX                                        There  is  a  (k+c+1)  flow
                                                                between  u  and  v.



bounded  by  poly(k)



                           constant  treewidth  zone:  tw=c
X
                            Approximate  F-­deletion  set




                                                                      Case  2

                   GX                                        There  is  a  (k+c+1)  flow
                                                                between  u  and  v.



bounded  by  poly(k)



                           constant  treewidth  zone:  tw=c
GS
                                                                    Case  2

                                                            There  is  a  (k+c+1)  flow
                                                              between  u  and  v.



bounded  by  poly(k)



                         constant  treewidth  zone:  tw=c
GS
                                                                    Case  2

                                                            There  is  a  (k+c+1)  flow
                                                              between  u  and  v.



bounded  by  poly(k)



                         constant  treewidth  zone:  tw=c
GS
                                                                    Case  2

                                                            There  is  a  (k+c+1)  flow
                                                              between  u  and  v.



bounded  by  poly(k)



                         constant  treewidth  zone:  tw=c
GS
                                                                    Case  2

                                                            There  is  a  (k+c+1)  flow
                                                              between  u  and  v.



bounded  by  poly(k)



                         constant  treewidth  zone:  tw=c
a  separator  of  size  (c+1)+k




                    GS
                                                                         Case  2

                                                                 There  is  a  (k+c+1)  flow
                                                                   between  u  and  v.



bounded  by  poly(k)



                              constant  treewidth  zone:  tw=c
Polynomial  Kernels  for Planar F-­deletion
Polynomial  Kernels  for Planar F-­deletion

  qÜÉ=`ÉåëçêÉÇ=aÉí~áäë
The  presence  of  disconnected  graphs  in  
F  opens  up  a  can  of  worms,  various  details  
        need  substantial  tweaking.
The  finite  obstructions  are  implied  by  
WQO  of  t-­boundaried  graphs  of  bounded  
treewidth  with  special  minor  operations.
Consequences  of  the  kernel.
Obstructions  to  [FDel]k  are  polynomially  
               bounded  in  k.
Polynomial  Kernels  for Planar F-­deletion
Polynomial  Kernels  for F-­deletion
Polynomial  Kernels  for F-­deletion

 qç=_É=`çåíáåìÉÇKKK
Daniel  will  answer  your  questions!
Daniel  will  answer  your  questions!

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