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The Origin of Diversity
    Thinking with Chaotic Walk


                   Takashi Iba
            Ph.D. in Media and Governance
   Associate Professor, Faculty of Policy Management
                 Keio University, Japan
                   iba@sfc.keio.ac.jp


              Kazeto Shimonishi
         Interdisciplinary Information Studies
            The University of Tokyo, Japan
Diverse complex patterns can emerge
even in the universe governed by deterministic laws.
xn+1 = a xn ( 1 - xn )
Logistic Map
  xn+1 = a xn ( 1 - xn )
 a simple population growth model (non-overlapping generations)

     xn ... population (capacity)         0 < xn < 1 (variable)
     a ... a rate of growth               0 < µ < 4 (constant)


         x0 = an initial value

 n=0     x1 = a x0 ( 1 - x0 )

 n=1     x2 = a x1 ( 1 - x1 )
                                 May, R. M. Biological populations with nonoverlapping generations:
                                 stable points, stable cycles, and chaos. Science 186, 645–647 (1974).
 n=2     x3 = a x2 ( 1 - x2 )    May, R. M. Simple mathematical models with very complicated
                                 dynamics. Nature 261, 459–467 (1976).
Chaotic Walk




     A chaotic walker who walk and turns around at the
     angle calculated by the logistic map function.
Chaotic Walk
                   Plotting the dots on the two-dimensional space,
                   as follows.

                   θn = 2πxn                         xn+1 = a xn ( 1 - xn )
               s
    fo otprint
              s
     of chao       0. Assigning a starting point and an initial direction.

                   1. Calculating next value of x and then θ.
                   2. Turning around at θ angle.
                   3. Moving ahead a distance L.
                   4. Drawing a dot (small circle).
                   5. Repeat from step 1.

                   The trail left by such a walker is investigated.
                   K. Shimonishi & T. Iba, "Visualizing Footprints of Chaos", 3rd International Nonlinear
                   Sciences Conference (INSC2008), 2008
                   K. Shimonishi, J. Hirose & T. Iba, "The Footprints of Chaos: A Novel Method and
                   Demonstration for Generating Various Patterns from Chaos", SIGGRAPH2008, 2008
xn+1 = a xn ( 1 - xn )
The behavior depends on the value of control parameter a.

                                           The system converges to the fixed point.
        1                                                 1                                                                      1

       0.8                                               0.8                                                                    0.8

       0.6                                               0.6                                                                    0.6
   x                                                 x                                                                      x
       0.4                                               0.4                                                                    0.4

       0.2                                               0.2                                                                    0.2

        0                                                 0                                                                      0
             0   20   40       60     80       100             0   20      40                 60        80        100                 0        20         40         60      80       100
                           n                                                        n                                                                          n

                      0  <  a  <  1                                     1  <  a  <  2                                                2  <  a  <  3

                                                                                                                                                                                                              a
   0                                       1                                                   2                                                     3                       3.56...                 4

                                                                                                                                3  <  a  <  1+    6                                1+    6  <  a  <  4
                                                                                     1                                                                              1

                                                                                    0.8                                                                            0.8

                                                                                    0.6                                                                            0.6
                                                                                x                                                                              x
                                                                                    0.4                                                                            0.4

                                                                                    0.2                                                                            0.2

                                                                                     0                                                                              0
                                                                                          0        20        40                  60       80        100                  0    20       40       60       80   100
                                                                                                                        n                                                                   n




                                                                                     The system oscillates.                                                              The system exhibits chaos.
xn+1 = a xn ( 1 - xn )                                                        θn = 2πxn

                                                                                           Chaotic Walk
0  <  a  <  1                                    1
               Case  1
                                                0.8
      1

     0.8       0  <  a  <  1                              The value of θ converges to
     0.6
               It  converges  to          x
                                                0.6
                                                          θ* = 0.
 x
     0.4

     0.2
               zero  state.                     0.4
                                                          The trail represents a line
      0
           0      20   40       60   80   100
                                                0.2
                                                          that goes straight ahead.
                            n
                                                 0
                                                      0    20    40       60   80   100
                                                                      n
xn+1 = a xn ( 1 - xn )                                                                            θn = 2πxn
                                                                                                                        Chaotic Walk
    1  <  a  <  2
       Case  2                                                1



           1  <  a  <  2
            1                                             0.8
                                                                           The value of θ converges to
                                                                           the fixed value.
          0.8
                                                          0.6
      x
           It  converges  to
          0.6
                                                    x
           a  nonzero  state.
          0.4
                                                          0.4
                                                                           The trail is on a circle where
          0.2

            0
                0   20   40       60       80
                                                          0.2
                                                        100
                                                                           the turn-angle is fixed.
                              n

                                                              0
                                                1                 0          20        40        60        80     100
Case  3
    2  <  a  <  3                                                                           n

                                           0.8
2  <  a  <  3
           1

          0.8                              0.6
                                                                           The value of θ converges to
It    oscillates  at  
          0.6                          x                                   the fixed value.
the  beginning,  
      x
          0.4                              0.4
                                                                           The trail is on a circle where
but  converges  to
          0.2

                                           0.2
                                                                           the turn-angle is fixed.
a  nonzero  state.
           0
                0   20   40       60       80           100
                              n

                                                0
                                                    0                 20          40        60        80        100
                                                                                       n
xn+1 = a xn ( 1 - xn )                                                             θn = 2πxn

                                                                                                 Chaotic Walk
3  <  a  <  1+    6
                                                    1
               Case  4
      1
                                                   0.8       The value of θ oscillates on
     0.8
               3  <  a  <  1+    6                 0.6       successive iterations.
     0.6
 x
               It    oscillates.               x
                                                             The trail represents multiple
     0.4
                                                   0.4
     0.2

      0                                            0.2       circles.
           0    20    40       60   80   100
                           n

                                                    0
                                                         0      20    40       60     80   100
                                                                           n
xn+1 = a xn ( 1 - xn )                                              θn = 2πxn

    1+    6  <  a  <  4                                                             Chaotic Walk
     Case  5                                1

                                          0.8
     1+    6  <  a  <  4
     1

    0.8
                                                    θ takes various values.
                                          0.6

x
      It    shows  chaotic
    0.6                               x
      behaviors.
    0.4                                   0.4
                                                    The trail represents complex
    0.2

     0
                                          0.2       pattern.
          0   20   40       60   80   100
                        n
                                            0
                                                0   20    40       60   80    100
                                                               n
xn+1 = a xn ( 1 - xn )
The behavior depends on the value of control parameter a.




                                                                  a
0                                  1                          2




                                                                  a
2                                  3                3.56...   4
Not so interesting...




  How these interesting
patterns can be generated?

           w   ?
        Ho
chaos + finitude
finitude

a finite state or quality.
           - Random House Dictionary,


the quality or condition of being finite.
           - The American Heritage Dictionary of the English Language


From finite + -titude, from Latin fīnītus + -dō

                 (having been limited or bounded)     (signifying a noun of state)
finitude
 We introduce the parameter for finitude, which controls the
number of possible states in the target system.                            d
 d represents that the value of x is rounded off to d decimal places
at every time step.
                                        xn                          xn+1
                                       0.1       0.36               0.4
                          d =1         0.2       0.64               0.6
                                       0.3       0.84               0.8
                                             f          round-off

 •In principle, the infinite number of possible states is required for
representing chaos in strict sense.
 •A system consisting of the finite number of possible states
eventually exhibits periodic cycle.
 •To tune this parameter means to vary the degree of chaotic behavior.
•A system consisting of the finite number of possible states
eventually exhibits periodic cycle.
 •To tune this parameter means to vary the degree of chaotic behavior.

       d =1                        d =8                           d =16




 regular                                                               irregular

                    all patterns are generated with a =3.76 (in the chaotic regime)
d =1

  d =2

  d =3

  d =4

  d =5

  d =6

  d =7


The patterns generated by chaotic walks with the logistic map for
the finitude parameter d varying from 1 to 7 in the chaotic regime.
The trails of 10 periodic cycles in the case d = 1.
The trails of 10 periodic cycles in the case d = 2.
The trails of 10 periodic cycles in the case d = 3.
The trails of 10 periodic cycles in the case d = 4.
The trails of 10 periodic cycles in the case d = 5.
The trails of 10 periodic cycles in the case d = 6.
The trails of 10 periodic cycles in the case d = 7.
The trails of 10 periodic cycles in the case d = 8.
Average lengths of periodic cycle of attractors against each
values of a and d




The average length of attractor
increases exponentially as the
finitude parameter d increases.
Diversity and Robustness of Patterns

diversification of generated
patterns by varying the
finitude parameter d.                  The box represents
                                       the region that has
                                       completely same
                                       types of attractors.


As the number of possible
states increases,
- the diversity increases
- the robustness decreases

The finitude parameter
controls the degree of
diversity and robustness
of order!
Implication 1




                the origin of diversity
(Theoretical) Hypothesis about the origin of diversity

     how to generate and climb up the ladder of diversity in a
 deterministic way without random mutation and natural selection.
    A system starts with small number of possible states, and then
 increases the possible states, consequently increases their diversity.




  Diversification can occur just by
  changing the number of possible states.
This is just a hypothesis, however it seems to be plausible.

    •In the primitive stage of evolution, it must be quite difficult for
   the system to maintain a lot of possible states.
       •It is quite difficult to memorize detailed information.
       •Therefore, starting with small number of possible states is reasonable.
    •Also, it is probable that the system does not have sensitivity
   against the parameter.
       •It must be difficult to keep the parameter value for calculation with a
      high degree of precision.
    •In the further stage of evolution, the system would be able to
   afford to have larger number of possible states.
       •As the number of possible states increases, the system decreases the
      robustness to the parameter value.

 Thus, the diversification of primitive forms would be explained in
a deterministic way only with the combination of deterministic
chaos and finitude.
Implication 2




                chaotic walk
The parameter for tuning the finitude
                          would be
     another hidden control parameter of complex systems

               d =1              d =8                 d =16




                                                          irregular
     regular                      d
The parameter for finitude controls the number of possible states,
and, as a result, it controls the system’s behavior.

More practically, it may provide a new way of understanding a dramatic
change of behaviors in phenomena that we have considered as random walk.
Diverse complex patterns can emerge
even in the universe governed by deterministic laws.
Diverse complex patterns can emerge
even in the universe governed by deterministic laws.


               with the combination of


        Chaos + Finitude
Some More Information ...
Get and Try!
ChaoticWalker
A New Vehicle for Exploring Patterns Hidden in Chaos




http://www.chaoticwalk.org/
Get and Feel!
The Chaos Book
New Explorations for Order Hidden in Chaos
Come and Talk!
Today’s Poster Session




    Chaos + Finitude




[Poster 70]
"Hidden Order in Chaos: The
Network-Analysis Approach
To Dynamical Systems"
(Takashi Iba)
The Origin of Diversity
    Thinking with Chaotic Walk



         http://www.chaoticwalk.org/


                   Takashi Iba
            Ph.D. in Media and Governance
   Associate Professor, Faculty of Policy Management
                 Keio University, Japan
                   iba@sfc.keio.ac.jp


               Kazeto Shimonishi
          Interdisciplinary Information Studies
             The University of Tokyo, Japan

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The Origin of Diversity - Thinking with Chaotic Walk

  • 1. The Origin of Diversity Thinking with Chaotic Walk Takashi Iba Ph.D. in Media and Governance Associate Professor, Faculty of Policy Management Keio University, Japan iba@sfc.keio.ac.jp Kazeto Shimonishi Interdisciplinary Information Studies The University of Tokyo, Japan
  • 2. Diverse complex patterns can emerge even in the universe governed by deterministic laws.
  • 3. xn+1 = a xn ( 1 - xn )
  • 4. Logistic Map xn+1 = a xn ( 1 - xn ) a simple population growth model (non-overlapping generations) xn ... population (capacity) 0 < xn < 1 (variable) a ... a rate of growth 0 < µ < 4 (constant) x0 = an initial value n=0 x1 = a x0 ( 1 - x0 ) n=1 x2 = a x1 ( 1 - x1 ) May, R. M. Biological populations with nonoverlapping generations: stable points, stable cycles, and chaos. Science 186, 645–647 (1974). n=2 x3 = a x2 ( 1 - x2 ) May, R. M. Simple mathematical models with very complicated dynamics. Nature 261, 459–467 (1976).
  • 5. Chaotic Walk A chaotic walker who walk and turns around at the angle calculated by the logistic map function.
  • 6. Chaotic Walk Plotting the dots on the two-dimensional space, as follows. θn = 2πxn xn+1 = a xn ( 1 - xn ) s fo otprint s of chao 0. Assigning a starting point and an initial direction. 1. Calculating next value of x and then θ. 2. Turning around at θ angle. 3. Moving ahead a distance L. 4. Drawing a dot (small circle). 5. Repeat from step 1. The trail left by such a walker is investigated. K. Shimonishi & T. Iba, "Visualizing Footprints of Chaos", 3rd International Nonlinear Sciences Conference (INSC2008), 2008 K. Shimonishi, J. Hirose & T. Iba, "The Footprints of Chaos: A Novel Method and Demonstration for Generating Various Patterns from Chaos", SIGGRAPH2008, 2008
  • 7. xn+1 = a xn ( 1 - xn ) The behavior depends on the value of control parameter a. The system converges to the fixed point. 1 1 1 0.8 0.8 0.8 0.6 0.6 0.6 x x x 0.4 0.4 0.4 0.2 0.2 0.2 0 0 0 0 20 40 60 80 100 0 20 40 60 80 100 0 20 40 60 80 100 n n n 0  <  a  <  1 1  <  a  <  2 2  <  a  <  3 a 0 1 2 3 3.56... 4 3  <  a  <  1+    6 1+    6  <  a  <  4 1 1 0.8 0.8 0.6 0.6 x x 0.4 0.4 0.2 0.2 0 0 0 20 40 60 80 100 0 20 40 60 80 100 n n The system oscillates. The system exhibits chaos.
  • 8. xn+1 = a xn ( 1 - xn ) θn = 2πxn Chaotic Walk 0  <  a  <  1 1 Case  1 0.8 1 0.8 0  <  a  <  1 The value of θ converges to 0.6 It  converges  to x 0.6 θ* = 0. x 0.4 0.2 zero  state. 0.4 The trail represents a line 0 0 20 40 60 80 100 0.2 that goes straight ahead. n 0 0 20 40 60 80 100 n
  • 9. xn+1 = a xn ( 1 - xn ) θn = 2πxn Chaotic Walk 1  <  a  <  2 Case  2 1 1  <  a  <  2 1 0.8 The value of θ converges to the fixed value. 0.8 0.6 x It  converges  to 0.6 x a  nonzero  state. 0.4 0.4 The trail is on a circle where 0.2 0 0 20 40 60 80 0.2 100 the turn-angle is fixed. n 0 1 0 20 40 60 80 100 Case  3 2  <  a  <  3 n 0.8 2  <  a  <  3 1 0.8 0.6 The value of θ converges to It    oscillates  at   0.6 x the fixed value. the  beginning,   x 0.4 0.4 The trail is on a circle where but  converges  to 0.2 0.2 the turn-angle is fixed. a  nonzero  state. 0 0 20 40 60 80 100 n 0 0 20 40 60 80 100 n
  • 10. xn+1 = a xn ( 1 - xn ) θn = 2πxn Chaotic Walk 3  <  a  <  1+    6 1 Case  4 1 0.8 The value of θ oscillates on 0.8 3  <  a  <  1+    6 0.6 successive iterations. 0.6 x It    oscillates. x The trail represents multiple 0.4 0.4 0.2 0 0.2 circles. 0 20 40 60 80 100 n 0 0 20 40 60 80 100 n
  • 11. xn+1 = a xn ( 1 - xn ) θn = 2πxn 1+    6  <  a  <  4 Chaotic Walk Case  5 1 0.8 1+    6  <  a  <  4 1 0.8 θ takes various values. 0.6 x It    shows  chaotic 0.6 x behaviors. 0.4 0.4 The trail represents complex 0.2 0 0.2 pattern. 0 20 40 60 80 100 n 0 0 20 40 60 80 100 n
  • 12. xn+1 = a xn ( 1 - xn ) The behavior depends on the value of control parameter a. a 0 1 2 a 2 3 3.56... 4
  • 13. Not so interesting... How these interesting patterns can be generated? w ? Ho
  • 15. finitude a finite state or quality. - Random House Dictionary, the quality or condition of being finite. - The American Heritage Dictionary of the English Language From finite + -titude, from Latin fīnītus + -dō (having been limited or bounded) (signifying a noun of state)
  • 16. finitude We introduce the parameter for finitude, which controls the number of possible states in the target system. d d represents that the value of x is rounded off to d decimal places at every time step. xn xn+1 0.1 0.36 0.4 d =1 0.2 0.64 0.6 0.3 0.84 0.8 f round-off •In principle, the infinite number of possible states is required for representing chaos in strict sense. •A system consisting of the finite number of possible states eventually exhibits periodic cycle. •To tune this parameter means to vary the degree of chaotic behavior.
  • 17. •A system consisting of the finite number of possible states eventually exhibits periodic cycle. •To tune this parameter means to vary the degree of chaotic behavior. d =1 d =8 d =16 regular irregular all patterns are generated with a =3.76 (in the chaotic regime)
  • 18. d =1 d =2 d =3 d =4 d =5 d =6 d =7 The patterns generated by chaotic walks with the logistic map for the finitude parameter d varying from 1 to 7 in the chaotic regime.
  • 19. The trails of 10 periodic cycles in the case d = 1.
  • 20. The trails of 10 periodic cycles in the case d = 2.
  • 21. The trails of 10 periodic cycles in the case d = 3.
  • 22. The trails of 10 periodic cycles in the case d = 4.
  • 23. The trails of 10 periodic cycles in the case d = 5.
  • 24. The trails of 10 periodic cycles in the case d = 6.
  • 25. The trails of 10 periodic cycles in the case d = 7.
  • 26. The trails of 10 periodic cycles in the case d = 8.
  • 27. Average lengths of periodic cycle of attractors against each values of a and d The average length of attractor increases exponentially as the finitude parameter d increases.
  • 28. Diversity and Robustness of Patterns diversification of generated patterns by varying the finitude parameter d. The box represents the region that has completely same types of attractors. As the number of possible states increases, - the diversity increases - the robustness decreases The finitude parameter controls the degree of diversity and robustness of order!
  • 29. Implication 1 the origin of diversity
  • 30. (Theoretical) Hypothesis about the origin of diversity how to generate and climb up the ladder of diversity in a deterministic way without random mutation and natural selection. A system starts with small number of possible states, and then increases the possible states, consequently increases their diversity. Diversification can occur just by changing the number of possible states.
  • 31. This is just a hypothesis, however it seems to be plausible. •In the primitive stage of evolution, it must be quite difficult for the system to maintain a lot of possible states. •It is quite difficult to memorize detailed information. •Therefore, starting with small number of possible states is reasonable. •Also, it is probable that the system does not have sensitivity against the parameter. •It must be difficult to keep the parameter value for calculation with a high degree of precision. •In the further stage of evolution, the system would be able to afford to have larger number of possible states. •As the number of possible states increases, the system decreases the robustness to the parameter value. Thus, the diversification of primitive forms would be explained in a deterministic way only with the combination of deterministic chaos and finitude.
  • 32. Implication 2 chaotic walk
  • 33. The parameter for tuning the finitude would be another hidden control parameter of complex systems d =1 d =8 d =16 irregular regular d The parameter for finitude controls the number of possible states, and, as a result, it controls the system’s behavior. More practically, it may provide a new way of understanding a dramatic change of behaviors in phenomena that we have considered as random walk.
  • 34. Diverse complex patterns can emerge even in the universe governed by deterministic laws.
  • 35. Diverse complex patterns can emerge even in the universe governed by deterministic laws. with the combination of Chaos + Finitude
  • 37. Get and Try! ChaoticWalker A New Vehicle for Exploring Patterns Hidden in Chaos http://www.chaoticwalk.org/
  • 38. Get and Feel! The Chaos Book New Explorations for Order Hidden in Chaos
  • 39. Come and Talk! Today’s Poster Session Chaos + Finitude [Poster 70] "Hidden Order in Chaos: The Network-Analysis Approach To Dynamical Systems" (Takashi Iba)
  • 40. The Origin of Diversity Thinking with Chaotic Walk http://www.chaoticwalk.org/ Takashi Iba Ph.D. in Media and Governance Associate Professor, Faculty of Policy Management Keio University, Japan iba@sfc.keio.ac.jp Kazeto Shimonishi Interdisciplinary Information Studies The University of Tokyo, Japan