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Genetic-based Synthetic Data
  Sets for the A l i f
  S t f th Analysis of
    Classifiers Behavior
 8th I t
     International Conference on Hybrid Intelligent Systems
            ti   lC f            H b id I t lli   tS t



              Núria Macià
          Albert Orriols-Puig
          Alb t O i l P i
       Ester Bernadó-Mansilla
 {nmacia,aorriols,esterb}@salle.url.edu

Grup de Recerca en Sistemes Intel·ligents
    Enginyeria i Arquitectura La Salle
        Universitat Ramon Llull
Motivation

                                    Knowledge
     Data Set                                        Model
                                    Extraction
     Real-world
                                         Learner
      problem
                                                       +
                                                   Prediction
   Necessity of synthetic data sets
      To evaluate real learners performance under
      controlled scenarios
   How to generate synthetic data sets?
      Data complexity (Ho & Basu, 2002)
      Length of the class boundary (Macià et al., 2008)

Objective:        Set of benchmark problems to analyze
                  learners behavior
          Overview and Future Research                          Slide 2
Outline
1.
1    Data complexity
2.   Synthetic data sets
3.   Design of GA
4.
4    Experiments and results
5.   Conclusions and further work




         Overview and Future Research   Slide 3
1. Data complexity
 Length of the class boundary
    Build minimum spanning tree (MST) connecting all
    the points regardless of class
    Count the number of edges joining
    opposite classes
          it l

 Two cases of many points in boundary:
    Very interleaved or random data
    Linearly separable problem with narrow margins




       Overview and Future Research                  Slide 4
2. Synthetic data sets
 Generation procedure
   Set the number of instances n, the number of
   attributes m and the length of the class boundary
              m,
   b.
   Generate n points di t ib t d randomly and b ild
   G        t    i t distributed     dl       d build
   the MST.

   Label the class of each
   instances




     Overview and Future Research                 Slide 5
2. Synthetic data sets
 Exhaustive search
   Labelings grow exponentially with the number of
   instances
 Heuristic search
   Demanded length of the class boundary is not
   always achieved
   No diverse solutions



                   Genetic algorithm
                   G   ti l     ith


     Overview and Future Research              Slide 6
3. Design of GA
 Knowledge representation
     k-ary string where the bit i stores the class label of
     the ith instance


 Data set i                             Individual i
 Att. 1 Att. 2 … Att. N Class
 0.4
 04     0.5
        05       0.4
                 04       0
 0.2    1.0      0.2      1
                                        011011
 0.5    0.3      0.4      1
 0.6    0.5      0.4      0
 0.7    0.1      1.0      1
 0.5    0.3      0.9      1




         Overview and Future Research                     Slide 7
3. Design of GA
 Genetic operators
   s-wise tournament selection
   Two-point crossover
   T       it
   Bit-wise mutation
 Fitness function
   fitnessi = bobj − bi




     Overview and Future Research   Slide 8
4. Experiment and results (I)
  Synthetic data set generation
    Different solutions < Solutions
       Population converge
       Pop lation con erge to the same sol tion
                                         solution
       {0100,1011} are equivalent individuals
    Intermediate complexity are obtained i early
    It     di t      l it        bt i d in    l
    generations




      Overview and Future Research                  Slide 9
4. Experiment and results (II)
  Analysis of classifiers behavior
    Three different paradigms: C4.5, Naïve Bayes, and
    SMO
    Similar accuracy rates with noticeable variability




      Overview and Future Research                  Slide 10
5. Conclusions
 The GA allows us to generate data sets with
 the demanded length of the class boundary




     Overview and Future Research        Slide 11
6. Further work
 Efficiency and scalability
   Move from simple GA to competent GA
 Capacity of satisfying multiple criteria
 C         f      f
   Multi-objective strategy
           j             gy
 Achieve structure of real-world problems
   Provide a set of benchmark problems




     Overview and Future Research           Slide 12
Genetic-based Synthetic Data
  Sets for the A l i f
  S t f th Analysis of
    Classifiers Behavior
 8th I t
     International Conference on Hybrid Intelligent Systems
            ti   lC f            H b id I t lli   tS t



              Núria Macià
          Albert Orriols-Puig
          Alb t O i l P i
       Ester Bernadó-Mansilla
 {nmacia,aorriols,esterb}@salle.url.edu

Grup de Recerca en Sistemes Intel·ligents
    Enginyeria i Arquitectura La Salle
        Universitat Ramon Llull

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HIS'2008: Genetic-based Synthetic Data Sets for the Analysis of Classifiers Behavior

  • 1. Genetic-based Synthetic Data Sets for the A l i f S t f th Analysis of Classifiers Behavior 8th I t International Conference on Hybrid Intelligent Systems ti lC f H b id I t lli tS t Núria Macià Albert Orriols-Puig Alb t O i l P i Ester Bernadó-Mansilla {nmacia,aorriols,esterb}@salle.url.edu Grup de Recerca en Sistemes Intel·ligents Enginyeria i Arquitectura La Salle Universitat Ramon Llull
  • 2. Motivation Knowledge Data Set Model Extraction Real-world Learner problem + Prediction Necessity of synthetic data sets To evaluate real learners performance under controlled scenarios How to generate synthetic data sets? Data complexity (Ho & Basu, 2002) Length of the class boundary (Macià et al., 2008) Objective: Set of benchmark problems to analyze learners behavior Overview and Future Research Slide 2
  • 3. Outline 1. 1 Data complexity 2. Synthetic data sets 3. Design of GA 4. 4 Experiments and results 5. Conclusions and further work Overview and Future Research Slide 3
  • 4. 1. Data complexity Length of the class boundary Build minimum spanning tree (MST) connecting all the points regardless of class Count the number of edges joining opposite classes it l Two cases of many points in boundary: Very interleaved or random data Linearly separable problem with narrow margins Overview and Future Research Slide 4
  • 5. 2. Synthetic data sets Generation procedure Set the number of instances n, the number of attributes m and the length of the class boundary m, b. Generate n points di t ib t d randomly and b ild G t i t distributed dl d build the MST. Label the class of each instances Overview and Future Research Slide 5
  • 6. 2. Synthetic data sets Exhaustive search Labelings grow exponentially with the number of instances Heuristic search Demanded length of the class boundary is not always achieved No diverse solutions Genetic algorithm G ti l ith Overview and Future Research Slide 6
  • 7. 3. Design of GA Knowledge representation k-ary string where the bit i stores the class label of the ith instance Data set i Individual i Att. 1 Att. 2 … Att. N Class 0.4 04 0.5 05 0.4 04 0 0.2 1.0 0.2 1 011011 0.5 0.3 0.4 1 0.6 0.5 0.4 0 0.7 0.1 1.0 1 0.5 0.3 0.9 1 Overview and Future Research Slide 7
  • 8. 3. Design of GA Genetic operators s-wise tournament selection Two-point crossover T it Bit-wise mutation Fitness function fitnessi = bobj − bi Overview and Future Research Slide 8
  • 9. 4. Experiment and results (I) Synthetic data set generation Different solutions < Solutions Population converge Pop lation con erge to the same sol tion solution {0100,1011} are equivalent individuals Intermediate complexity are obtained i early It di t l it bt i d in l generations Overview and Future Research Slide 9
  • 10. 4. Experiment and results (II) Analysis of classifiers behavior Three different paradigms: C4.5, Naïve Bayes, and SMO Similar accuracy rates with noticeable variability Overview and Future Research Slide 10
  • 11. 5. Conclusions The GA allows us to generate data sets with the demanded length of the class boundary Overview and Future Research Slide 11
  • 12. 6. Further work Efficiency and scalability Move from simple GA to competent GA Capacity of satisfying multiple criteria C f f Multi-objective strategy j gy Achieve structure of real-world problems Provide a set of benchmark problems Overview and Future Research Slide 12
  • 13. Genetic-based Synthetic Data Sets for the A l i f S t f th Analysis of Classifiers Behavior 8th I t International Conference on Hybrid Intelligent Systems ti lC f H b id I t lli tS t Núria Macià Albert Orriols-Puig Alb t O i l P i Ester Bernadó-Mansilla {nmacia,aorriols,esterb}@salle.url.edu Grup de Recerca en Sistemes Intel·ligents Enginyeria i Arquitectura La Salle Universitat Ramon Llull