Two Approaches to Extract Logical Rules for Mushroom Edibility: Neural Networks and Genetic Algorithm
Project for ANU COMP4660/8420 (Bio-inspired Computing: Applications and Interfaces), Semester 1 2018.
By Yuanbo Han, 2018-05-31. See the project report here.
- Python 3.6.3
- numpy 1.14.3
- matplotlib 2.2.2
- pandas 0.22.0
- torch 0.4.0
- sklearn 0.19.1
- pydotplus 2.0.2
- graphviz 2.40.1
Note that the above are just versions during experiment, not the least requirements.
Mushroom Data Set/agaricus-lepiota.data.csv
Original source: UCI Machine Learning Repository
bpNN.py
decisionTree.py
displayWeight.py
GATree.py
load_data.py
Run bpNN.py
. It will read in the data, perform discretization, train a back-propagation neural network, and generate a file called "net_weights" which stores the weights in the model. To adjust parameters, see line 14~26. To change the network structure, see line 29~35.
Run displayWeight.py
. It will read "net_weights" file and print the network weights for attribute values.
Run GATree.py
. It will read in the data, perform Genetic Algorithm for feature selection, and generate a "tree.pdf" which is the diagram of the final Decision Tree. Control parameters can be adjusted in line 6~13.