Datasets:
1. Title: The Monk's Problems | |
2. Sources: | |
(a) Donor: Sebastian Thrun | |
School of Computer Science | |
Carnegie Mellon University | |
Pittsburgh, PA 15213, USA | |
E-mail: thrun@cs.cmu.edu | |
(b) Date: October 1992 | |
3. Past Usage: | |
- See File: thrun.comparison.ps.Z | |
- Wnek, J., "Hypothesis-driven Constructive Induction," PhD dissertation, | |
School of Information Technology and Engineering, Reports of Machine | |
Learning and Inference Laboratory, MLI 93-2, Center for Artificial | |
Intelligence, George Mason University, March 1993. | |
- Wnek, J. and Michalski, R.S., "Comparing Symbolic and | |
Subsymbolic Learning: Three Studies," in Machine Learning: A | |
Multistrategy Approach, Vol. 4., R.S. Michalski and G. Tecuci (Eds.), | |
Morgan Kaufmann, San Mateo, CA, 1993. | |
4. Relevant Information: | |
The MONK's problem were the basis of a first international comparison | |
of learning algorithms. The result of this comparison is summarized in | |
"The MONK's Problems - A Performance Comparison of Different Learning | |
algorithms" by S.B. Thrun, J. Bala, E. Bloedorn, I. Bratko, B. | |
Cestnik, J. Cheng, K. De Jong, S. Dzeroski, S.E. Fahlman, D. Fisher, | |
R. Hamann, K. Kaufman, S. Keller, I. Kononenko, J. Kreuziger, R.S. | |
Michalski, T. Mitchell, P. Pachowicz, Y. Reich H. Vafaie, W. Van de | |
Welde, W. Wenzel, J. Wnek, and J. Zhang has been published as | |
Technical Report CS-CMU-91-197, Carnegie Mellon University in Dec. | |
1991. | |
One significant characteristic of this comparison is that it was | |
performed by a collection of researchers, each of whom was an advocate | |
of the technique they tested (often they were the creators of the | |
various methods). In this sense, the results are less biased than in | |
comparisons performed by a single person advocating a specific | |
learning method, and more accurately reflect the generalization | |
behavior of the learning techniques as applied by knowledgeable users. | |
There are three MONK's problems. The domains for all MONK's problems | |
are the same (described below). One of the MONK's problems has noise | |
added. For each problem, the domain has been partitioned into a train | |
and test set. | |
5. Number of Instances: 432 | |
6. Number of Attributes: 8 (including class attribute) | |
7. Attribute information: | |
1. class: 0, 1 | |
2. a1: 1, 2, 3 | |
3. a2: 1, 2, 3 | |
4. a3: 1, 2 | |
5. a4: 1, 2, 3 | |
6. a5: 1, 2, 3, 4 | |
7. a6: 1, 2 | |
8. Id: (A unique symbol for each instance) | |
8. Missing Attribute Values: None | |
9. Target Concepts associated to the MONK's problem: | |
MONK-1: (a1 = a2) or (a5 = 1) | |
MONK-2: EXACTLY TWO of {a1 = 1, a2 = 1, a3 = 1, a4 = 1, a5 = 1, a6 = 1} | |
MONK-3: (a5 = 3 and a4 = 1) or (a5 /= 4 and a2 /= 3) | |
(5% class noise added to the training set) | |