This section describes main characteristics of the tae data set and its attributes:
General information
Teaching Assistant Evaluation data set |
Type | Classification | Origin | Real world |
Features | 5 | (Real / Integer / Nominal) | (0 / 5 / 0) |
Instances | 151 |
Classes | 3 |
Missing values? | No |
Attribute description
Attribute | Domain |
Native | [1, 2] |
Instructor | [1, 25] |
Course | [1, 26] |
Semester | [1, 2] |
Size | [3, 66] |
Class | {1, 2, 3} |
Additional information
The data consist of evaluations of teaching performance over three regular semesters and two summer semesters of 151 teaching assistant (TA) assignments at the Statistics Department of the University of Wisconsin-Madison. The scores were divided into 3 roughly equal-sized categories (low (1), medium (2), and high (3)) to form the class variable.
Attributes description:
1. Native -> whether of not the TA is a native English speaker: 1 = English speaker, 2 = non-English speaker.
2. Instructor -> course instructor (25 categories).
3. Course -> 26 categories.
4. Semester -> summer or regular semester: 1 = Summer, 2 = Regular.
5. Size -> class size (numerical).
In this section you can download some files related to the tae data set:
- The complete data set already formatted in KEEL format can be downloaded from
here.
- A copy of the data set already partitioned by means of a 10-folds cross validation procedure can be downloaded from here.
- A copy of the data set already partitioned by means of a 5-folds cross validation procedure can be downloaded from here.
- The header file associated to this data set can be downloaded from here.
- This is not a native data set from the KEEL project. It has been obtained from the UCI Machine Learning repository. The original page where the data set can be found is: http://archive.ics.uci.edu/ml/datasets/Teaching+Assistant+Evaluation.
|