Interactive mining with ordered and unordered attributes

Author:

Wang Weicheng1,Wong Raymond Chi-Wing1

Affiliation:

1. Hong Kong University of Science and Technology

Abstract

There are various queries proposed to assist users in finding their favorite tuples from a dataset with the help of user interaction. Specifically, they interact with a user by asking questions. Each question presents two tuples, which are selected from the dataset based on the user's answers to the previous questions, and asks the user to select the one s/he prefers. Following the user feedback, the user preference is learned implicitly, and the best tuple w.r.t. the learned preference is returned. However, existing queries only consider datasets with ordered attributes (e.g., price), where there exists a trivial order on the attribute values. In practice, a dataset can also be described by unordered attributes, where there is no consensus about the order of the attribute values. For example, the size of a laptop is an unordered attribute. One user might favor a large size because s/he could enjoy a large screen, while another user may prefer a small size for portability. In this paper, we study how to find a user's favorite tuple from the dataset that has both ordered and unordered attributes by interacting with the user. We study our problem progressively. First, we look into a special case in which the dataset is described by one ordered and one unordered attributes. We present algorithm DI that is asymptotically optimal in terms of the number of questions asked. Then, we dig into the general case in which the dataset has several ordered and unordered attributes. We propose two algorithms BS and EDI that have provable performance guarantees and perform well empirically. Experiments were conducted on synthetic and real datasets, showing that our algorithms outperform existing algorithms in the number of questions asked and the execution time. Under typical settings, our algorithms ask up to 10 times fewer questions and take several orders of magnitude less time than existing algorithms.

Publisher

Association for Computing Machinery (ACM)

Subject

General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development

Reference38 articles.

1. Wolf-Tilo Balke , Ulrich Güntzer , and Christoph Lofi . 2007. Eliciting Matters - Controlling Skyline Sizes by Incremental Integration of User Preferences . In Advances in Databases: Concepts, Systems and Applications . Springer , Berlin, Heidelberg , 551--562. Wolf-Tilo Balke, Ulrich Güntzer, and Christoph Lofi. 2007. Eliciting Matters - Controlling Skyline Sizes by Incremental Integration of User Preferences. In Advances in Databases: Concepts, Systems and Applications. Springer, Berlin, Heidelberg, 551--562.

2. Wolf-Tilo Balke Ulrich Güntzer and Christoph Lofi. 2007. User Interaction Support for Incremental Refinement of Preference-Based Queries. In Research Challenges in Information Science. 209--220. Wolf-Tilo Balke Ulrich Güntzer and Christoph Lofi. 2007. User Interaction Support for Incremental Refinement of Preference-Based Queries. In Research Challenges in Information Science. 209--220.

3. Domination in the Probabilistic World

4. Ilaria Bartolini , Paolo Ciaccia , and Florian Waas . 2001 . FeedbackBypass: A New Approach to Interactive Similarity Query Processing . In Proceedings of the 27th International Conference on Very Large Data Bases. Morgan Kaufmann Publishers Inc. , San Francisco, CA, USA, 201--210. Ilaria Bartolini, Paolo Ciaccia, and Florian Waas. 2001. FeedbackBypass: A New Approach to Interactive Similarity Query Processing. In Proceedings of the 27th International Conference on Very Large Data Bases. Morgan Kaufmann Publishers Inc., San Francisco, CA, USA, 201--210.

5. The Skyline operator

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