facet value
Learn How Amazon SageMaker Clarify Helps Detect Bias
Bias detection in data and model outcomes is a fundamental requirement for building responsible artificial intelligence (AI) and machine learning (ML) models. Unfortunately, detecting bias isn't an easy task for the vast majority of practitioners due to the large number of ways in which it can be measured and different factors that can contribute to a biased outcome. For instance, an imbalanced sampling of the training data may result in a model that is less accurate for certain subsets of the data. Bias may also be introduced by the ML algorithm itself--even with a well-balanced training dataset, the outcomes might favor certain subsets of the data as compared to the others. To detect bias, you must have a thorough understanding of different types of bias and the corresponding bias metrics. For example, at the time of this writing, Amazon SageMaker Clarify offers 21 different metrics to choose from.
Intersectionality Goes Analytical: Taming Combinatorial Explosion Through Type Abstraction
Burnett, Margaret, Erwig, Martin, Fallatah, Abrar, Bogart, Christopher, Sarma, Anita
HCI researchers' and practitioners' awareness of intersectionality has been expanding, producing knowledge, recommendations, and prototypes for supporting intersectional populations. However, doing intersectional HCI work is uniquely expensive: it leads to a combinatorial explosion of empirical work (expense 1), and little of the work on one intersectional population can be leveraged to serve another (expense 2). In this paper, we explain how representations employed by certain analytical design methods correspond to type abstractions, and use that correspondence to identify a (de)compositional model in which a population's diverse identity properties can be joined and split. We formally prove the model's correctness, and show how it enables HCI designers to harness existing analytical HCI methods for use on new intersectional populations of interest. We illustrate through four design use-cases, how the model can reduce the amount of expense 1 and enable designers to leverage prior work to new intersectional populations, addressing expense 2.
- North America > United States > Hawaii > Honolulu County > Honolulu (0.04)
- Europe > Spain > Galicia > Madrid (0.04)
- Asia > India (0.04)
- (20 more...)
- Government (0.67)
- Health & Medicine > Therapeutic Area (0.46)
- Education > Curriculum (0.46)
- Law > Civil Rights & Constitutional Law (0.46)
Multi-Select Faceted Navigation Based on Minimum Description Length Principle
He, Chao (Chinese Academy of Sciences) | Cheng, Xueqi (Chinese Academy of Sciences) | Guo, Jiafeng (Chinese Academy of Sciences) | Shen, Huawei (Chinese Academy of Sciences)
Faceted navigation can effectively reduce user efforts of reaching targeted resources in databases, by suggesting dynamic facet values for iterative query refinement. A key issue is minimizing the navigation cost in a user query session. Conventional navigation scheme assumes that at each step, users select only one suggested value to figure out resources containing it. To make faceted navigation more flexible and effective, this paper introduces a multi-select scheme where multiple suggested values can be selected at one step, and a selected value can be used to either retain or exclude the resources containing it. Previous algorithms for cost-driven value suggestion can hardly work well under our navigation scheme. Therefore, we propose to optimize the navigation cost using the Minimum Description Length principle, which can well balance the number of navigation steps and the number of suggested values per step under our new scheme. An emperical study demonstrates that our approach is more cost-saving and efficient than state-of-the-art approaches.
- Workflow (0.49)
- Research Report > Promising Solution (0.34)