Web结构衍生聚类优化Web可访问性评价

Alexander Hambley, Y. Yeşilada, Markel Vigo, S. Harper
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引用次数: 2

摘要

由于时间、资源和模糊性的限制,Web可访问性评估是一个昂贵而复杂的过程。为了优化可访问性评估过程,我们的目标是通过使用具有统计代表性的页面来减少审计人员必须审查的页面数量,将数千个页面的站点减少为可管理的原型页面审查。我们的论文主要关注代表性,这是构成我们方法的六个建议指标之一,以解决我们在W3C网站可访问性一致性评估方法(WCAG-EM)中发现的局限性。这些包括评估范围,非概率抽样方法,以及在所选样本内的潜在偏差。特别是代表性,是评估抽样质量和覆盖范围的度量标准。为了衡量这一点,我们系统地评估了包含388个页面的网站的五种网页表示,包括标签、结构、DOM树、内容以及结构和内容的混合。我们的研究结果强调了在表征中包含结构成分的重要性。我们用同样的方法对另外三个500页的随机网站验证了我们的结论。作为一个排他性的属性,我们发现从web内容衍生的特征是次优的,并且可能导致质量较低,并且在优化的可访问性评估中存在更多不同的聚类。
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Web Structure Derived Clustering for Optimised Web Accessibility Evaluation
Web accessibility evaluation is a costly and complex process due to limited time, resources and ambiguity. To optimise the accessibility evaluation process, we aim to reduce the number of pages auditors must review by employing statistically representative pages, reducing a site of thousands of pages to a manageable review of archetypal pages. Our paper focuses on representativeness, one of six proposed metrics that form our methodology, to address the limitations we have identified with the W3C Website Accessibility Conformance Evaluation Methodology (WCAG-EM). These include the evaluative scope, the non-probabilistic sampling approach, and the potential for bias within the selected sample. Representativeness, in particular, is a metric to assess the quality and coverage of sampling. To measure this, we systematically evaluate five web page representations with a website of 388 pages, including tags, structure, the DOM tree, content, and a mixture of structure and content. Our findings highlight the importance of including structural components in representations. We validate our conclusions using the same methodology for three additional random sites of 500 pages. As an exclusive attribute, we find that features derived from web content are suboptimal and can lead to lower quality and more disparate clustering for optimised accessibility evaluation.
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