面向知识抽取的众包人力计算系统优化模型与算法

F. Enache, V. Greu, Petrica Ciotirnae, F. Popescu
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引用次数: 0

摘要

本文讨论的是数据泛滥的实际背景,在这种背景下,提取更多知识的需求和前提都在增加,同时我们对性能的期望也在增加。此外,通过机器学习(ML)、深度学习(DL)或认知学习(CL)来提高人工智能(AI)的性能/潜力,并在必要时加入人类的贡献,是一个重要而有前途的研究领域。因此,我们的模型,算法(ALG1;ALG2)和软件程序为实现和优化基于众包的工作流提供了有用的新工具,当在人类计算系统中利用人的潜力时。我们的目标是提高人工智能的质量,为每个人工智能任务添加多个人工输出,并利用学习规则扩展到更大的任务集。这样,这样的混合系统可以面向更多的知识提取,通过将图像/字幕/标签泛化到更复杂的任务,如提供基本内容或问题回答。我们的工具包括对工人和任务配置文件进行排序的功能,这将支持知识提取的主要原始过程,但也支持推理元素,通过少量的学习数据(关于工人技能和任务效率)转移到AI/ML/DL/CL,然后可以用于处理更大量的类似数据。结果表明,采用渐进式优化,在可变(渐进式)集和潜在(技能/数量)工人中构建数据/任务,既有效又高效,允许灵活控制系统和工作流,以匹配任务复杂性/难度/数量的多样性,并利用知识提取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model and Algorithms for Optimizing a Human Computing System Oriented to Knowledge Extraction by Use of Crowdsourcing
The paper is addressing the actual context of Data Deluge, where the need and also premises to extract more knowledge are increasing, along with the increase of our expectations about performances. Besides, improving artificial intelligence (AI), by machine learning (ML), deep learning (DL) or cognitive learning (CL) performance/potential, when adding human contributions where necessary, is an important and promising research area. Consequently, our model, algorithms (ALG1; ALG2) and soft programs provide useful new instruments for implementing and optimizing the workflow based on crowdsourcing, when using human potential in a human computing system. We aim to increase AI quality adding multiple human outputs for every AI task and leveraging learning rules to be then extended to larger sets of tasks. This way, such hybrid system could be oriented to more knowledge extraction, by the generalization of images/ captions/labels toward more complex tasks, like providing content essential or question answering. Our instruments include features of ranking workers and tasks profiles, which will support the main original process of knowledge extraction, but also the inference elements, by small amounts of learning data (regarding the workers skills and tasks efficiency) to be transferred to AI/ML/DL/CL, which then could be used for processing larger volumes of similar data. Among the results conclusions is that using progressive optimization, structuring the data/tasks in variable (progressive) sets and potential (skill/number) of workers, is both efficacious and efficient, allowing a flexible control of the system and workflow for matching a diversity of tasks complexity/ difficulty/volume and leveraging knowledge extraction.
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