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A framework for merging and ranking of answers in DeepQA

机译:在DeepQA中合并和排名答案的框架

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The final stage in the IBM DeepQA pipeline involves ranking all candidate answers according to their evidence scores and judging the likelihood that each candidate answer is correct. In DeepQA, this is done using a machine learning framework that is phase-based, providing capabilities for manipulating the data and applying machine learning in successive applications. We show how this design can be used to implement solutions to particular challenges that arise in applying machine learning for evidence-based hypothesis evaluation. Our approach facilitates an agile development environment for DeepQA; evidence scoring strategies can be easily introduced, revised, and reconfigured without the need for error-prone manual effort to determine how to combine the various evidence scores. We describe the framework, explain the challenges, and evaluate the gain over a baseline machine learning approach.
机译:IBM DeepQA流程的最后阶段涉及根据所有候选答案的证据分数对它们进行排名,并判断每个候选答案正确的可能性。在DeepQA中,这是使用基于阶段的机器学习框架完成的,该框架提供了处理数据和在后续应用程序中应用机器学习的功能。我们将展示如何使用此设计来解决针对将机器学习应用于基于证据的假设评估中出现的特定挑战的解决方案。我们的方法为DeepQA提供了敏捷的开发环境;可以轻松地引入,修订和重新配置证据评分策略,而无需容易出错的人工来确定如何组合各种证据评分。我们描述了框架,解释了挑战,并评估了基准机器学习方法的收益。

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