Machine learning algorithms often produce models considered as complex black-box models by both end users and developers. They fail to explain the model in terms of the domain they are designed for. The proposed Iterative Visual Logical Classifier (IVLC) is an interpretable machine learning algorithm that allows end users to design a model and classify data with more confidence and without having to compromise on the accuracy. Such technique is especially helpful when dealing with sensitive and crucial data like cancer data in the medical domain with high cost of errors. With the help of the proposed interactive and lossless multidimensional visualization, end users can identify the pattern in the data based on which they can make explainable decisions. Such options would not be possible in black box machine learning methodologies. The interpretable IVLC algorithm is supported by the Interactive Shifted Paired Coordinates Software System (SPCVis). It is a lossless multidimensional data visualization system with user interactive features. The interactive approach provides flexibility to the end user to perform data classification as self-service without having to rely on a machine learning expert. Interactive pattern discovery becomes challenging while dealing with large data sets with hundreds of dimensions/features. To overcome this problem, this chapter proposes an automated classification approach combined with new Coordinate Order Optimizer (COO) algorithm and a Genetic algorithm. The COO algorithm automatically generates the coordinate pair sequences that best represent the data separation and the genetic algorithm helps optimizing the proposed IVLC algorithm by automatically generating the areas for data classification. The feasibility of the approach is shown by experiments on benchmark datasets covering both interactive and automated processes used for data classification.
翻译:机器学习算法往往产生终端用户和开发者认为是复杂的黑箱模型的模型。 他们无法从设计时所设计的领域解释模型。 拟议的迭代视觉逻辑分类器(IVLC)是一种可解释的机器学习算法,使终端用户能够设计模型,对数据进行更加自信的分类,而不必在准确性方面有所妥协。 这种技术在处理医疗领域癌症数据等敏感和关键数据时特别有用,如癌症数据,而且错误成本高。在拟议的互动式和无损失的多层面互动可视化帮助下,终端用户可以确定他们据以做出可解释决定的数据的模型。 在黑盒机器学习方法中不可能有这些选项。 解释性的IVLLC算法得到互动的用户设计, 并且无需依赖机器学习专家来进行自我服务分类。 在与大型数据组进行定量/成本和成本分析时, 以黑盒机机机机机计算法的方式进行互动模式的分类。 要克服这个自动的基因分析算算算法, 将数据序列与自动地算法进行数据分析, 将自动地算法进行数据分析。