Development of Judgment Classification Models using Machine Learning

Shashank Ganti, Mantha Anirudh
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Abstract

With the world becoming more and more reliant on technology, we are transitioning from a society that values rational evaluation over intuitive thinking to one in which both of those methods coexist. AI devices rely solely on rational evaluation and machine learning allows us to focus on intuition. The task of intelligence is to deduce which method should be relied upon when solving various problems via the establishment of realistic judgments, according to what kind it identifies as being best for that particular problem. However, human judgments cannot simply be quantitatively compared and ranked by a computer according to conditions set by algorithms because certain difficult-to-measure criteria are not easily passable through algorithm systems such as ethics and common sense. In this research, the authors focus on developing judgment classification models using random forest and support vector machine. The authors attempt to test the effectiveness of sentiment proportions as features in judgment classification models.
利用机器学习开发判断分类模型
随着世界变得越来越依赖技术,我们正在从一个重视理性评估而不是直觉思维的社会过渡到一个两种方法并存的社会。人工智能设备完全依靠理性评估,机器学习让我们专注于直觉。智能的任务是根据它认为最适合解决特定问题的方法,通过建立现实判断,推断出在解决各种问题时应该依赖哪种方法。然而,人类的判断不能简单地由计算机根据算法设定的条件进行定量比较和排名,因为某些难以衡量的标准不容易通过伦理和常识等算法系统。在本研究中,作者着重于利用随机森林和支持向量机开发判断分类模型。作者试图测试情感比例作为判断分类模型特征的有效性。
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