使用机器学习构建估计预测

N. Santhosh, V. Gopalakrishnan, D. Rajkumar
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引用次数: 0

摘要

现在,每个人都希望有一个适合他们生活方式的房子,并根据他们的要求提供便利。建筑成本不断变化,这表明成本经常被夸大。在预测建筑成本时,必须考虑许多因素,例如,面积、房间数量、覆盖面积、房产的历史以及其他基本的社区便利设施。本文将CatBoost算法与机器人过程自动化相结合,实现信息的连续提取。机械过程自动化包括利用编程机器人来实现信息提取任务的自动化,而利用机器学习算法来预测数据集的构建成本。机器学习与洞察力密切相关,后者的重点是在pc的帮助下做出预测。机器学习有各种各样的用途,例如,筛选信息,在这些领域,培养传统的计算方法来成功地完成任务是具有挑战性的。机器学习算法完全建立在信息的基础上,是正常计算的高级版本。它允许程序自然地从人们提供的信息中获取信息,从而使程序“更加智能”。该算法主要分为两个阶段:训练阶段和测试阶段。总的来说,有三种类型的计算基本上是利用信息,如监督,无监督和强化学习算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building Estimation Prediction Using Machine Learning
Nowdays, everybody hopes for a house that suits their way of life and gives conveniences as per their requirements. Building costs continue to change often which demonstrates that costs are frequently overstated. There are many elements that must be thought about at anticipating building costs, for example, area, number of rooms, cover region, how old the property is, and other fundamental neighborhood conveniences. In this paper, CatBoost algorithm alongside Robotic Process Automation are involved for continuous information extraction. Mechanical Process Automation includes the utilization of programming robots to robotize the assignments of information extraction while machine learning algorithm is utilized to anticipate building costs concerning the dataset. Machine Learning is firmly connected with insights, which focus on making forecasts with the help of PCs. There is an assortment of uses of Machine Learning, for example, sifting of messages, where it is challenging to foster a traditional calculation to successfully play out the errand. Machine Learning algorithms are absolutely founded on information, and are a high level rendition of the normal calculation. It makes programs "more intelligent" by permitting them to naturally gain from the information given by people. The algorithm is predominantly separated into two stages i.e., training stage and testing stage. Comprehensively there are three sorts of calculations that are fundamentally utilized on information such as, supervised, unsupervised and reinforcement learning algorithms.
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