An optimized efficient combinatorial learning using deep neural network and statistical techniques

Jyothi V K, Guda Ramachandra Kaladhara Sarma
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Abstract

Research work is to discover the rapid requirement of Artificial Intelligence and Statistics in medical research. Objective is to design a diagnostic prediction system that can detect and predict diseases at an early stage from clinical data sets. Some of major diseases leading reasons of death globally are heart disease and cancer. There are different kinds of cancer, in this study we focused on breast cancer and heart disease. Prediction of these diseases at a very early stage is curable and preventive diagnosis can control death rate. Designed two Artificial Intelligence systems for prediction of above-mentioned diseases using statistics and Deep neural networks (i) Combinatorial Learning (CLSDnn) and (ii) an optimized efficient Combinatorial Learning (eCLSDnn). To evaluate the performance of the proposed system conducted experiments on three different data sets, in which two data sets are of breast cancer namely, Wisconsin-data set of UCI Machine Learning repository and AI for Social Good: Women Coders’ Bootcamp data set and Cleveland heart disease data set of UCI Machine Learning repository. The proposed architectures of binary classification are validated for 70%–30% data splitting and on K-fold cross validation. Recognition of Malignant cancerous tumors CLSDnn model achieved maximum accuracy of 98.53% for Wisconsin data set, 95.32% for AI for Social Good: Women Coders’ data set and 96.72% for Cleveland data set. Recognition of Malignant cancerous tumors eCLSDnn model achieved 99.36% for Wisconsin data set, 97.12% for AI for Social Good: Women Coders’ data set and 99.56% for the Cleveland heart disease data set.
使用深度神经网络和统计技术的优化有效组合学习
研究工作是发现人工智能和统计学在医学研究中的快速需求。目的是设计一个诊断预测系统,能够从临床数据集中早期发现和预测疾病。全球导致死亡的一些主要疾病是心脏病和癌症。有不同种类的癌症,在这项研究中,我们关注的是乳腺癌和心脏病。在早期阶段预测这些疾病是可治愈的,预防性诊断可以控制死亡率。利用统计学和深度神经网络设计了两个预测上述疾病的人工智能系统(i)组合学习(CLSDnn)和(ii)优化高效组合学习(eCLSDnn)。为了评估所提出的系统的性能,在三个不同的数据集上进行了实验,其中两个数据集是乳腺癌,即威斯康星- UCI机器学习存储库的数据集和AI for Social Good: Women Coders ' Bootcamp数据集和UCI机器学习存储库的Cleveland心脏病数据集。所提出的二元分类架构在70%-30%的数据分割和K-fold交叉验证下得到了验证。CLSDnn模型在Wisconsin数据集的最高准确率为98.53%,在AI for Social Good: Women Coders数据集的最高准确率为95.32%,在Cleveland数据集的最高准确率为96.72%。eCLSDnn模型在威斯康星州数据集的识别率为99.36%,在AI for Social Good: Women Coders数据集的识别率为97.12%,在克利夫兰心脏病数据集的识别率为99.56%。
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3.30
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