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Sentiment Analysis-Based Categorized Opinions Expressed in Feedback Forums Using Deep Learning Technique and Message Queue Architecture 基于情感分析的基于深度学习技术和消息队列架构的反馈论坛分类意见表达
Pub Date : 2022-01-01 DOI: 10.4018/ijdai.309743
U. Kumar
Sentiment analysis is a sub-field of natural language processing (NLP). In sentiment analysis the sentiment behind the piece of data is tried to know, this data can be a review of a product by a customer or a comment on some social media platform. Analysing large amounts of data is still an easy task for small retail websites and business owners. Deep learning (DL) has made a great revolution in the field of speech and image recognition. Mature deep learning neural network i.e. convolution neural network (CNN) has completely changed the field of NLP. This paper proposed a high accuracy, efficient, scalable, reliable and secure solution to cater all the needs of business owners and institutes for sentiment analysis with DL model, a browser based GUI interface for easy accessibility to all the non-technical folks and a dashboard having graphical representations of their results. The proposed sentiment analysis based model has achieved 93.55% accuracy which has outperformed other models.
情感分析是自然语言处理(NLP)的一个分支。在情感分析中,试图了解数据背后的情感,这些数据可以是客户对产品的评论,也可以是某些社交媒体平台上的评论。对于小型零售网站和企业主来说,分析大量数据仍然是一项简单的任务。深度学习(DL)在语音和图像识别领域掀起了一场巨大的革命。成熟的深度学习神经网络即卷积神经网络(CNN)已经彻底改变了自然语言处理领域。本文提出了一个高精度、高效、可扩展、可靠和安全的解决方案,以满足企业主和机构对深度学习模型的情感分析的所有需求,一个基于浏览器的GUI界面,方便所有非技术人员访问,以及一个具有图形化表示结果的仪表板。基于情感分析的模型准确率达到93.55%,优于其他模型。
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引用次数: 0
An Intelligent Model for DDoS Attack Detection and Flash Event Management 一种DDoS攻击检测与Flash事件管理智能模型
Pub Date : 2022-01-01 DOI: 10.4018/ijdai.301212
Distributed Denial of Service (DDoS) attacks are the foremost security concerns on the Internet. DDoS attacks and a similar occurrence called Flash Event (FE) signify anomalies in the normal network traffic, requiring intelligent interventions. This study presents the design and implementation of an intelligent model for the detection of application-layer DDoS attacks and the prevention of service degradations during FE. A Multi-Layer Perceptron (MLP) classifier was used for detecting DDoS attacks on application servers. The FE management system consists of asynchronous processing of requests on a First-In, First-Out (FIFO) basis. A demo application was set up wherein HTTP flood attack was launched and a Flash Event was simulated. The experimental results clearly show that the MLP classifier in comparison with other machine learning classifiers performs best in terms of speed and accuracy. Also, the evaluation of the FE management system shows a great reduction in service degradation. This reflects that the designed model is capable of averting service unavailability on the web.
分布式拒绝服务(DDoS)攻击是互联网上最重要的安全问题。DDoS攻击和类似的称为Flash事件(FE)的事件表明正常网络流量出现异常,需要智能干预。本研究提出了一个智能模型的设计和实现,用于检测应用层DDoS攻击和防止FE期间的服务降级。采用多层感知器(MLP)分类器检测应用服务器上的DDoS攻击。FE管理系统由基于先进先出(FIFO)的异步请求处理组成。建立了一个演示应用程序,其中启动了HTTP flood攻击并模拟了Flash事件。实验结果清楚地表明,与其他机器学习分类器相比,MLP分类器在速度和准确性方面表现最好。此外,对FE管理系统的评估表明,该系统大大减少了服务退化。这反映了所设计的模型能够避免网络上的服务不可用。
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引用次数: 1
Experimental Study of Swarm Migration Algorithms on Stochastic and Global Optimisation Problem 随机全局优化问题群迁移算法的实验研究
Pub Date : 2022-01-01 DOI: 10.4018/ijdai.296389
Complex computational problems are occurrences in our daily lives that needs to be analysed effectively in order to make meaningful and informed decision. This study performs empirical analysis into the performance of six optimisation algorithms based on swarm intelligence on nine well known stochastic and global optimisation problems, with the aim of identifying a technique that returns an optimum output on some selected benchmark techniques. Extensive experiments show that, Multi-Swarm and Pigeon inspired optimisation algorithm outperformed Particle Swarm, Firefly and Evolutionary optimizations in both convergence speed and global solution. The algorithms adopted in this paper gives an indication of which algorithmic solution presents optimal results for a problem in terms of quality of performance, precision and efficiency.
复杂的计算问题发生在我们的日常生活中,需要进行有效的分析,以便做出有意义和明智的决策。本研究对基于群体智能的六种优化算法在九个众所周知的随机和全局优化问题上的性能进行了实证分析,目的是确定一种在一些选定的基准技术上返回最佳输出的技术。大量的实验表明,Multi-Swarm和Pigeon启发的优化算法在收敛速度和全局解方面都优于Particle Swarm、Firefly和Evolutionary优化算法。本文所采用的算法给出了在性能质量、精度和效率方面哪一种算法解对某一问题具有最优结果的指示。
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引用次数: 0
Hybrid Model for Named Entity Recognition 命名实体识别的混合模型
Pub Date : 2022-01-01 DOI: 10.4018/ijdai.311063
N. Chaturvedi, Jigyasu Dubey
Named entity recognition is an important factor that has a direct and significant impact on the quality of neural sequence labelling. It entails choosing encoding input data to create grammatical and semantic representation vectors. The main goal of this research is to provide a hybrid neural network model for a specific sequence labelling task such as named entity recognition. Three subnetworks are used in this hybrid model to ensure that information at the character, capitalization levels, and word-level contextual representation is fully utilized. The authors used different samples for training and development sets on the CoNLL-2003 dataset to show that the model could compare its performance to that of other state-of-the-art models.
命名实体识别是直接影响神经序列标记质量的重要因素。它需要选择编码输入数据来创建语法和语义表示向量。本研究的主要目标是为特定序列标记任务(如命名实体识别)提供一种混合神经网络模型。在这个混合模型中使用了三个子网,以确保字符级、大写级别和单词级上下文表示的信息得到充分利用。作者在CoNLL-2003数据集上使用了不同的训练和开发样本,以表明该模型可以将其性能与其他最先进的模型进行比较。
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引用次数: 0
An Advanced Morphological Component Analysis, Steganography, and Deep Learning-Based System to Transmit Secure Textual Data 一种先进的形态学成分分析、隐写术和基于深度学习的安全文本数据传输系统
Pub Date : 2021-07-01 DOI: 10.4018/ijdai.2021070104
B. Pandey, D. Pandey, Subodh Wairya, Gaurav Agarwal
A potential to extract detailed textual image texture features is a key characteristic of the suggested approach, instead of using a single spatial texture feature. For the generation of MCs, four textured characteristics (including horizontal and vertical) are assumed in this paper that are content, coarseness, contrast, and directionality. The morphological parts of a clandestine text-based image were further segmented and then usually inserted into the least significant bit in cover pixels utilising spatial steganography. This same reverse process for steganography and MCA is conducted on the recipient side after transmission. The results demonstrate that the proposed method based on fusion of MCA and steganography provides a higher performance measure, for instance peak signal-to-noise ratio, SSIM, than the previous method.
该方法的一个关键特点是能够提取详细的文本图像纹理特征,而不是使用单一的空间纹理特征。为了生成MCs,本文假设了四种纹理特征(包括水平和垂直),即内容、粗度、对比度和方向性。基于文本的秘密图像的形态学部分被进一步分割,然后通常利用空间隐写术插入到覆盖像素中最不重要的位。在传输后,在接收方进行隐写和MCA的相同反向过程。结果表明,基于MCA和隐写术融合的方法比之前的方法提供了更高的性能指标,如峰值信噪比(SSIM)。
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引用次数: 4
A Hybrid Approach for Automated Plant Leaf Recognition Using Hybrid Texture Features and Machine Learning-Based Classifiers 基于混合纹理特征和机器学习分类器的植物叶片自动识别混合方法
Pub Date : 2021-07-01 DOI: 10.4018/ijdai.2021070103
U. Kumar, Shashank Yadav, Esha Tripathi
Automated plant recognition performs a significant role in various applications used by environmental experts, chemists, and botany experts. Humans can recognize plants manually, but it is a prolonged and low-efficiency process. This paper introduces an automated system for recognizing plant species based on leaf images. A hybrid texture and colour-based feature extraction method was applied on digital leaf images to produce robust feature, and a further classification model was developed. A combination of machine learning methods, such as SVM (support vector machine), KNN (k-nearest neighbours), and ANN (artificial neural network), was applied on dataset for plant classification. This dataset contains 32 types of leaves. The outcomes of this work proved that success rate of plant recognition can be enhanced up to 94% with ANN classifier when both shape and colour features are utilized. Automatic recognition of plants is useful for medicine, foodstuff, and reduction of chemical wastage during crop spraying. It is also useful for identification and preservation of species.
自动化植物识别在环境专家、化学家和植物学专家使用的各种应用中发挥着重要作用。人类可以手动识别植物,但这是一个耗时且效率低下的过程。介绍了一种基于叶片图像的植物物种自动识别系统。采用基于纹理和颜色的混合特征提取方法对数字叶片图像进行鲁棒特征提取,并进一步建立分类模型。结合支持向量机(SVM)、k近邻(KNN)和人工神经网络(ANN)等机器学习方法,对数据集进行植物分类。这个数据集包含32种类型的叶子。研究结果表明,当同时使用形状和颜色特征时,人工神经网络分类器的植物识别成功率可提高到94%。植物的自动识别在医药、食品和减少作物喷洒过程中的化学品浪费方面具有重要意义。它对物种的鉴定和保存也很有用。
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引用次数: 1
An Intelligent Approach to Detect Fake News Using Artificial Intelligence Technique 利用人工智能技术检测假新闻的智能方法
Pub Date : 2021-07-01 DOI: 10.4018/ijdai.2021070101
Sumit Das, M. Sanyal, Sarbajyoti Mallik
There is a lot of fake news roaming around various mediums, which misleads people. It is a big issue in this advanced intelligent era, and there is a need to find some solution to this kind of situation. This article proposes an approach that analyzes fake and real news. This analysis is focused on sentiment, significance, and novelty, which are a few characteristics of this news. The ability to manipulate daily information mathematically and statistically is allowed by expressing news reports as numbers and metadata. The objective of this article is to analyze and filter out the fake news that makes trouble. The proposed model is amalgamated with the web application; users can get real data and fake data by using this application. The authors have used the AI (artificial intelligence) algorithms, specifically logistic regression and LSTM (long short-term memory), so that the application works well. The results of the proposed model are compared with existing models.
有很多假新闻在各种媒体上游荡,误导人们。在这个先进的智能时代,这是一个大问题,有必要找到一些解决这种情况的方法。本文提出了一种分析假新闻和真实新闻的方法。本文着重分析了该新闻的情感性、意义性、新颖性等特点。通过将新闻报道表示为数字和元数据,可以在数学和统计上处理日常信息。这篇文章的目的是分析和过滤掉制造麻烦的假新闻。该模型与web应用程序相结合;用户可以通过使用该应用程序获取真实数据和虚假数据。作者使用了AI(人工智能)算法,特别是逻辑回归和LSTM(长短期记忆),因此应用程序运行良好。将所提模型的计算结果与已有模型进行了比较。
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引用次数: 1
A Comprehensive Feature Selection Approach for Machine Learning 面向机器学习的综合特征选择方法
Pub Date : 2021-07-01 DOI: 10.4018/ijdai.2021070102
S. Das, M. Sanyal, Debamoy Datta
In machine learning, it is required that the underlying important input variables are known or else the value of the predicted outcome variable would never match the value of the target outcome variable. Machine learning tools are used in many applications where the underlying scientific model is inadequate. Unfortunately, making any kind of mathematical relationship is difficult, and as a result, incorporation of variables during the training becomes a big issue as it affects the accuracy of results. Another important issue is to find the cause behind the phenomena and the major factor that affects the outcome variable. The aim of this article is to focus on developing an approach that is not particular-tool specific, but it gives accurate results under all circumstances. This paper proposes a model that filters out the irrelevant variables irrespective of the type of dataset that the researcher can use. This approach provides parameters for determining the quality of the data used for mining purposes.
在机器学习中,需要知道潜在的重要输入变量,否则预测结果变量的值永远不会与目标结果变量的值匹配。机器学习工具被用于许多基础科学模型不充分的应用中。不幸的是,建立任何类型的数学关系都是困难的,因此,在训练过程中合并变量成为一个大问题,因为它会影响结果的准确性。另一个重要的问题是找到现象背后的原因和影响结果变量的主要因素。本文的目的是专注于开发一种方法,这种方法不是特定于特定工具,而是在所有情况下都能给出准确的结果。本文提出了一个模型,可以过滤掉无关变量,而不考虑研究人员可以使用的数据集类型。这种方法为确定用于挖掘目的的数据的质量提供了参数。
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引用次数: 0
The Business Transformation Enterprise Architecture Framework 业务转换企业架构框架
Pub Date : 2021-01-01 DOI: 10.4018/978-1-7998-3351-2.ch016
A. Trad
This chapter's author based his cross-functional research on an authentic and proprietary mixed research method that is supported by intelligent neural networks combined with a heuristics motor, named the applied mathematical model (AMM). The proposed AMM base functions like the human empiric decision-making process that can be compared to the behaviour-driven development. The AMM is supported by many real-life cases of business and architecture transformation projects in the domain of intelligent strategic development and operations (iSDevOps) that is supported by the alignment of various standards and development strategies that biases the standard market development and operations (DevOps) procedures, which are Sisyphean tasks.
本章作者的跨职能研究基于一种真实且专有的混合研究方法,该方法由智能神经网络和启发式马达相结合,称为应用数学模型(AMM)。所提出的AMM基本函数类似于人类经验决策过程,可以与行为驱动开发进行比较。AMM由智能战略开发和运营(iSDevOps)领域的许多业务和架构转换项目的实际案例支持,iSDevOps由各种标准和开发策略的校准支持,这些标准和开发策略偏向于标准市场开发和运营(DevOps)过程,这是西西弗斯式的任务。
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引用次数: 0
A Literature Review on Automation Testing Using Selenium+Sikuli 硒+四库力自动化测试的文献综述
Pub Date : 2019-07-01 DOI: 10.4018/ijdai.2019070104
Ashish Lathwal
Automation testing is a methodology that uses an application to implement the entire life cycle of the software in less time and provides efficiency and effectiveness to the testing software. In automation testing, the tester writes scripts and uses any suitable application software to test the software application. Automation is basically an automated process that is comprised of lots of manual activities. In other words, automation testing uses automation tools like Selenium, Sikuli, Appium, etc., to write test script and execute test cases, with no or minimal manual involvement required while executing an automated test suite. Usually, automation testers write test scripts and test cases using any of the automation tool and then groups test several cases. Here, we will discuss a neat case study explaining the automation testing using a hybrid test script.
自动化测试是一种使用应用程序在更短的时间内实现软件的整个生命周期,并为测试软件提供效率和有效性的方法。在自动化测试中,测试人员编写脚本并使用任何合适的应用软件来测试软件应用程序。自动化基本上是由许多手工活动组成的自动化过程。换句话说,自动化测试使用像Selenium、Sikuli、Appium等自动化工具来编写测试脚本并执行测试用例,在执行自动化测试套件时不需要或只需要很少的手工参与。通常,自动化测试人员使用任何自动化工具编写测试脚本和测试用例,然后将测试用例分组。在这里,我们将讨论一个简洁的案例研究,解释使用混合测试脚本的自动化测试。
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引用次数: 1
期刊
International Journal of Distributed Artificial Intelligence
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