Results for 'Random forest algorithm'

982 found
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  1.  19
    Research on Risk Identification System Based on Random Forest Algorithm-High-Order Moment Model.Li-Jun Liu, Wei-Kang Shen & Jia-Ming Zhu - 2021 - Complexity 2021:1-10.
    With the continuous development of the stock market, designing a reasonable risk identification tool will help to solve the irrational problem of investors. This paper first selects the stocks with the most valuable investment value in the future through the random forest algorithm in the nine-factor model and then analyzes them by using the higher-order moment model to find that different investors’ preferences will make the weight of the portfolio change accordingly, which will eventually make the optimal (...)
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  2.  13
    Evaluation model of multimedia-aided teaching effect of physical education course based on random forest algorithm.Hongbo Zhuang & Gang Liu - 2022 - Journal of Intelligent Systems 31 (1):555-567.
    The multimedia technology and computer technology supported by the development of modern science and technology provide an important platform for the development of college physical education teaching activities. To better play the role of network auxiliary teaching platform in college sports teaching and improve the effectiveness of college sports teaching, the construction method of multimedia auxiliary teaching effect evaluation model based on the random number forest algorithm is proposed. Through the specification of the random forest (...)
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  3.  21
    Optimal Economic Modelling of Hybrid Combined Cooling, Heating, and Energy Storage System Based on Gravitational Search Algorithm-Random Forest Regression.Muhammad Shahzad Nazir, Sami ud Din, Wahab Ali Shah, Majid Ali, Ali Yousaf Kharal, Ahmad N. Abdalla & Padmanaban Sanjeevikumar - 2021 - Complexity 2021:1-13.
    The hybridization of two or more energy sources into a single power station is one of the widely discussed solutions to address the demand and supply havoc generated by renewable production, heating power, and cooling power) and its energy storage issues. Hybrid energy sources work based on the complementary existence of renewable sources. The combined cooling, heating, and power is one of the significant systems and shows a profit from its low environmental impact, high energy efficiency, low economic investment, and (...)
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  4.  25
    Detection Analysis of Epileptic EEG Using a Novel Random Forest Model Combined With Grid Search Optimization.Xiashuang Wang, Guanghong Gong, Ni Li & Shi Qiu - 2019 - Frontiers in Human Neuroscience 13:424082.
    In the automatic detection of epileptic seizures, the monitoring of critically ill patients with time varying EEG signals is an essential procedure in intensive care units. There is an increasing interest in using EEG analysis to detect seizure, and in this study we aim to get a better understanding of how to visualize the information in the EEG time-frequency feature, and design and train a novel random forest algorithm for EEG decoding, especially for multiple-levels of illness. Here, (...)
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  5.  58
    A Combined Deep CNN: LSTM with a Random Forest Approach for Breast Cancer Diagnosis.Almas Begum, V. Dhilip Kumar, Junaid Asghar, D. Hemalatha & G. Arulkumaran - 2022 - Complexity 2022:1-9.
    The most predominant kind of disease that is normal among ladies is breast cancer. It is one of the significant reasons among ladies, regardless of huge endeavors to stay away from it through screening developers. An automatic detection system for disease helps doctors to identify and provide accurate results, thereby minimizing the death rate. Computer-aided diagnosis has minimum intervention of humans and produces more accurate results than humans. It will be a difficult and long task that depends on the expertise (...)
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  6. Decision trees, random forests, and the genealogy of the black box.Matthew L. Jones - 2022 - In Morgan G. Ames & Massimo Mazzotti (eds.), Algorithmic modernity: mechanizing thought and action, 1500-2000. New York, NY: Oxford University Press.
  7. Decision trees, random forests, and the genealogy of the black box.Matthew L. Jones - 2022 - In Morgan G. Ames & Massimo Mazzotti (eds.), Algorithmic modernity: mechanizing thought and action, 1500-2000. New York, NY: Oxford University Press.
     
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  8.  34
    Tree-based machine learning algorithms in the Internet of Things environment for multivariate flood status prediction.Salama A. Mostafa, Bashar Ahmed Khalaf, Ahmed Mahmood Khudhur, Ali Noori Kareem & Firas Mohammed Aswad - 2021 - Journal of Intelligent Systems 31 (1):1-14.
    Floods are one of the most common natural disasters in the world that affect all aspects of life, including human beings, agriculture, industry, and education. Research for developing models of flood predictions has been ongoing for the past few years. These models are proposed and built-in proportion for risk reduction, policy proposition, loss of human lives, and property damages associated with floods. However, flood status prediction is a complex process and demands extensive analyses on the factors leading to the occurrence (...)
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  9.  10
    Machine overstrain prediction for early detection and effective maintenance: A machine learning algorithm comparison.Bruno Mota, Pedro Faria & Carlos Ramos - forthcoming - Logic Journal of the IGPL.
    Machine stability and energy efficiency have become major issues in the manufacturing industry, primarily during the COVID-19 pandemic where fluctuations in supply and demand were common. As a result, Predictive Maintenance (PdM) has become more desirable, since predicting failures ahead of time allows to avoid downtime and improves stability and energy efficiency in machines. One type of machine failure stands out due to its impact, machine overstrain, which can occur when machines are used beyond their tolerable limit. From the current (...)
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  10.  26
    Bidders Recommender for Public Procurement Auctions Using Machine Learning: Data Analysis, Algorithm, and Case Study with Tenders from Spain.Manuel J. García Rodríguez, Vicente Rodríguez Montequín, Francisco Ortega Fernández & Joaquín M. Villanueva Balsera - 2020 - Complexity 2020:1-20.
    Recommending the identity of bidders in public procurement auctions has a significant impact in many areas of public procurement, but it has not yet been studied in depth. A bidders recommender would be a very beneficial tool because a supplier can search appropriate tenders and, vice versa, a public procurement agency can discover automatically unknown companies which are suitable for its tender. This paper develops a pioneering algorithm to recommend potential bidders using a machine learning method, particularly a (...) forest classifier. The bidders recommender is described theoretically, so it can be implemented or adapted to any particular situation. It has been successfully validated with a case study: an actual Spanish tender dataset which has 102,087 tenders from 2014 to 2020 and a company dataset which has 1,353,213 Spanish companies. Quantitative, graphical, and statistical descriptions of both datasets are presented. The results of the case study were satisfactory: the winning bidding company is within the recommended companies group, from 24% to 38% of the tenders, according to different test conditions and scenarios. (shrink)
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  11.  18
    Friend Recommender System for Social Networks Based on Stacking Technique and Evolutionary Algorithm.Aida Ghorbani, Amir Daneshvar, Ladan Riazi & Reza Radfar - 2022 - Complexity 2022:1-11.
    In recent years, social networks have made significant progress and the number of people who use them to communicate is increasing day by day. The vast amount of information available on social networks has led to the importance of using friend recommender systems to discover knowledge about future communications. It is challenging to choose the best machine learning approach to address the recommender system issue since there are several strategies with various benefits and drawbacks. In light of this, a solution (...)
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  12.  17
    Construction of Women’s All-Around Speed Skating Event Performance Prediction Model and Competition Strategy Analysis Based on Machine Learning Algorithms.Meng Liu, Yan Chen, Zhenxiang Guo, Kaixiang Zhou, Limingfei Zhou, Haoyang Liu, Dapeng Bao & Junhong Zhou - 2022 - Frontiers in Psychology 13.
    IntroductionAccurately predicting the competitive performance of elite athletes is an essential prerequisite for formulating competitive strategies. Women’s all-around speed skating event consists of four individual subevents, and the competition system is complex and challenging to make accurate predictions on their performance.ObjectiveThe present study aims to explore the feasibility and effectiveness of machine learning algorithms for predicting the performance of women’s all-around speed skating event and provide effective training and competition strategies.MethodsThe data, consisting of 16 seasons of world-class women’s all-around speed (...)
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  13.  23
    Extreme Gradient Boosting Algorithm for Predicting Shear Strengths of Rockfill Materials.Mahmood Ahmad, Ramez A. Al-Mansob, Kazem Reza Kashyzadeh, Suraparb Keawsawasvong, Mohanad Muayad Sabri Sabri, Irfan Jamil & Arnold C. Alguno - 2022 - Complexity 2022:1-11.
    For the safe and economical construction of embankment dams, the mechanical behaviour of the rockfill materials used in the dam’s shell must be analyzed. The characterization of rockfill materials with specified shear strength is difficult and expensive due to the presence of particles greater than 500 mm in diameter. This work investigates the feasibility of using an extreme gradient boosting computing paradigm to estimate the shear strength of rockfill materials. To train and validate the proposed XGBoost model, a total of (...)
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  14.  49
    Healthcare and anomaly detection: using machine learning to predict anomalies in heart rate data.Edin Šabić, David Keeley, Bailey Henderson & Sara Nannemann - 2021 - AI and Society 36 (1):149-158.
    The application of machine learning algorithms to healthcare data can enhance patient care while also reducing healthcare worker cognitive load. These algorithms can be used to detect anomalous physiological readings, potentially leading to expedited emergency response or new knowledge about the development of a health condition. However, while there has been much research conducted in assessing the performance of anomaly detection algorithms on well-known public datasets, there is less conceptual comparison across unsupervised and supervised performance on physiological data. Moreover, while (...)
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  15.  26
    Compressive Strength Prediction Using Coupled Deep Learning Model with Extreme Gradient Boosting Algorithm: Environmentally Friendly Concrete Incorporating Recycled Aggregate.Mayadah W. Falah, Sadaam Hadee Hussein, Mohammed Ayad Saad, Zainab Hasan Ali, Tan Huy Tran, Rania M. Ghoniem & Ahmed A. Ewees - 2022 - Complexity 2022:1-22.
    The application of recycled aggregate as a sustainable material in construction projects is considered a promising approach to decrease the carbon footprint of concrete structures. Prediction of compressive strength of environmentally friendly concrete containing recycled aggregate is important for understanding sustainable structures’ concrete behaviour. In this research, the capability of the deep learning neural network approach is examined on the simulation of CS of EF concrete. The developed approach is compared to the well-known artificial intelligence approaches named multivariate adaptive regression (...)
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  16.  27
    Responses of functional brain networks in micro-expressions: An EEG study.Xingcong Zhao, Jiejia Chen, Tong Chen, Shiyuan Wang, Ying Liu, Xiaomei Zeng & Guangyuan Liu - 2022 - Frontiers in Psychology 13.
    Micro-expressions can reflect an individual’s subjective emotions and true mental state, and they are widely used in the fields of mental health, justice, law enforcement, intelligence, and security. However, one of the major challenges of working with MEs is that their neural mechanism is not entirely understood. To the best of our knowledge, the present study is the first to use electroencephalography to investigate the reorganizations of functional brain networks involved in MEs. We aimed to reveal the underlying neural mechanisms (...)
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  17.  20
    Very Short-Term Blackout Prediction for Grid-Tied PV Systems Operating in Low Reliability Weak Electric Grids of Developing Countries.Benson H. Mbuya, Aleksandar Dimovski, Marco Merlo & Thomas Kivevele - 2022 - Complexity 2022:1-13.
    Sub-Saharan emerging countries experience electrical shortages resulting in power rationing, which ends up hampering economic activities. This paper proposes an approach for very short-term blackout forecast in grid-tied PV systems operating in low reliability weak electric grids of emerging countries. A pilot project was implemented in Arusha-Tanzania; it mainly comprised of a PV-inverter and a lead-acid battery bank connected to the local electricity utility company, Tanzania Electric Supply Company Limited. A very short-term power outage prediction model framework based on a (...)
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  18.  22
    A Study of Subliminal Emotion Classification Based on Entropy Features.Yanjing Shi, Xiangwei Zheng, Min Zhang, Xiaoyan Yan, Tiantian Li & Xiaomei Yu - 2022 - Frontiers in Psychology 13.
    Electroencephalogram has been widely utilized in emotion recognition. Psychologists have found that emotions can be divided into conscious emotion and unconscious emotion. In this article, we explore to classify subliminal emotions with EEG signals elicited by subliminal face stimulation, that is to select appropriate features to classify subliminal emotions. First, multi-scale sample entropy, wavelet packet energy, and wavelet packet entropy of EEG signals are extracted. Then, these features are fed into the decision tree and improved random forest, respectively. (...)
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  19.  10
    Psychological emotions-based online learning grade prediction via BP neural network.Jiongen Xiao, Hongqing Teng, Han Wang & Jianxing Tan - 2022 - Frontiers in Psychology 13.
    With the rapid development of Internet technology and the reform of the education model, online education has been widely recognized and applied. In the process of online learning, various types of browsing behavior characteristic data such as learning engagement and attitude will be generated. These learning behaviors are closely related to academic performance. In-depth exploration of the laws contained in the data can provide teaching assistance for education administrators. In this paper, the random forest algorithm is used (...)
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  20.  16
    Application of Big Data Technology in the Impact of Tourism E-Commerce on Tourism Planning.Heqing Zhang, Tingting Guo & Xiaobo Su - 2021 - Complexity 2021:1-10.
    With the improvement of the material standard of living, the demand of the people for spiritual culture continues to increase. In terms of tourism, people have gradually shifted from simple tourism needs to integrated tourism needs. Tourism has become an effective way for people to expand their horizons and enrich their spiritual world. Tourism is one of the first industries to apply network technology. After long-term exploration and innovation, tourism e-commerce has developed rapidly. Coupled with the advent of the era (...)
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  21.  14
    Risk Assessment of Biological Asset Mortgage Loans of China’s New Agricultural Business Entities.Shuzhen Zhu, Yutao Chen & Wenwen Wang - 2020 - Complexity 2020:1-12.
    The large-scale proliferation of China’s new type of agricultural entities has given rise to a higher demand for funds. Farmers have insufficient effective collateral, which makes it difficult for them to obtain sufficient loans. Chinese financial institutions have developed a biological asset mortgage loan business to cope with this situation. China has not considered biological mortgages but has been using real estate and asset mortgage models with strong realizability. This innovative financial business has achieved positive results since it was attempted, (...)
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  22.  11
    Recognition of Consumer Preference by Analysis and Classification EEG Signals.Mashael Aldayel, Mourad Ykhlef & Abeer Al-Nafjan - 2021 - Frontiers in Human Neuroscience 14.
    Neuromarketing has gained attention to bridge the gap between conventional marketing studies and electroencephalography -based brain-computer interface research. It determines what customers actually want through preference prediction. The performance of EEG-based preference detection systems depends on a suitable selection of feature extraction techniques and machine learning algorithms. In this study, We examined preference detection of neuromarketing dataset using different feature combinations of EEG indices and different algorithms for feature extraction and classification. For EEG feature extraction, we employed discrete wavelet transform (...)
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  23.  31
    Deep Learning- and Word Embedding-Based Heterogeneous Classifier Ensembles for Text Classification.Zeynep H. Kilimci & Selim Akyokus - 2018 - Complexity 2018:1-10.
    The use of ensemble learning, deep learning, and effective document representation methods is currently some of the most common trends to improve the overall accuracy of a text classification/categorization system. Ensemble learning is an approach to raise the overall accuracy of a classification system by utilizing multiple classifiers. Deep learning-based methods provide better results in many applications when compared with the other conventional machine learning algorithms. Word embeddings enable representation of words learned from a corpus as vectors that provide a (...)
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  24.  25
    Prediction Approaches for Smart Cultivation: A Comparative Study.Amitabha Chakrabarty, Nafees Mansoor, Muhammad Irfan Uddin, Mosleh Hmoud Al-Adaileh, Nizar Alsharif & Fawaz Waselallah Alsaade - 2021 - Complexity 2021:1-16.
    Crop cultivation is one of the oldest activities of civilization. For a long time, crop production was carried out based on knowledge passed from generation to generation. However, due to the rapid growth in the human population of the world, human knowledge-based cultivation is not enough to meet the demanding need. To address this issue, the usage of machine learning-based tools has been studied in this paper. An experiment has been carried out over 0.3 million data. This dataset identifies 46 (...)
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  25.  12
    Slope-to-optimal-solution-based evaluation of the hardness of travelling salesman problem instances.Miguel Cárdenas-Montes - 2020 - Logic Journal of the IGPL 28 (1):45-57.
    The travelling salesman problem is one of the most popular problems in combinatorial optimization. It has been frequently used as a benchmark of the performance of evolutionary algorithms. For this reason, nowadays practitioners request new and more difficult instances of this problem. This leads to investigate how to evaluate the intrinsic difficulty of the instances and how to separate ease and difficult instances. By developing methodologies for separating easy- from difficult-to-solve instances, researchers can fairly test the performance of their combinatorial (...)
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  26.  22
    Developing an Integrative Data Intelligence Model for Construction Cost Estimation.Zainab Hasan Ali, Abbas M. Burhan, Murizah Kassim & Zainab Al-Khafaji - 2022 - Complexity 2022:1-18.
    Construction cost estimation is one of the essential processes in construction management. Project cost is a complex engineering problem due to various factors affecting the construction industry. Accurate cost estimation is important in construction management and significantly impacts project performance. Artificial intelligence models have been effectively implemented in construction management studies in recent years owing to their capability to deal with complex problems. In this research, extreme gradient boosting is developed as an advanced input selector algorithm and coupled with (...)
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  27.  67
    Improved Butterfly Optimizer-Configured Extreme Learning Machine for Fault Diagnosis.Helong Yu, Kang Yuan, Wenshu Li, Nannan Zhao, Weibin Chen, Changcheng Huang, Huiling Chen & Mingjing Wang - 2021 - Complexity 2021:1-17.
    An efficient intelligent fault diagnosis model was proposed in this paper to timely and accurately offer a dependable basis for identifying the rolling bearing condition in the actual production application. The model is mainly based on an improved butterfly optimizer algorithm- optimized kernel extreme learning machine model. Firstly, the roller bearing’s vibration signals in the four states that contain normal state, outer race failure, inner race failure, and rolling ball failure are decomposed into several intrinsic mode functions using the (...)
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  28.  46
    Analysis of artificial neural networks training models for airfare price prediction.Kuptsova E. A. & Ramazanov S. K. - 2020 - Artificial Intelligence Scientific Journal 25 (3):45-50.
    Air transport is playing an increasing role in the world economy every year. This is facilitated by technological development and the latest developments in the aviation industry, globalization. This paper provides an overview of artificial neural network training methods for airfare predicting. The articles for 2017-2019 were analyzed in order to determine the model with the most accurate prediction. The researchers conducted research on open data collected by themselves and set themselves the goal of creating a model that would advise (...)
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  29.  28
    Classification of drug-naive children with attention-deficit/hyperactivity disorder from typical development controls using resting-state fMRI and graph theoretical approach.Masoud Rezaei, Hoda Zare, Hamidreza Hakimdavoodi, Shahrokh Nasseri & Paria Hebrani - 2022 - Frontiers in Human Neuroscience 16.
    Background and objectivesThe study of brain functional connectivity alterations in children with Attention-Deficit/Hyperactivity Disorder has been the subject of considerable investigation, but the biological mechanisms underlying these changes remain poorly understood. Here, we aim to investigate the brain alterations in patients with ADHD and Typical Development children and accurately classify ADHD children from TD controls using the graph-theoretical measures obtained from resting-state fMRI.Materials and methodsWe investigated the performances of rs-fMRI data for classifying drug-naive children with ADHD from TD controls. Fifty (...)
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  30.  32
    Predicting and Preventing Crime: A Crime Prediction Model Using San Francisco Crime Data by Classification Techniques.Muzammil Khan, Azmat Ali & Yasser Alharbi - 2022 - Complexity 2022:1-13.
    The crime is difficult to predict; it is random and possibly can occur anywhere at any time, which is a challenging issue for any society. The study proposes a crime prediction model by analyzing and comparing three known prediction classification algorithms: Naive Bayes, Random Forest, and Gradient Boosting Decision Tree. The model analyzes the top ten crimes to make predictions about different categories, which account for 97% of the incidents. These two significant crime classes, that is, violent (...)
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  31.  34
    A New Robust Classifier on Noise Domains: Bagging of Credal C4.5 Trees.Joaquín Abellán, Javier G. Castellano & Carlos J. Mantas - 2017 - Complexity:1-17.
    The knowledge extraction from data with noise or outliers is a complex problem in the data mining area. Normally, it is not easy to eliminate those problematic instances. To obtain information from this type of data, robust classifiers are the best option to use. One of them is the application of bagging scheme on weak single classifiers. The Credal C4.5 model is a new classification tree procedure based on the classical C4.5 algorithm and imprecise probabilities. It represents a type (...)
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  32.  15
    Multi-scale Machine Learning Prediction of the Spread of Arabic Online Fake News.Fatima Aljwari, Wahaj Alkaberi, Areej Alshutayri, Eman Aldhahri, Nahla Aljojo & Omar Abouola - 2022 - Postmodern Openings 13 (1 Sup1):01-14.
    There are a lot of research studies that look at "fake news" from an Arabic online source, but they don't look at what makes those fake news spread. The threat grows, and at some point, it gets out of hand. That's why this paper is trying to figure out how to predict the features that make Arabic online fake news spread. It's using Naive Bayes, Logistic Regression, and Random forest of Machine Learning to do this. Online news stories (...)
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  33.  22
    Early Detection of Seasonal Outbreaks from Twitter Data Using Machine Learning Approaches.Samina Amin, Muhammad Irfan Uddin, Duaa H. alSaeed, Atif Khan & Muhammad Adnan - 2021 - Complexity 2021:1-12.
    Seasonal outbreaks have several different periods that occur primarily during winter in temperate regions, while influenza may occur throughout the year in tropical regions, triggering outbreaks more irregularly. Similarly, dengue occurs in the star of the rainy season in early May and reaches its peak in late June. Dengue and flu brought an impact on various countries in the years 2017–2019 and streaming Twitter data reveals the status of dengue and flu outbreaks in the most affected regions. This research work (...)
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  34.  36
    Google Play Content Scraping and Knowledge Engineering using Natural Language Processing Techniques with the Analysis of User Reviews.Muhammad Farhan, Rana M. Amir Latif, Ali Adil Qureshi, Meshrif Alruily, Abdullah Bajahzar & Hamza Aldabbas - 2020 - Journal of Intelligent Systems 30 (1):192-208.
    To maintain the competitive edge and evaluating the needs of the quality app is in the mobile application market. The user’s feedback on these applications plays an essential role in the mobile application development industry. The rapid growth of web technology gave people an opportunity to interact and express their review, rate and share their feedback about applications. In this paper we have scrapped 506259 of user reviews and applications rate from Google Play Store from 14 different categories. The statistical (...)
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  35.  31
    Impact of Lexical Features on Answer Detection Model in Discussion Forums.Atif Khan, Muhammad Adnan Gul, Abdullah Alharbi, M. Irfan Uddin, Shaukat Ali & Bader Alouffi - 2021 - Complexity 2021:1-8.
    Online forums have become the main source of knowledge over the Internet as data are constantly flooded into them. In most cases, a question in a web forum receives several responses, making it impossible for the question poster to obtain the most suitable answer. Thus, an important problem is how to automatically extract the most appropriate and high-quality answers in a thread. Prior studies have used different combinations of both lexical and nonlexical features to retrieve the most relevant answers from (...)
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  36.  19
    An Empirical Evaluation of Supervised Learning Methods for Network Malware Identification Based on Feature Selection.C. Manzano, C. Meneses, P. Leger & H. Fukuda - 2022 - Complexity 2022:1-18.
    Malware is a sophisticated, malicious, and sometimes unidentifiable application on the network. The classifying network traffic method using machine learning shows to perform well in detecting malware. In the literature, it is reported that this good performance can depend on a reduced set of network features. This study presents an empirical evaluation of two statistical methods of reduction and selection of features in an Android network traffic dataset using six supervised algorithms: Naïve Bayes, support vector machine, multilayer perceptron neural network, (...)
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  37.  13
    Theories and Methods for Labeling Cognitive Workload: Classification and Transfer Learning.Ryan McKendrick, Bradley Feest, Amanda Harwood & Brian Falcone - 2019 - Frontiers in Human Neuroscience 13:461869.
    There are a number of key data-centric questions that must be answered when developing classifiers for operator functional states. “Should a supervised or unsupervised learning approach be used? What degree of labeling and transformation must be performed on the data? What are the trade-offs between algorithm flexibility and model interpretability, as generally these features are at odds?” Here, we focus exclusively on the labeling of cognitive load data for supervised learning. We explored three methods of labeling cognitive states for (...)
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  38.  22
    Systematic Framework to Predict Early-Stage Liver Carcinoma Using Hybrid of Feature Selection Techniques and Regression Techniques.Marium Mehmood, Nasser Alshammari, Saad Awadh Alanazi & Fahad Ahmad - 2022 - Complexity 2022:1-11.
    The liver is the human body’s mandatory organ, but detecting liver disease at an early stage is very difficult due to the hiddenness of symptoms. Liver diseases may cause loss of energy or weakness when some irregularities in the working of the liver get visible. Cancer is one of the most common diseases of the liver and also the most fatal of all. Uncontrolled growth of harmful cells is developed inside the liver. If diagnosed late, it may cause death. Treatment (...)
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  39.  25
    Modeling the Interaction Networks about the Climate Change on Twitter: A Characterization of its Network Structure.Mary Luz Mouronte-López & Marta Subirán - 2022 - Complexity 2022:1-20.
    This work studies the interaction networks that arise on Twitter in relation to such a relevant topic as climate change. We detected that the largest connected component of these networks presents low values of average degree and betweenness, as well as a small diameter compared to the total number of nodes in the network. The largest connected component of retweeting and quoting networks also exhibits very low negative assortativity. The quoting and retweeting networks have a more hierarchical structure than the (...)
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  40.  26
    Machine Learning Classifiers to Evaluate Data From Gait Analysis With Depth Cameras in Patients With Parkinson’s Disease.Beatriz Muñoz-Ospina, Daniela Alvarez-Garcia, Hugo Juan Camilo Clavijo-Moran, Jaime Andrés Valderrama-Chaparro, Melisa García-Peña, Carlos Alfonso Herrán, Christian Camilo Urcuqui, Andrés Navarro-Cadavid & Jorge Orozco - 2022 - Frontiers in Human Neuroscience 16.
    IntroductionThe assessments of the motor symptoms in Parkinson’s disease are usually limited to clinical rating scales, and it depends on the clinician’s experience. This study aims to propose a machine learning technique algorithm using the variables from upper and lower limbs, to classify people with PD from healthy people, using data from a portable low-cost device. And can be used to support the diagnosis and follow-up of patients in developing countries and remote areas.MethodsWe used Kinect®eMotion system to capture the (...)
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  41.  16
    Data Mining Approach Improving Decision-Making Competency along the Business Digital Transformation Journey: A Case Study – Home Appliances after Sales Service.Hyrmet Mydyti - 2021 - Seeu Review 16 (1):45-65.
    Data mining, as an essential part of artificial intelligence, is a powerful digital technology, which makes businesses predict future trends and alleviate the process of decision-making and enhancing customer experience along their digital transformation journey. This research provides a practical implication – a case study - to provide guidance on analyzing information and predicting repairs in home appliances after sales services business. The main benefit of this practical comparative study of various classification algorithms, by using the Weka tool, is the (...)
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  42.  13
    Predicting Student Performance Using Machine Learning in fNIRS Data.Amanda Yumi Ambriola Oku & João Ricardo Sato - 2021 - Frontiers in Human Neuroscience 15.
    Increasing student involvement in classes has always been a challenge for teachers and school managers. In online learning, some interactivity mechanisms like quizzes are increasingly used to engage students during classes and tasks. However, there is a high demand for tools that evaluate the efficiency of these mechanisms. In order to distinguish between high and low levels of engagement in tasks, it is possible to monitor brain activity through functional near-infrared spectroscopy. The main advantages of this technique are portability, low (...)
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  43.  19
    Breast Cancer Identification from Patients’ Tweet Streaming Using Machine Learning Solution on Spark.Nahla F. Omran, Sara F. Abd-el Ghany, Hager Saleh & Ayman Nabil - 2021 - Complexity 2021 (1):6653508.
    Twitter integrates with streaming data technologies and machine learning to add new value to healthcare. This paper presented a real-time system to predict breast cancer based on streaming patient’s health data from Twitter. The proposed system consists of two major components: developing an offline building model and an online prediction pipeline. For the first component, we made a correlation between the features to determine the correlation between features and reduce the number of features from the Breast Cancer Wisconsin Diagnostic dataset. (...)
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  44.  16
    Gesture Recognition by Ensemble Extreme Learning Machine Based on Surface Electromyography Signals.Fulai Peng, Cai Chen, Danyang Lv, Ningling Zhang, Xingwei Wang, Xikun Zhang & Zhiyong Wang - 2022 - Frontiers in Human Neuroscience 16:911204.
    In the recent years, gesture recognition based on the surface electromyography (sEMG) signals has been extensively studied. However, the accuracy and stability of gesture recognition through traditional machine learning algorithms are still insufficient to some actual application scenarios. To enhance this situation, this paper proposed a method combining feature selection and ensemble extreme learning machine (EELM) to improve the recognition performance based on sEMG signals. First, the input sEMG signals are preprocessed and 16 features are then extracted from each channel. (...)
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  45.  11
    Investigating the Interaction Between Prosody and Pragmatics Quantitatively: A Case Study of the Chinese Discourse Marker ni zhidao.Yi Shan - 2021 - Frontiers in Psychology 12.
    This study briefly describes the prosodic and pragmatic characteristics of the discourse marker ni zhidao in spoken Chinese. It mainly explores the interaction between its prosody and pragmatics using instrumental methods. It is the first attempt to use acoustic and statistical analysis to examine the prosodic parameters and prosody-pragmatics interaction of a Chinese discourse marker. The corpus includes 71 interview conversations totaling more than 30 h, in which 490 discourse marker tokens of ni zhidao were found. Ni zhidao mainly fulfilled (...)
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  46.  11
    Identifying Alcohol Use Disorder With Resting State Functional Magnetic Resonance Imaging Data: A Comparison Among Machine Learning Classifiers.Victor M. Vergara, Flor A. Espinoza & Vince D. Calhoun - 2022 - Frontiers in Psychology 13.
    Alcohol use disorder is a burden to society creating social and health problems. Detection of AUD and its effects on the brain are difficult to assess. This problem is enhanced by the comorbid use of other substances such as nicotine that has been present in previous studies. Recent machine learning algorithms have raised the attention of researchers as a useful tool in studying and detecting AUD. This work uses AUD and controls samples free of any other substance use to assess (...)
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  47.  18
    Attribute analysis and modeling of color harmony based on multi-color feature extraction in real-life scenes.Shuang Wang, Jingyu Liu, Jian Jiang, Yujian Jiang & Jing Lan - 2022 - Frontiers in Psychology 13.
    Color harmony is the focus of many researchers in the field of art and design, and its research results have been widely used in artistic creation and design activities. With the development of signal processing and artificial intelligence technology, new ideas and methods are provided for color harmony theory and color harmony calculation. In this article, psychological experimental methods and information technology are combined to design and quantify the 16-dimensional physical features of multiple colors, including multi-color statistical features and multi-color (...)
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  48.  15
    Clinical Recognition of Sensory Ataxia and Cerebellar Ataxia.Qing Zhang, Xihui Zhou, Yajun Li, Xiaodong Yang & Qammer H. Abbasi - 2021 - Frontiers in Human Neuroscience 15.
    Ataxia is a kind of external characteristics when the human body has poor coordination and balance disorder, it often indicates diseases in certain parts of the body. Many internal factors may causing ataxia; currently, observed external characteristics, combined with Doctor’s personal clinical experience play main roles in diagnosing ataxia. In this situation, different kinds of diseases may be confused, leading to the delay in treatment and recovery. Modern high precision medical instruments would provide better accuracy but the economic cost is (...)
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  49.  16
    Predicting Coronavirus Pandemic in Real-Time Using Machine Learning and Big Data Streaming System.Xiongwei Zhang, Hager Saleh, Eman M. G. Younis, Radhya Sahal & Abdelmgeid A. Ali - 2020 - Complexity 2020:1-10.
    Twitter is a virtual social network where people share their posts and opinions about the current situation, such as the coronavirus pandemic. It is considered the most significant streaming data source for machine learning research in terms of analysis, prediction, knowledge extraction, and opinions. Sentiment analysis is a text analysis method that has gained further significance due to social networks’ emergence. Therefore, this paper introduces a real-time system for sentiment prediction on Twitter streaming data for tweets about the coronavirus pandemic. (...)
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  50.  25
    Supervised Speaker Diarization Using Random Forests: A Tool for Psychotherapy Process Research.Lukas Fürer, Nathalie Schenk, Volker Roth, Martin Steppan, Klaus Schmeck & Ronan Zimmermann - 2020 - Frontiers in Psychology 11.
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