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IEEE Access ; : 2023/01/01 00:00:00.000, 2023.
Article in English | Scopus | ID: covidwho-2229883

ABSTRACT

In recent years, some phenomena such as the COVID-19 pandemic have caused the autonomous vehicle (AV) to attract much attention in theoretical and applied research. This paper addresses the optimization problem of a heterogeneous fleet that consists of autonomous electric vehicles (AEVs) and conventional vehicles (CVs) in a Business-to-Consumer (B2C) distribution system. The absence of the driver in AEVs results in the necessity of studying two factors in modeling the problem, namely time windows in the routing plan and different compartments in the loading space of AEVs. The arrival and departure times of the AEV at the customer’s location must be pre-planned, because, the AEV is not able to decide what to do if the customer is late at this point. Also, due to increasing the security of the loads inside the AEVs and the lack of control of the driver during the delivery of the goods, each customer should only have access to his/her orders. Therefore, the compartmentation of the AEV’s loading area has been proposed in its conceptual model. We developed a mathematical model based on these properties and proposed a hybrid algorithm, including variable neighborhood search (VNS) via neighborhood structure of large neighborhood search (LNS), namely the VLNS algorithm. The numerical results shed light on the proficiency of the algorithm in terms of solution time and solution quality. In addition, employing AEVs in the mixed fleet is considered to be desirable based on the operational cost of the fleet. Author

2.
Int. J. Knowl. Learn. ; 15(2):185-202, 2022.
Article in English | Web of Science | ID: covidwho-1790648

ABSTRACT

The coronavirus pandemic has spread to several countries resulting in one of the largest educational disruptions in history. To address this challenge, the use of distance education in many institutions is implemented by adopting online learning platforms. The administrators of these platforms are scared off by the high number of at-risk learners. Early prediction of these learners can allow instructors to encourage them to complete their classes. Several works have explored data mining techniques to detect learners' failures. Our study is different from the existing ones in different ways: 1) it is a new approach based on the dynamic profiles of the learners;2) it seeks to determine whether the use of a more accurate classification can be useful or not;3) it provides a systematic comparison with other methods and works. The effectiveness of our prediction technique is assessed through the use of real data gathered from computer science courses.

3.
5th International Conference on IoT in Social, Mobile, Analytics and Cloud (I-SMAC) ; : 1049-1054, 2021.
Article in English | Web of Science | ID: covidwho-1779070

ABSTRACT

Security across network has become a major concern during this Covid-19 scenario. Security threats happens due to variety of reasons like theft of analytical property, software attacks, identity theft, stealing of equipment or information, sabotage, and information extraction. The wrong use of protocols over network also causes security threat. Introduction of data mining techniques in network security field plays a major role with data extraction, data transformation and analysation of the huge amount of data. The various data mining algorithms provides an insight to analyse and predict the data and the threats over the computer networks. This paper focusses on the approaches to predict security threats over networks using various classification algorithms. The four-classification algorithm majorly focussed here is Naive Bayes Classifier, Decision Tree Classifier, K Nearest Neighbours and Logistic Regression. It compares the performance of the above-mentioned classification algorithms to detect the threats.

4.
12th International Conference on Innovations in Bio-Inspired Computing and Applications, IBICA 2021 and 11th World Congress on Information and Communication Technologies, WICT 2021 ; 419 LNNS:65-77, 2022.
Article in English | Scopus | ID: covidwho-1750563

ABSTRACT

Information content that is inaccurate, misleading, or whose source cannot be verified is fake news. This content could be created to purposely harm people’s reputations, deceive them, or draw attention to themselves. Since December 2019, the epidemic of coronavirus disease has sparked considerable alarm and has had a significant impact on people’s lives. Also, misinformation on COVID-19 is frequently spread on social media. This project aims to use Machine learning algorithms to recognize fraudulent news. For this, we use seven essential algorithms, namely Logistic regression, Naïve Bayes, Support Vector Machine (SVM), Neural Network (NN), K-Nearest Neighbours (KNN), Decision tree, and Random forest. We compared the results of all the algorithms stated above and found that neural networks and random forest achieved the highest accuracy of 83%. © 2022, The Author(s), under exclusive license to Springer Nature Switzerland AG.

5.
EPMA J ; 12(3): 365-381, 2021 Sep.
Article in English | MEDLINE | ID: covidwho-1392024

ABSTRACT

Background: The bacteraemia prediction is relevant because sepsis is one of the most important causes of morbidity and mortality. Bacteraemia prognosis primarily depends on a rapid diagnosis. The bacteraemia prediction would shorten up to 6 days the diagnosis, and, in conjunction with individual patient variables, should be considered to start the early administration of personalised antibiotic treatment and medical services, the election of specific diagnostic techniques and the determination of additional treatments, such as surgery, that would prevent subsequent complications. Machine learning techniques could help physicians make these informed decisions by predicting bacteraemia using the data already available in electronic hospital records. Objective: This study presents the application of machine learning techniques to these records to predict the blood culture's outcome, which would reduce the lag in starting a personalised antibiotic treatment and the medical costs associated with erroneous treatments due to conservative assumptions about blood culture outcomes. Methods: Six supervised classifiers were created using three machine learning techniques, Support Vector Machine, Random Forest and K-Nearest Neighbours, on the electronic health records of hospital patients. The best approach to handle missing data was chosen and, for each machine learning technique, two classification models were created: the first uses the features known at the time of blood extraction, whereas the second uses four extra features revealed during the blood culture. Results: The six classifiers were trained and tested using a dataset of 4357 patients with 117 features per patient. The models obtain predictions that, for the best case, are up to a state-of-the-art accuracy of 85.9%, a sensitivity of 87.4% and an AUC of 0.93. Conclusions: Our results provide cutting-edge metrics of interest in predictive medical models with values that exceed the medical practice threshold and previous results in the literature using classical modelling techniques in specific types of bacteraemia. Additionally, the consistency of results is reasserted because the three classifiers' importance ranking shows similar features that coincide with those that physicians use in their manual heuristics. Therefore, the efficacy of these machine learning techniques confirms their viability to assist in the aims of predictive and personalised medicine once the disease presents bacteraemia-compatible symptoms and to assist in improving the healthcare economy.

6.
Ann Oper Res ; : 1-32, 2021 Jul 22.
Article in English | MEDLINE | ID: covidwho-1321768

ABSTRACT

In the aftermath of the global financial crisis and ongoing COVID-19 pandemic, investors face challenges in understanding price dynamics across assets. This paper explores the performance of the various type of machine learning algorithms (MLAs) to predict mid-price movement for Bitcoin futures prices. We use high-frequency intraday data to evaluate the relative forecasting performances across various time frequencies, ranging between 5 and 60-min. Our findings show that the average classification accuracy for five out of the six MLAs is consistently above the 50% threshold, indicating that MLAs outperform benchmark models such as ARIMA and random walk in forecasting Bitcoin futures prices. This highlights the importance and relevance of MLAs to produce accurate forecasts for bitcoin futures prices during the COVID-19 turmoil.

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