scholarly journals Effective models and predictability of chaotic multiscale systems via machine learning

2020 ◽  
Vol 102 (5) ◽  
Author(s):  
Francesco Borra ◽  
Angelo Vulpiani ◽  
Massimo Cencini
Author(s):  
Lorenzo Barberis Canonico ◽  
Nathan J. McNeese ◽  
Chris Duncan

Internet technologies have created unprecedented opportunities for people to come together and through their collective effort generate large amounts of data about human behavior. With the increased popularity of grounded theory, many researchers have sought to use ever-increasingly large datasets to analyze and draw patterns about social dynamics. However, the data is simply too big to enable a single human to derive effective models for many complex social phenomena. Computational methods offer a unique opportunity to analyze a wide spectrum of sociological events by leveraging the power of artificial intelligence. Within the human factors community, machine learning has emerged as the dominant AI-approach to deal with big data. However, along with its many benefits, machine learning has introduced a unique challenge: interpretability. The models of macro-social behavior generated by AI are so complex that rarely can they translated into human understanding. We propose a new method to conduct grounded theory research by leveraging the power of machine learning to analyze complex social phenomena through social network analysis while retaining interpretability as a core feature.


2021 ◽  
Author(s):  
Yashpal Ramakrishnaiah ◽  
Levin Kuhlmann ◽  
Sonika Tyagi

AbstractMotivationLncRNAs are much more versatile and are involved in many regulatory roles inside the cell than previously believed. Existing databases lack consistencies in lncRNA annotations, and the functionality of over 95% of the known lncRNAs are yet to be established. LncRNA transcript identification involves discriminating them from their coding counterparts, which can be done with traditional experimental approaches, or via in silico methods. The later approach employs various computational algorithms, including machine learning classifiers to predict the lncRNA forming potential of a given transcript. Such approaches provide an economical and faster alternative to the experimental methods. Current in silico methods mainly use primary-sequence based features to build predictive models limiting their accuracy and robustness. Moreover, many of these tools make use of reference genome based features, in consequence making them unsuitable for non-model species. Hence, there is a need to comprehensively evaluate the efficacy of different predictive features to build computational models. Additionally, effective models will have to provide maximum prediction performance using the least number of features in a species-agnostic manner.It is popularly known in the protein world that “structure is function”. This also applies to lncRNAs as their functional mechanisms are similar to those of proteins. Generally, lncRNA function by structurally binding to its target proteins or nucleic acid forming complexes. The secondary structures of the lncRNAs are modular providing interaction sites for their interactome made of DNA, RNA, and proteins. Through these interactions, they epigenetically regulate cellular biology, thereby forming a layer of genomic programming on top of the coding genes. We demonstrate that in addition to using transcript sequence, we can provide comprehensive functional annotation by collating their interactome and secondary structure information.ResultsHere, we evaluated an exhaustive list of sequence-based, secondary-structure, interactome, and physicochemical features for their ability to predict the lncRNA potential of a transcript. Based on our analysis, we built different machine learning models using optimum feature-set. We found our model to be on par or exceeding the execution of the state-of-the-art methods with AUC values of over 0.9 for a diverse collection of species tested. Finally, we built a pipeline called linc2function that provides the information necessary to functionally annotate a lncRNA conveniently in a single window.AvailabilityThe source code is accessible use under MIT license in standalone mode, and as a webserver (https://bioinformaticslab.erc.monash.edu/linc2function).


2020 ◽  
Vol 10 (19) ◽  
pp. 7009
Author(s):  
Jiyeon Kim ◽  
Minsun Shim ◽  
Seungah Hong ◽  
Yulim Shin ◽  
Eunjung Choi

As the number of Internet of Things (IoT) devices connected to the network rapidly increases, network attacks such as flooding and Denial of Service (DoS) are also increasing. These attacks cause network disruption and denial of service to IoT devices. However, a large number of heterogenous devices deployed in the IoT environment make it difficult to detect IoT attacks using traditional rule-based security solutions. It is challenging to develop optimal security models for each type of the device. Machine learning (ML) is an alternative technique that allows one to develop optimal security models based on empirical data from each device. We employ the ML technique for IoT attack detection. We focus on botnet attacks targeting various IoT devices and develop ML-based models for each type of device. We use the N-BaIoT dataset generated by injecting botnet attacks (Bashlite and Mirai) into various types of IoT devices, including a Doorbell, Baby Monitor, Security Camera, and Webcam. We develop a botnet detection model for each device using numerous ML models, including deep learning (DL) models. We then analyze the effective models with a high detection F1-score by carrying out multiclass classification, as well as binary classification, for each model.


2021 ◽  
Author(s):  
Ihor Ponomarenko ◽  
◽  
Serhii Siabro ◽  

The article reveals the peculiarities of modern companies development in the conditions of entrepreneurial activity digitalization and transformation by reorientation to the online environment, which allows to increase the level of competitiveness. The growing need of most users to implement individual approaches to product presentation by companies has been proven. Best practices show the success of personalized marketing in the process of increasing consumer loyalty to the brand. The peculiarities of using personalized marketing to increase the level of the target audience loyalty are revealed. The essential role of machine learning methods in the processing of structured and unstructured information obtained through digital channels for the construction of effective models of communications personalization with an individual client. The main formation stages of an effective strategy of personalized marketing are given. Personalization of marketing on the basis of profiling involves operational characterization of an individual visitor according to a system of collected indicators and the implementation of machine learning appropriate model, in most cases modern practices use different neural network architectures, achieving a high level of reliability. Active software development enables companies to apply ready-made solutions to optimize marketing strategy by reorienting to personalized offers to individual customers. Examples of personalization introduction by individual companies in the implementation of appropriate digital marketing tools are presented. Social media is one of the main resources used by the vast majority of the population in the digital environment. Companies actively use social media marketing to communicate with the target audience, providing access to thematic content at regular intervals, which helps stimulate consumer interest in the products of a particular brand. The introduction of innovations encourages companies to constantly adjust the use of digital marketing tools, refocusing on more effective ones in order to strengthen the level of communication with the target audience and increase conversions.


2020 ◽  
Vol 101 (24) ◽  
Author(s):  
Jonas B. Rigo ◽  
Andrew K. Mitchell

2018 ◽  
Vol 232 ◽  
pp. 01005
Author(s):  
Zhengye Chen

With the development of financial consumption, demand for credit has soared. Since the bank has detailed client data, it is important to build effective models to distinguish between high-risk groups and low-risk groups. However, traditional credit evaluation methods including expert opinion, credit rating and credit scoring are very subjective and inaccurate. Moreover, the data are highly unbalanced since the number of high-risk groups is significantly less than that of low-risk groups. Progress in machine learning makes it possible to conduct accurate credit analysis. The tree-based machine learning models are particularly suitable for the unbalanced credit data by weighting the credit individuals. We apply a series of tree-based machine learning models to analyze the German Credit Data from the UCI Repository of Machine Learning Databases.


Crystals ◽  
2021 ◽  
Vol 11 (4) ◽  
pp. 432
Author(s):  
Yong Chen ◽  
Litao Wen ◽  
Shuncheng Wang ◽  
Zhibo Zhang ◽  
Cuicui Yin ◽  
...  

As-cast irons and aluminum alloys are used in various industrial fields and their phase and microstructure properties are strongly affected by the undercooling degree. However, existing studies regarding the undercooling degree are mostly limited to qualitative analyses. In this paper, a quantitative analysis of the undercooling degree is performed by collecting experimental data and employing machine learning. Nine machining learning models including Random Forest (RF), eXtreme Gradient Boosting (XGBOOST), Ridge Regression (RIDGE) and Gradient Boosting Regressor (GBDT) methods are used to predict the undercooling degree via six features, which include the cooling rate (CR), mean atomic covalence radius (MAR) and mismatch (MM). Four additional effective models of machine learning algorithms are then selected for a further analysis and cross-validation. Finally, the optimal machine learning model is selected for the dataset and the best combination of features is found by comparing the prediction accuracy of all possible feature combinations. It is found that RF model with CR and MAR features has the optimal performance results for predicting the undercooling degree.


2020 ◽  
Vol 43 ◽  
Author(s):  
Myrthe Faber

Abstract Gilead et al. state that abstraction supports mental travel, and that mental travel critically relies on abstraction. I propose an important addition to this theoretical framework, namely that mental travel might also support abstraction. Specifically, I argue that spontaneous mental travel (mind wandering), much like data augmentation in machine learning, provides variability in mental content and context necessary for abstraction.


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