hidden patterns
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2021 ◽  
Vol 0 (0) ◽  
Author(s):  
Mitra Sadat Lavasani ◽  
Nahid Raeisi Ardali ◽  
Rahmat Sotudeh-Gharebagh ◽  
Reza Zarghami ◽  
János Abonyi ◽  
...  

Abstract Big data is an expression for massive data sets consisting of both structured and unstructured data that are particularly difficult to store, analyze and visualize. Big data analytics has the potential to help companies or organizations improve operations as well as disclose hidden patterns and secret correlations to make faster and intelligent decisions. This article provides useful information on this emerging and promising field for companies, industries, and researchers to gain a richer and deeper insight into advancements. Initially, an overview of big data content, key characteristics, and related topics are presented. The paper also highlights a systematic review of available big data techniques and analytics. The available big data analytics tools and platforms are categorized. Besides, this article discusses recent applications of big data in chemical industries to increase understanding and encourage its implementation in their engineering processes as much as possible. Finally, by emphasizing the adoption of big data analytics in various areas of process engineering, the aim is to provide a practical vision of big data.


2021 ◽  
Author(s):  
Rami Mohawesh ◽  
Shuxiang Xu ◽  
Matthew Springer ◽  
Muna Al-Hawawreh ◽  
Sumbal Maqsood

Online reviews have a significant influence on customers' purchasing decisions for any products or services. However, fake reviews can mislead both consumers and companies. Several models have been developed to detect fake reviews using machine learning approaches. Many of these models have some limitations resulting in low accuracy in distinguishing between fake and genuine reviews. These models focused only on linguistic features to detect fake reviews and failed to capture the semantic meaning of the reviews. To deal with this, this paper proposes a new ensemble model that employs transformer architecture to discover the hidden patterns in a sequence of fake reviews and detect them precisely. The proposed approach combines three transformer models to improve the robustness of fake and genuine behaviour profiling and modelling to detect fake reviews. The experimental results using semi-real benchmark datasets showed the superiority of the proposed model over state-of-the-art models.


2021 ◽  
Vol 9 ◽  
Author(s):  
Senthil Kumar Narayanasamy ◽  
Kathiravan Srinivasan ◽  
Saeed Mian Qaisar ◽  
Chuan-Yu Chang

The exponential growth of social media users has changed the dynamics of retrieving the potential information from user-generated content and transformed the paradigm of information-retrieval mechanism with the novel developments on the concept of “web of data”. In this regard, our proposed Ontology-Based Sentiment Analysis provides two novel approaches: First, the emotion extraction on tweets related to COVID-19 is carried out by a well-formed taxonomy that comprises possible emotional concepts with fine-grained properties and polarized values. Second, the potential entities present in the tweet can be analyzed for semantic associativity. The extraction of emotions can be performed in two cases: (i) words directly associated with the emotional concepts present in the taxonomy and (ii) words indirectly present in the emotional concepts. Though the latter case is very challenging in processing the tweets to find the hidden patterns and extract the meaningful facts associated with it, our proposed work is able to extract and detect almost 81% of true positives and considerably able to detect the false negatives. Finally, the proposed approach's superior performance is witnessed from its comparison with other peer-level approaches.


2021 ◽  
Author(s):  
Iris Liu ◽  
Kayla de la Haye ◽  
Andres Abeliuk ◽  
Abigail L. Horn

Food environments can profoundly impact diet and related diseases. Effective, robust measures of food environment nutritional quality are required by researchers and policymakers investigating their effects on individual dietary behavior and designing targeted public health interventions. The most commonly used indicators of food environment nutritional quality are limited to measuring the binary presence or absence of entire categories of food outlet type, such as 'fast-food' outlets, which can range from burger joints to salad chains. This work introduces a summarizing indicator of restaurant nutritional quality that exists along a continuum, and which can be applied at scale to make distinctions between diverse restaurants within and across categories of food outlets. Verified nutrient data for a set of over 500 chain restaurants is used as ground-truth data to validate the approach. We illustrate the use of the validated indicator to characterize food environments at the scale of an entire jurisdiction, demonstrating how making distinctions between different shades of nutritiousness can help to uncover hidden patterns of disparities in access to high nutritional quality food.


Genes ◽  
2021 ◽  
Vol 12 (11) ◽  
pp. 1814
Author(s):  
Yuanyuan Han ◽  
Lan Huang ◽  
Fengfeng Zhou

Biological omics data such as transcriptomes and methylomes have the inherent “large p small n” paradigm, i.e., the number of features is much larger than that of the samples. A feature selection (FS) algorithm selects a subset of the transcriptomic or methylomic biomarkers in order to build a better prediction model. The hidden patterns in the FS solution space make it challenging to achieve a feature subset with satisfying prediction performances. Swarm intelligence (SI) algorithms mimic the target searching behaviors of various animals and have demonstrated promising capabilities in selecting features with good machine learning performances. Our study revealed that different SI-based feature selection algorithms contributed complementary searching capabilities in the FS solution space, and their collaboration generated a better feature subset than the individual SI feature selection algorithms. Nine SI-based feature selection algorithms were integrated to vote for the selected features, which were further refined by the dynamic recursive feature elimination framework. In most cases, the proposed Zoo algorithm outperformed the existing feature selection algorithms on transcriptomics and methylomics datasets.


Axioms ◽  
2021 ◽  
Vol 10 (4) ◽  
pp. 307
Author(s):  
Francisco Louzada ◽  
Diego Carvalho do Nascimento ◽  
Osafu Augustine Egbon

Spatial documentation is exponentially increasing given the availability of Big Data in the Internet of Things, enabled by device miniaturization and data storage capacity. Bayesian spatial statistics is a useful statistical tool to determine the dependence structure and hidden patterns in space through prior knowledge and data likelihood. However, this class of modeling is not yet well explored when compared to adopting classification and regression in machine-learning models, in which the assumption of the spatiotemporal independence of the data is often made, that is an inexistent or very weak dependence. Thus, this systematic review aims to address the main models presented in the literature over the past 20 years, identifying the gaps and research opportunities. Elements such as random fields, spatial domains, prior specification, the covariance function, and numerical approximations are discussed. This work explores the two subclasses of spatial smoothing: global and local.


Technologies ◽  
2021 ◽  
Vol 9 (4) ◽  
pp. 87
Author(s):  
Esra Alzaghoul ◽  
Mohammad Belal Al-Zoubi ◽  
Ruba Obiedat ◽  
Fawaz Alzaghoul

Geospatial data analysis can be improved by using data-driven algorithms and techniques from the machine learning field. The aim of our research is to discover interrelationships among topographical data to support the decision-making process. In this paper, we extracted topographical geospatial data from digital elevation model (DEM) raster images, and we discovered hidden patterns among this data based on the K-means clustering algorithm, to uncover relationships and find clusters of elevation values for the area of Jordan. We introduce a method for querying and clustering geospatial data and we built an interactive map accordingly. The method discovers hidden patterns and uncovers relationships in given large datasets. We demonstrate the applicability of the method using the Jordan map and we report on geospatial data analysis and retrieval improvements. The results show that the optimal decision is in favor of four clusters (classes). The first class includes the high elevation values, the second class includes the very low elevation values, the third class includes the medium-high elevation values, and the fourth class includes the very high elevation values.


Galaxies ◽  
2021 ◽  
Vol 9 (4) ◽  
pp. 92
Author(s):  
Lawrence Rudnick ◽  
Debora Katz ◽  
Lerato Sebokolodi

We present a simple but powerful technique for the analysis of polarized emission from radio galaxies and other objects. It is based on the fact that images of Stokes parameters often contain considerably more information than is available in polarized intensity and angle maps. In general, however, the orientation of the Stokes parameters will not be matched to the position angles of structures in the source. Polarization tomography, the technique presented in this paper, consists of making a series of single linear Stokes parameter images, S(ρ), where each image is rotated by an angle ρ from the initial orientation of Q and U. Examination of these images, in a series of still frames or a movie, reveals often hidden patterns of polarization angles, as well as structures that were obscured by the presence of overlapping polarized emission. We provide both cartoon examples and a quick look at the complex polarized structure in Cygnus A.


Author(s):  
Mohsen Dehghani Tafti ◽  
◽  
Masoud Ahmadzad-Asl ◽  
Mehrnaz Fallah Tafti ◽  
Gholamhossein Memarian ◽  
...  

It is often believed and expected that a clear relationship exists between human personality and human preferences in architecture. However, by reviewing the findings of previous studies, it is found out that such expectation is not necessarily true, as there is no consistency among previous findings. This study provides a critical review and overall classification of various research approaches and assessment methods used in previous studies. In addition, the theoretical and practical shortcomings of each approach have been introduced. Next, the psychological approach is recommended as a more feasible one, and the studies carried out using this approach are structurally analyzed. The theoretical frameworks, strategies and the execution tactics of these researches were critically reviewed. Finally, a systematic quadruple model was suggested for evaluating aesthetic experiences and judgments. After presenting the manifest and the hidden variables with this model, machine learning helped to discover the hidden patterns in the personality and human preferences.


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