PARALLEL ARCHITECTURES AND INTRINSICALLY PARALLEL ALGORITHMS: GENETIC ALGORITHMS

1994 ◽  
Vol 05 (01) ◽  
pp. 95-112 ◽  
Author(s):  
R. CAMPANINI ◽  
G. DI CARO ◽  
M. VILLANI ◽  
I. D’ANTONE ◽  
G. GIUSTI

Genetic algorithms are search or classification algorithms based on natural models. They present a high degree of internal parallelism. We developed two versions, differing in the way the population is organized and we studied and compared their characteristics and performances when applied to the optimization of multidimensional function problems. All the implementations are realized on transputer networks.

2020 ◽  
pp. 862-871
Author(s):  
Saleem Zoughbi

The ever-developing technology is multifaceted, not only in technical specifications, but also in mode, type and characteristics. New technologies are designed and produced, new ways of using these technologies also are being suggested, tested and adopted. Telecommunications and digital technology provide today remarkable smart technologies that enable people to capture, process, maintain, disseminate and store efficiently all kinds of information at very fast speed, with high degree of efficiency and correctness. Much of government data collected are continuously affected by the development in such technology. Recent trends of technology currently and for 2017 and beyond have shown that the impact of such trends will enhance the impact on the way governments handle data. This chapter presents an overview of such trends. However, a common strategy for government data should be developed in a concise way that will guide the process of dealing with the trends of modern technologies. Therefore government data platform will adopt new technologies, new hardware and software but essentially the way government data is kept and managed still remain the same, just new tools have been adopted.


Author(s):  
Angel Fernando Kuri-Morales

The evaluation of software reliability depends on a) The definition of an adequate measure of correctness and b) A practical tool that allows such measurement. Once the proper metric has been defined it is needed to estimate whether a given software system reaches its optimum value or how far away this software is from it. Typically, the choice of a given metric is limited by the ability to optimize it: mathematical considerations traditionally curtail such choice. However, modern optimization techniques (such as Genetic Algorithms [GAs]) do not exhibit the limitations of classical methods and, therefore, do not limit such choice. In this work the authors describe GAs, the typical limitations for measurement of software reliability (MSR) and the way GAs may help to overcome them.


Author(s):  
Saleem Zoughbi

The ever-developing technology is multifaceted, not only in technical specifications, but also in mode, type and characteristics. New technologies are designed and produced, new ways of using these technologies also are being suggested, tested and adopted. Telecommunications and digital technology provide today remarkable smart technologies that enable people to capture, process, maintain, disseminate and store efficiently all kinds of information at very fast speed, with high degree of efficiency and correctness. Much of government data collected are continuously affected by the development in such technology. Recent trends of technology currently and for 2017 and beyond have shown that the impact of such trends will enhance the impact on the way governments handle data. This chapter presents an overview of such trends. However, a common strategy for government data should be developed in a concise way that will guide the process of dealing with the trends of modern technologies. Therefore government data platform will adopt new technologies, new hardware and software but essentially the way government data is kept and managed still remain the same, just new tools have been adopted.


2000 ◽  
Vol 1699 (1) ◽  
pp. 101-106 ◽  
Author(s):  
A. Raja Shekharan

Pavement deterioration models are indispensable for many purposes; as a result, a number of models are in use. Models with simple equation forms are easier to use, but frequently such models may not suffice for many purposes. Consequently, complex nonlinear forms of models are to be considered. However, determination of the solution to a complex model form is not an easy task. There are various methods of obtaining solutions to such models, with each method having its own advantages and disadvantages. The use of genetic algorithms for model development is examined in this study. A very brief description of genetic algorithms is included, and their application for the development of a model is illustrated. Five models of varied complexities, extracted from the literature, are employed to create databases in which the relationship between the response and the predictor variables is known. The solutions to the models are developed employing genetic algorithms. The results indicate a high degree of accuracy, which suggests that genetic algorithms are useful as a tool for development of solutions to pavement deterioration models.


2018 ◽  
Vol 8 (1) ◽  
Author(s):  
Shalini Jain ◽  
Nalin Chhibber ◽  
Sweta Kandi

In this paper, we intend to apply the principles of genetic algorithms along with simulated annealing to cryptanalyze a mono-alphabetic substitution cipher. The type of attack used for cryptanalysis is a ciphertext-only attack in which we don’t know any plaintext. In genetic algorithms and simulated annealing, for ciphertext-only attack, we need to have the solution space or any method to match the decrypted text to the language text. However, the challenge is to implement the project while maintaining computational efficiency and a high degree of security. We carry out three attacks, the first of which uses genetic algorithms alone, the second which uses simulated annealing alone and the third which uses a combination of genetic algorithms and simulated annealing.


Nordlit ◽  
2007 ◽  
Vol 11 (2) ◽  
pp. 1
Author(s):  
Annie Bourguinon

The Swedish writer Per Olof Sundman (1922-1992) wrote mostly short stories and novels, but also reportages. The paper deals with two reportages from the Lofoten islands, Människor vid hav (1966, “People by the sea”) and Lofoten, sommar (1973, “Lofoten, summer”) The choice of the Lofoten islands as a subject is related to a fascination Sundman felt towards northern and arctic regions, a fascination he also expressed in a number of fictional narratives and in the documentary novel Ingenjör Andrées luftfärd (1967. English title: The Flight of the Eagle) A question that arises almost immediately is whether that fascination affects the way the reporter works and how it affects it. How does Sundman look at the Lofoten? What does he take notice of and tell us about? What kind of image does he give? And how does he understand his own role, his function as an investigator in an environment which is neither his own nor his postulated readers’ usual environment? Another question deals with the relationship between the reportages from the Lofoten and the author’s other works. Are the reportages easy to recognize as Sundmanian texts, can Sundman’s “signature” be traced in them? It appears that “People by the sea” and “Lofoten, summer” are not merely informative texts. They also to a rather high degree suggest an atmosphere, using among other things inherited representations and judgements to that purpose. Those reportages turn out to be strongly literary texts, in the traditional meaning of the word.


PLoS ONE ◽  
2021 ◽  
Vol 16 (3) ◽  
pp. e0247981
Author(s):  
Qian Shen ◽  
Yating Tao

Stance markers are critical linguistic devices for writers to convey their personal attitudes, judgments or assessments about the proposition of certain messages. Following Hyland’s framework of stance, this study investigated the distribution of stance markers in two different genres: medical research articles (medical RA) and newspaper opinion columns (newspaper OC). The corpus constructed for the investigation includes 52 medical research articles and 175 newspaper opinion articles, which were both written in English and published from January to April in 2020 with the topic focusing on COVID-19. The findings of this study demonstrated that the occurrences of stance markers in newspaper OC were far more frequent than those in medical RA, indicating the different conventions of these two genres. Despite the significant difference in the occurrences of stance markers between the two sub-corpora, similarities of the most frequent stance markers in two genres were also highlighted. The study indicated that the topic content seems to play an important role in shaping the way of how writers construct their stance. The lack of information or evidence on the topic of COVID-19 could restrain writers from making high degree of commitment to their claims, which make them adopt a more tentative stance to qualify their statements.


2021 ◽  
Vol 8 (10) ◽  
Author(s):  
Christina O. Carlisi ◽  
Kyle Reed ◽  
Fleur G. L. Helmink ◽  
Robert Lachlan ◽  
Darren P. Cosker ◽  
...  

Emotional facial expressions critically impact social interactions and cognition. However, emotion research to date has generally relied on the assumption that people represent categorical emotions in the same way, using standardized stimulus sets and overlooking important individual differences. To resolve this problem, we developed and tested a task using genetic algorithms to derive assumption-free, participant-generated emotional expressions. One hundred and five participants generated a subjective representation of happy, angry, fearful and sad faces. Population-level consistency was observed for happy faces, but fearful and sad faces showed a high degree of variability. High test–retest reliability was observed across all emotions. A separate group of 108 individuals accurately identified happy and angry faces from the first study, while fearful and sad faces were commonly misidentified. These findings are an important first step towards understanding individual differences in emotion representation, with the potential to reconceptualize the way we study atypical emotion processing in future research.


2022 ◽  
Vol 16 (3) ◽  
pp. 1-37
Author(s):  
Robert A. Sowah ◽  
Bernard Kuditchar ◽  
Godfrey A. Mills ◽  
Amevi Acakpovi ◽  
Raphael A. Twum ◽  
...  

Class imbalance problem is prevalent in many real-world domains. It has become an active area of research. In binary classification problems, imbalance learning refers to learning from a dataset with a high degree of skewness to the negative class. This phenomenon causes classification algorithms to perform woefully when predicting positive classes with new examples. Data resampling, which involves manipulating the training data before applying standard classification techniques, is among the most commonly used techniques to deal with the class imbalance problem. This article presents a new hybrid sampling technique that improves the overall performance of classification algorithms for solving the class imbalance problem significantly. The proposed method called the Hybrid Cluster-Based Undersampling Technique (HCBST) uses a combination of the cluster undersampling technique to under-sample the majority instances and an oversampling technique derived from Sigma Nearest Oversampling based on Convex Combination, to oversample the minority instances to solve the class imbalance problem with a high degree of accuracy and reliability. The performance of the proposed algorithm was tested using 11 datasets from the National Aeronautics and Space Administration Metric Data Program data repository and University of California Irvine Machine Learning data repository with varying degrees of imbalance. Results were compared with classification algorithms such as the K-nearest neighbours, support vector machines, decision tree, random forest, neural network, AdaBoost, naïve Bayes, and quadratic discriminant analysis. Tests results revealed that for the same datasets, the HCBST performed better with average performances of 0.73, 0.67, and 0.35 in terms of performance measures of area under curve, geometric mean, and Matthews Correlation Coefficient, respectively, across all the classifiers used for this study. The HCBST has the potential of improving the performance of the class imbalance problem, which by extension, will improve on the various applications that rely on the concept for a solution.


2014 ◽  
Vol 2014 ◽  
pp. 1-7 ◽  
Author(s):  
Ali Al Haidan ◽  
Osama Abu-Hammad ◽  
Najla Dar-Odeh

Our aim was to predict tooth surface loss in individuals without the need to conduct clinical examinations. Artificial neural networks (ANNs) were used to construct a mathematical model. Input data consisted of age, smoker status, type of tooth brush, brushing, and consumption of pickled food, fizzy drinks, orange, apple, lemon, and dried seeds. Output data were the sum of tooth surface loss scores for selected teeth. The optimized constructed ANN consisted of 2-layer network with 15 neurons in the first layer and one neuron in the second layer. The data of 46 subjects were used to build the model, while the data of 15 subjects were used to test the model. Accepting an error of ±5 scores for all chosen teeth, the accuracy of the network becomes more than 80%. In conclusion, this study shows that modeling tooth surface loss using ANNs is possible and can be achieved with a high degree of accuracy.


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