Results for 'Naive Bayes'

999 found
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  1.  23
    A naïve Bayes classifier for planning transfusion requirements in heart surgery.Gabriele Cevenini, Emanuela Barbini, Maria R. Massai & Paolo Barbini - 2013 - Journal of Evaluation in Clinical Practice 19 (1):25-29.
  2.  31
    Optimized Naive-Bayes and Decision Tree Approaches for fMRI Smoking Cessation Classification.Amirhessam Tahmassebi, Amir H. Gandomi, Mieke H. J. Schulte, Anna E. Goudriaan, Simon Y. Foo & Anke Meyer-Baese - 2018 - Complexity 2018:1-24.
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  3.  12
    On the efficiency of data collection for multiple Naïve Bayes classifiers.Edoardo Manino, Long Tran-Thanh & Nicholas R. Jennings - 2019 - Artificial Intelligence 275 (C):356-378.
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  4.  36
    Naive probability: A mental model theory of extensional reasoning.Philip Johnson-Laird, Paolo Legrenzi, Vittorio Girotto, Maria Sonino Legrenzi & Jean-Paul Caverni - 1999 - Psychological Review 106 (1):62-88.
    This article outlines a theory of naive probability. According to the theory, individuals who are unfamiliar with the probability calculus can infer the probabilities of events in an extensional way: They construct mental models of what is true in the various possibilities. Each model represents an equiprobable alternative unless individuals have beliefs to the contrary, in which case some models will have higher probabilities than others. The probability of an event depends on the proportion of models in which it (...)
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  5.  34
    A naïve approach for deriving scoring systems to support clinical decision making.Paolo Barbini, Gabriele Cevenini, Simone Furini & Emanuela Barbini - 2014 - Journal of Evaluation in Clinical Practice 20 (1):1-6.
  6.  38
    Naïve and Robust: Class‐Conditional Independence in Human Classification Learning.Jana B. Jarecki, Björn Meder & Jonathan D. Nelson - 2018 - Cognitive Science 42 (1):4-42.
    Humans excel in categorization. Yet from a computational standpoint, learning a novel probabilistic classification task involves severe computational challenges. The present paper investigates one way to address these challenges: assuming class-conditional independence of features. This feature independence assumption simplifies the inference problem, allows for informed inferences about novel feature combinations, and performs robustly across different statistical environments. We designed a new Bayesian classification learning model that incorporates varying degrees of prior belief in class-conditional independence, learns whether or not independence holds, (...)
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  7.  25
    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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  8.  7
    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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  9.  18
    A Methodology to Determine the Subset of Heuristics for Hyperheuristics through Metaearning for Solving Graph Coloring and Capacitated Vehicle Routing Problems.Lucero Ortiz-Aguilar, Martín Carpio, Alfonso Rojas-Domínguez, Manuel Ornelas-Rodriguez, H. J. Puga-Soberanes & Jorge A. Soria-Alcaraz - 2021 - Complexity 2021:1-22.
    In this work, we focus on the problem of selecting low-level heuristics in a hyperheuristic approach with offline learning, for the solution of instances of different problem domains. The objective is to improve the performance of the offline hyperheuristic approach, identifying equivalence classes in a set of instances of different problems and selecting the best performing heuristics in each of them. A methodology is proposed as the first step of a set of instances of all problems, and the generic characteristics (...)
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  10.  15
    The promise and pitfall of automated text-scaling techniques for the analysis of jurisprudential change.Arthur Dyevre - 2020 - Artificial Intelligence and Law 29 (2):239-269.
    I consider the potential of eight text-scaling methods for the analysis of jurisprudential change. I use a small corpus of well-documented German Federal Constitutional Court opinions on European integration to compare the machine-generated scores to scholarly accounts of the case law and legal expert ratings. Naive Bayes, Word2Vec, Correspondence Analysis and Latent Semantic Analysis appear to perform well. Less convincing are the performance of Wordscores, ML Affinity and lexicon-based sentiment analysis. While both the high-dimensionality of judicial texts and (...)
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  11.  14
    CIMA: A Novel Classification-Integrated Moving Average Model for Smart Lighting Intelligent Control Based on Human Presence.Aji Gautama Putrada, Maman Abdurohman, Doan Perdana & Hilal Hudan Nuha - 2022 - Complexity 2022:1-19.
    Smart lighting systems utilize advanced data, control, and communication technologies and allow users to control lights in new ways. However, achieving user comfort, which should be the focus of smart lighting research, is challenging. One cause is the passive infrared sensor that inaccurately detects human presence to control artificial lighting. We propose a novel classification-integrated moving average model method to solve the problem. The moving average increases the Pearson correlation coefficient of motion sensor features to human presence. The classification model (...)
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  12.  8
    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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  13. An Introduction to Information Retrieval.Christopher D. Manning - unknown
    1 Boolean retrieval 1 2 The term vocabulary and postings lists 19 3 Dictionaries and tolerant retrieval 49 4 Index construction 67 5 Index compression 85 6 Scoring, term weighting and the vector space model 109 7 Computing scores in a complete search system 135 8 Evaluation in information retrieval 151 9 Relevance feedback and query expansion 177 10 XML retrieval 195 11 Probabilistic information retrieval 219 12 Language models for information retrieval 237 13 Text classification and Naive (...) 253 14 Vector space classification 289 15 Support vector machines and machine learning on documents 319 16 Flat clustering 349 17 Hierarchical clustering 377 18 Matrix decompositions and latent semantic indexing 403 19 Web search basics 421 20 Web crawling and indexes 443 21 Link analysis 461.. (shrink)
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  14.  14
    データ要約を介した分類器学習法.中安 とし子 末松 伸朗 - 2002 - Transactions of the Japanese Society for Artificial Intelligence 17 (5):565-575.
    Knowledge discovery in databases has been studied intensively recent years. In KDD, inductive classifier learning methods which were developed in statistics and machine learning have been used to extract classification rules from databases. Although in KDD we have to deal with large databases in many cases, many of the previous classifier learning methods are not suitable for large databases. They were designed under assumption that any data in databases is accessible on demand and they usually need to access a datum (...)
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  15.  93
    Adaptive intelligent learning approach based on visual anti-spam email model for multi-natural language.Akbal Omran Salman, Dheyaa Ahmed Ibrahim & Mazin Abed Mohammed - 2021 - Journal of Intelligent Systems 30 (1):774-792.
    Spam electronic mails (emails) refer to harmful and unwanted commercial emails sent to corporate bodies or individuals to cause harm. Even though such mails are often used for advertising services and products, they sometimes contain links to malware or phishing hosting websites through which private information can be stolen. This study shows how the adaptive intelligent learning approach, based on the visual anti-spam model for multi-natural language, can be used to detect abnormal situations effectively. The application of this approach is (...)
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  16.  14
    Homophily-Based Link Prediction in The Facebook Online Social Network: A Rough Sets Approach.Roa A. Aboo Khachfeh & Islam Elkabani - 2015 - Journal of Intelligent Systems 24 (4):491-503.
    Online social networks are highly dynamic and sparse. One of the main problems in analyzing these networks is the problem of predicting the existence of links between users on these networks: the link prediction problem. Many studies have been conducted to predict links using a variety of techniques like the decision tree and the logistic regression approaches. In this work, we will illustrate the use of the rough set theory in predicting links over the Facebook social network based on homophilic (...)
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  17.  13
    Arabic sentiment analysis about online learning to mitigate covid-19.Manal Mostafa Ali - 2021 - Journal of Intelligent Systems 30 (1):524-540.
    The Covid-19 pandemic is forcing organizations to innovate and change their strategies for a new reality. This study collects online learning related tweets in Arabic language to perform a comprehensive emotion mining and sentiment analysis (SA) during the pandemic. The present study exploits Natural Language Processing (NLP) and Machine Learning (ML) algorithms to extract subjective information, determine polarity and detect the feeling. We begin with pulling out the tweets using Twitter APIs and then preparing for intensive preprocessing. Second, the National (...)
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  18.  16
    Cascading k-means with Ensemble Learning: Enhanced Categorization of Diabetic Data.A. S. Manjunath, M. A. Jayaram & Asha Gowda Karegowda - 2012 - Journal of Intelligent Systems 21 (3):237-253.
    . This paper illustrates the applications of various ensemble methods for enhanced classification accuracy. The case in point is the Pima Indian Diabetic Dataset. The computational model comprises of two stages. In the first stage, k-means clustering is employed to identify and eliminate wrongly classified instances. In the second stage, a fine tuning in the classification was effected. To do this, ensemble methods such as AdaBoost, bagging, dagging, stacking, decorate, rotation forest, random subspace, MultiBoost and grading were invoked along with (...)
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  19.  96
    Trust in Intrusion Detection Systems: An Investigation of Performance Analysis for Machine Learning and Deep Learning Models.Basim Mahbooba, Radhya Sahal, Martin Serrano & Wael Alosaimi - 2021 - Complexity 2021:1-23.
    To design and develop AI-based cybersecurity systems ), users can justifiably trust, one needs to evaluate the impact of trust using machine learning and deep learning technologies. To guide the design and implementation of trusted AI-based systems in IDS, this paper provides a comparison among machine learning and deep learning models to investigate the trust impact based on the accuracy of the trusted AI-based systems regarding the malicious data in IDs. The four machine learning techniques are decision tree, K nearest (...)
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  20.  10
    Performance Analysis of an Optimized ANN Model to Predict the Stability of Smart Grid.Ayushi Chahal, Preeti Gulia, Nasib Singh Gill & Jyotir Moy Chatterjee - 2022 - Complexity 2022:1-13.
    The stability of the power grid is concernment due to the high demand and supply to smart cities, homes, factories, and so on. Different machine learning and deep learning models can be used to tackle the problem of stability prediction for the energy grid. This study elaborates on the necessity of IoT technology to make energy grid networks smart. Different prediction models, namely, logistic regression, naïve Bayes, decision tree, support vector machine, random forest, XGBoost, k-nearest neighbor, and optimized artificial (...)
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  21.  9
    Intelligent decision support system approach for predicting the performance of students based on three-level machine learning technique.Li-li Wang, Fang XianWen & Sohaib Latif - 2021 - Journal of Intelligent Systems 30 (1):739-749.
    In this research work, a user-friendly decision support framework is developed to analyze the behavior of Pakistani students in academics. The purpose of this article is to analyze the performance of the Pakistani students using an intelligent decision support system (DSS) based on the three-level machine learning (ML) technique. The neural network used a three-level classifier approach for the prediction of Pakistani student achievement. A self-recorded dataset of 1,011 respondents of graduate students of English and Physics courses are used. The (...)
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  22.  10
    A Hybrid Feature Selection and Ensemble Approach to Identify Depressed Users in Online Social Media.Jingfang Liu & Mengshi Shi - 2022 - Frontiers in Psychology 12.
    Depression has become one of the most common mental illnesses, and the widespread use of social media provides new ideas for detecting various mental illnesses. The purpose of this study is to use machine learning technology to detect users of depressive patients based on user-shared content and posting behaviors in social media. At present, the existing research mostly uses a single detection method, and the unbalanced class distribution often leads to a low recognition rate. In addition, a large number of (...)
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  23.  10
    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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  24.  35
    Control of a prosthetic leg based on walking intentions for gait rehabilitation: an fNIRS study.Rayyan Khan, Noman Naseer, Hammad Nazeer & Malik Nasir Khan - 2018 - Frontiers in Human Neuroscience 12.
    This abstract presents a novel brain-computer interface (BCI) framework to control a prosthetic leg, for the rehabilitation of patients suffering from locomotive disorders, using functional near-infrared spectroscopy (fNIRS). fNIRS signals corresponding to walking intention and rest are used to initiate and stop the gait cycle and a nonlinear proportional derivative computed torque controller (PD-CTC) with gravity compensation is used to control torques of hip and knee joints for minimization of position error. The brain signals of walking intention and rest tasks (...)
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  25.  16
    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 and (...)
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  26.  34
    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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  27.  17
    Towards a Framework for Acquisition and Analysis of Speeches to Identify Suspicious Contents through Machine Learning.Md Rashadur Rahman, Mohammad Shamsul Arefin, Md Billal Hossain, Mohammad Ashfak Habib & A. S. M. Kayes - 2020 - Complexity 2020:1-14.
    The most prominent form of human communication and interaction is speech. It plays an indispensable role for expressing emotions, motivating, guiding, and cheering. An ill-intentioned speech can mislead people, societies, and even a nation. A misguided speech can trigger social controversy and can result in violent activities. Every day, there are a lot of speeches being delivered around the world, which are quite impractical to inspect manually. In order to prevent any vicious action resulting from any misguided speech, the development (...)
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  28.  9
    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 (...)
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  29.  5
    Brain Decoding-Classification of Hand Written Digits from fMRI Data Employing Bayesian Networks.Elahe' Yargholi & Gholam-Ali Hossein-Zadeh - 2016 - Frontiers in Human Neuroscience 10:191680.
    We are frequently exposed to hand written digits 0-9 in today’s modern life. Success in decoding-classification of hand written digits helps us understand the corresponding brain mechanisms and processes and assists seriously in designing more efficient brain-computer interfaces. However, all digits belong to the same semantic category and similarity in appearance of hand written digits makes this decoding-classification a challenging problem. In present study, for the first time, augmented naïve Bayes classifier is used for classification of fMRI (functional Magnetic (...)
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  30.  11
    Application of Normalized Compression Distance and Lempel-Ziv Jaccard Distance in Micro-electrode Signal Stream Classification for the Surgical Treatment of Parkinson’s Disease.Kamil Ząbkiewicz - 2018 - Studies in Logic, Grammar and Rhetoric 56 (1):45-57.
    Parkinson’s Disease can be treated with the use of microelectrode recording and stimulation. This paper presents a data stream classifier that analyses raw data from micro-electrodes and decides whether the measurements were taken from the subthalamic nucleus (STN) or not. The novelty of the proposed approach is based on the fact that distances based on raw data are used. Two distances are investigated in this paper, i.e. Normalized Compression Distance (NCD) and Lempel-Ziv Jaccard Distance (LZJD). No new features needed to (...)
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  31.  31
    Automatic classification of provisions in legislative texts.E. Francesconi & A. Passerini - 2007 - Artificial Intelligence and Law 15 (1):1-17.
    Legislation usually lacks a systematic organization which makes the management and the access to norms a hard problem to face. A more analytic semantic unit of reference (provision) for legislative texts was identified. A model of provisions (provisions types and their arguments) allows to describe the semantics of rules in legislative texts. It can be used to develop advanced semantic-based applications and services on legislation. In this paper an automatic bottom-up strategy to qualify existing legislative texts in terms of provision (...)
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  32.  43
    Comparative analysis of machine learning techniques in prognosis of type II diabetes.Abid Sarwar & Vinod Sharma - 2014 - AI and Society 29 (1):123-129.
  33.  53
    Trauma, Addiction, and Temporal Bulimia in Madame Bovary.Elissa Marder - 1997 - Diacritics 27 (3):49-64.
    In lieu of an abstract, here is a brief excerpt of the content:Trauma, Addiction, and Temporal Bulimia in Madame BovaryElissa Marder (bio)Lisez, et ne rêvez pas. Plongez-vous dans de longues études. Il n’y a de continuellement bon que l’habitude d’un travail entêté. Il s’en dégage un opium qui engourdit l’âme [Read and do not dream. The only thing that is continually good is the habit of stubborn work. It emits an opium that numbs the soul].—Gustave Flaubert to Louise ColetMadame Bovary (...)
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  34.  69
    Bayesianism and austrian apriorism.Frank van Dun - unknown
    In the last published round of his debate with Walter Block on economic methodology,1 Bryan Caplan introduces Bayes’ Rule as ‘a cure for methodological schizofrenia’. Block had raised the question ‘Why do economists react so violently to empirical evidence against the conventional view of the minimum wage’s effect?’ and answered it with the suggestion that economists do so because they are covert praxeologists. This means that they base most of their economic arguments on conclusions derived from their a priori (...)
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  35.  61
    Teaching the normative theory of causal reasoning.Richard Scheines, Matt Easterday & David Danks - 2007 - In Alison Gopnik & Laura Schulz (eds.), Causal learning: psychology, philosophy, and computation. New York: Oxford University Press. pp. 119--38.
    There is now substantial agreement about the representational component of a normative theory of causal reasoning: Causal Bayes Nets. There is less agreement about a normative theory of causal discovery from data, either computationally or cognitively, and almost no work investigating how teaching the Causal Bayes Nets representational apparatus might help individuals faced with a causal learning task. Psychologists working to describe how naïve participants represent and learn causal structure from data have focused primarily on learning from single (...)
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  36.  15
    Reflection without Rules: Economic Methodology and Contemporary Science Theory. [REVIEW]John Vickers - 2002 - Isis 93:350-350.
    This fine book is a comprehensive and careful survey of the current situation in the methodology of economics. It is directed primarily at economists and students of economics. Indeed, the economist who reads it with the care it deserves will have a better grip on matters of methodology in economics than most philosophers of science, but philosophers and historians of science will also find the work rewarding and interesting. Though a few examples may be beyond the economically untutored reader, they (...)
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  37. An Intelligent Tutoring System for Health Problems Related To Addiction of Video Game Playing.Mohran H. Al-Bayed & Samy S. Abu Naser - 2017 - International Journal of Advanced Scientific Research 2 (1):4-10.
    Lately in the past couple of years, there are an increasing in the normal rate of playing computer games or video games compared to the E-learning content that are introduced for the safety of our children, and the impact of the video game addictiveness that ranges from (Musculoskeletal issues, Vision problems and Obesity). Furthermore, this paper introduce an intelligent tutoring system for both parent and their children for enhancement the experience of gaming and tell us about the health problems and (...)
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  38.  4
    What are the attitudes of strictly-orthodox Jews to clinical trials: are they influenced by Jewish teachings?Joan Box Bayes - 2013 - Journal of Medical Ethics 39 (10):643-646.
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  39. Intelligent Plagiarism Detection for Electronic Documents.Mohran H. J. Al-Bayed - 2017 - Dissertation, Al-Azhar University, Gaza
    Plagiarism detection is the process of finding similarities on electronic based documents. Recently, this process is highly required because of the large number of available documents on the internet and the ability to copy and paste the text of relevant documents with simply Control+C and Control+V commands. The proposed solution is to investigate and develop an easy, fast, and multi-language support plagiarism detector with the easy of one click to detect the document plagiarism. This process will be done with the (...)
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  40.  97
    On Tarski on models.Timothy Bays - 2001 - Journal of Symbolic Logic 66 (4):1701-1726.
    This paper concerns Tarski’s use of the term “model” in his 1936 paper “On the Concept of Logical Consequence.” Against several of Tarski’s recent defenders, I argue that Tarski employed a non-standard conception of models in that paper. Against Tarski’s detractors, I argue that this non-standard conception is more philosophically plausible than it may appear. Finally, I make a few comments concerning the traditionally puzzling case of Tarski’s ω-rule example.
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  41.  72
    Skolem's Paradox.Timothy Bays - 2012 - In Ed Zalta (ed.), Stanford Encyclopedia of Philosophy. Stanford Encyclopedia of Philosophy.
    Skolem's Paradox involves a seeming conflict between two theorems from classical logic. The Löwenheim Skolem theorem says that if a first order theory has infinite models, then it has models whose domains are only countable. Cantor's theorem says that some sets are uncountable. Skolem's Paradox arises when we notice that the basic principles of Cantorian set theory—i.e., the very principles used to prove Cantor's theorem on the existence of uncountable sets—can themselves be formulated as a collection of first order sentences. (...)
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  42.  65
    On Putnam and His Models.Timothy Bays - 2001 - Journal of Philosophy 98 (7):331.
  43. On Putnam and his models.Timothy Bays - 2001 - Journal of Philosophy 98 (7):331-350.
    It is not my claim that the ‘L¨ owenheim-Skolem paradox’ is an antinomy in formal logic; but I shall argue that it is an antinomy, or something close to it, in philosophy of language. Moreover, I shall argue that the resolution of the antinomy—the only resolution that I myself can see as making sense—has profound implications for the great metaphysical dispute about realism which has always been the central dispute in the philosophy of language.
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  44.  21
    Four challenges to Confucian virtue ethics in technology.Morten Bay - 2021 - Journal of Information, Communication and Ethics in Society 19 (3):358-373.
    PurposeAs interest in technology ethics is increasing, so is the interest in bringing schools of ethics from non-Western philosophical traditions to the field, particularly when it comes to information and communication technology. In light of this development and recent publications that result from it, this paper aims to present responds critically to recent work on Confucian virtue ethics (CVE) and technology.Design/methodology/approachFour critiques are presented as theoretical challenges to CVE in technology, claiming that current literature insufficiently addresses: overall applicability, collective ethics (...)
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  45.  14
    Limits to liberty in a shrinking world.Christian Bay - 1984 - Journal of Social Philosophy 15 (3):12-19.
  46. The Structure of Freedom.Christian Bay - 1961 - Science and Society 25 (1):82-86.
  47.  94
    Reflections on Skolem's Paradox.Timothy Bays - 2000 - Dissertation, University of California, Los Angeles
    The Lowenheim-Skolem theorems say that if a first-order theory has infinite models, then it has models which are only countably infinite. Cantor's theorem says that some sets are uncountable. Together, these theorems induce a puzzle known as Skolem's Paradox: the very axioms of set theory which prove the existence of uncountable sets can be satisfied by a merely countable model. ;This dissertation examines Skolem's Paradox from three perspectives. After a brief introduction, chapters two and three examine several formulations of Skolem's (...)
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  48.  57
    Subjective probability assessments of the incidence of unethical behavior: the importance of scenario–respondent fit.Darlene Bay & Alexey Nikitkov - 2011 - Business Ethics, the Environment and Responsibility 20 (1):1-11.
    Largely due to the difficulty of observing behavior, empirical business ethics research relies heavily on the scenario methodology. While not disputing the usefulness of the technique, this paper highlights the importance of a careful assessment of the fit between the context of the situation described in the scenario and the knowledge and experience of the respondents. Based on a study of online auctions, we provide evidence that even respondents who have direct knowledge of the situation portrayed in the scenario may (...)
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  49.  27
    Subjective probability assessments of the incidence of unethical behavior: the importance of scenario-respondent fit.Darlene Bay & Alexey Nikitkov - 2011 - Business Ethics: A European Review 20 (1):1-11.
    Largely due to the difficulty of observing behavior, empirical business ethics research relies heavily on the scenario methodology. While not disputing the usefulness of the technique, this paper highlights the importance of a careful assessment of the fit between the context of the situation described in the scenario and the knowledge and experience of the respondents. Based on a study of online auctions, we provide evidence that even respondents who have direct knowledge of the situation portrayed in the scenario may (...)
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  50. Two arguments against realism.Timothy Bays - 2008 - Philosophical Quarterly 58 (231):193–213.
    I present two generalizations of Putnam's model-theoretic argument against realism. The first replaces Putnam's model theory with some new, and substantially simpler, model theory, while the second replaces Putnam's model theory with some more accessible results from astronomy. By design, both of these new arguments fail. But the similarities between these new arguments and Putnam's original arguments illuminate the latter's overall structure, and the flaws in these new arguments highlight the corresponding flaws in Putnam's arguments.
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