Results for 'Learning model'

987 found
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  1. Markov Learning Models for Multiperson Interactions.P. SUPPES - 1960
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  2. Understanding from Machine Learning Models.Emily Sullivan - 2022 - British Journal for the Philosophy of Science 73 (1):109-133.
    Simple idealized models seem to provide more understanding than opaque, complex, and hyper-realistic models. However, an increasing number of scientists are going in the opposite direction by utilizing opaque machine learning models to make predictions and draw inferences, suggesting that scientists are opting for models that have less potential for understanding. Are scientists trading understanding for some other epistemic or pragmatic good when they choose a machine learning model? Or are the assumptions behind why minimal models provide (...)
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  3.  28
    Motor learning models.Daniel M. Wolpert & Zoubin Ghahramani - 2003 - In L. Nadel (ed.), Encyclopedia of Cognitive Science. Nature Publishing Group.
  4.  18
    Probabilistic Learning Models.Peter M. Williams - 2001 - In David Corfield & Jon Williamson (eds.), Foundations of Bayesianism. Kluwer Academic Publishers. pp. 117--134.
  5. Bayesian Learning Models of Pain: A Call to Action.Abby Tabor & Christopher Burr - 2019 - Current Opinion in Behavioral Sciences 26:54-61.
    Learning is fundamentally about action, enabling the successful navigation of a changing and uncertain environment. The experience of pain is central to this process, indicating the need for a change in action so as to mitigate potential threat to bodily integrity. This review considers the application of Bayesian models of learning in pain that inherently accommodate uncertainty and action, which, we shall propose are essential in understanding learning in both acute and persistent cases of pain.
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  6.  11
    Deep learning models and the limits of explainable artificial intelligence.Jens Christian Bjerring, Jakob Mainz & Lauritz Munch - 2025 - Asian Journal of Philosophy 4 (1):1-26.
    It has often been argued that we face a trade-off between accuracy and opacity in deep learning models. The idea is that we can only harness the accuracy of deep learning models by simultaneously accepting that the grounds for the models’ decision-making are epistemically opaque to us. In this paper, we ask the following question: what are the prospects of making deep learning models transparent without compromising on their accuracy? We argue that the answer to this question (...)
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  7. Comparison of Decision Learning Models Using the Generalization Criterion Method.Woo-Young Ahn, Jerome R. Busemeyer, Eric-Jan Wagenmakers & Julie C. Stout - 2008 - Cognitive Science 32 (8):1376-1402.
    It is a hallmark of a good model to make accurate a priori predictions to new conditions (Busemeyer & Wang, 2000). This study compared 8 decision learning models with respect to their generalizability. Participants performed 2 tasks (the Iowa Gambling Task and the Soochow Gambling Task), and each model made a priori predictions by estimating the parameters for each participant from 1 task and using those same parameters to predict on the other task. Three methods were used (...)
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  8. Behavioristic, evidentialist, and learning models of statistical testing.Deborah G. Mayo - 1985 - Philosophy of Science 52 (4):493-516.
    While orthodox (Neyman-Pearson) statistical tests enjoy widespread use in science, the philosophical controversy over their appropriateness for obtaining scientific knowledge remains unresolved. I shall suggest an explanation and a resolution of this controversy. The source of the controversy, I argue, is that orthodox tests are typically interpreted as rules for making optimal decisions as to how to behave--where optimality is measured by the frequency of errors the test would commit in a long series of trials. Most philosophers of statistics, however, (...)
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  9.  41
    (1 other version)Interrogating Feature Learning Models to Discover Insights Into the Development of Human Expertise in a Real‐Time, Dynamic Decision‐Making Task.Catherine Sibert, Wayne D. Gray & John K. Lindstedt - 2016 - Topics in Cognitive Science 8 (4).
    Tetris provides a difficult, dynamic task environment within which some people are novices and others, after years of work and practice, become extreme experts. Here we study two core skills; namely, choosing the goal or objective function that will maximize performance and a feature-based analysis of the current game board to determine where to place the currently falling zoid so as to maximize the goal. In Study 1, we build cross-entropy reinforcement learning models to determine whether different goals result (...)
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  10.  15
    Markov Learning Models for Multiperson Interactions. [REVIEW]D. B. N. - 1961 - Review of Metaphysics 15 (1):196-196.
    An application of probabilistic, stimulus-response learning theory to game-like small group situations. The theory is axiomatic, precise, and quantitative; and is deductively fruitful. There is a running comparison of the predictive success of the stimulus-response theory and game theory. The authors claim to have demonstrated "in empirical detail and with quantitative accuracy" that "the social situation, qua social, does not require the introduction of new concepts" beyond those of stimulus-response learning theory. --N. D. B. Jr.
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  11.  15
    Teaching-Learning Model of Structure-Constructivism Based on Piagetian Propositional Logic and Bayesian Causational Inference. 은은숙 - 2020 - Journal of the New Korean Philosophical Association 99:191-217.
    본 연구의 목적은 최근 20여 년 동안 진행되어 온 학습이론에 대한 피아제의 명제논리학적 학습이론과 베이즈주의의 확률론적 학습이론의 융합에 근거하는 새로운 융합교수학습모형을 개발하는 것이다. 연구자는 이 새로운 교수학습모델을 “베이지안 구조구성주의 교수학습모형”(Bayesian structure-constructivist Model of Teaching-learning: 이하 약칭 BMT)이라 명명한다. 본고는 역사-비판적 관점 및 형식화적 관점에서 피아제의 명제논리학적 학습모형에서 해석된 학습이론과 베이즈주의의 확률론적 추론모형에서 해석된 학습이론을 일차적으로 분석하고, 논문의 후반부에서는 이를 근거로 교수법의 관점에서 양자의 학습이론을 통합하는 새로운 교수학습모델, 즉 BMT의 중요한 특성들을 세부적으로 제시한다. 몇 가지 핵심만 언급하면, 첫째로, BMT는 (...)
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  12.  18
    Statistical Learning Model of the Sense of Agency.Shiro Yano, Yoshikatsu Hayashi, Yuki Murata, Hiroshi Imamizu, Takaki Maeda & Toshiyuki Kondo - 2020 - Frontiers in Psychology 11.
    A sense of agency (SoA) is the experience of subjective awareness regarding the control of one’s actions. Humans have a natural tendency to generate prediction models of the environment and adapt their models according to changes in the environment. The SoA is associated with the degree of the adaptation of the prediction models, e.g., insufficient adaptation causes low predictability and lowers the SoA over the environment. Thus, identifying the mechanisms behind the adaptation process of a prediction model related to (...)
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  13.  5
    SSA-ELM: A Hybrid Learning Model for Short-Term Traffic Flow Forecasting.Fei Wang, Yinxi Liang, Zhizhe Lin, Jinglin Zhou & Teng Zhou - 2024 - Mathematics 12 (12):1895.
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  14. Implicit learning models.Axel Cleeremans - 2003 - In L. Nadel (ed.), Encyclopedia of Cognitive Science. Nature Publishing Group.
  15. Bayesian learning models with revision of evidence.William Harper - 1978 - Philosophia 7 (2):357-367.
  16.  14
    Development of The Learning Model Group Investigations Based Academic Culture (GIBAC).M. Taufik Qurohman, Zaenuri, Mulyono & Wardono - forthcoming - Evolutionary Studies in Imaginative Culture:52-63.
    This study introduces and evaluates the GIBAC Learning Model, aimed at enhancing students’ mathematical communication skills in Indonesian secondary schools, achieving an impressive 30% increase in students’ mathematical communication skills as evidenced by the n-gain method and dependent t-test analysis. Grounded in cooperative learning theory and motivation, the model integrates local academic culture and promotes student independence, offering a promising avenue for educational advancement in Indonesia. Employing a Mixed Methods approach, data from three secondary schools were (...)
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  17.  27
    Iterated Learning Models of Language Change: A Case Study of Sino‐Korean Accent.Chiyuki Ito & Naomi H. Feldman - 2022 - Cognitive Science 46 (4):e13115.
    Cognitive Science, Volume 46, Issue 4, April 2022.
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  18.  22
    Statistical learning models and individual differences.R. A. Weitzman - 1966 - Psychological Review 73 (4):357-364.
  19.  28
    A learning model for signal detection theory-temporal invariance of learning parameters.Michael Biderman, Donald D. Dorfman & John C. Simpson - 1975 - Bulletin of the Psychonomic Society 6 (3):329-330.
  20.  34
    The effect of flipped-jigsaw learning models on ethical decision-making.Nasibe Yağmur Ziyai, Ramazan Bozkurt, Hatice Kilickiran & Ozlem Dogu - 2024 - Nursing Ethics 31 (2-3):132-147.
    Background Ethical decision-making education in nursing can be taught effectively by combining different teaching models that support the visualisation of taught concepts and integrating theory into practice. Objectives The study aims to examine the effect of flipped and jigsaw learning models on ethical decision-making and ethical sensitivity in nursing. Research design We used a nested mixed design. A pretest-posttest single-group quasi-experimental design was used in the quantitative part, and a case study method was used in the qualitative part. Participants (...)
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  21.  25
    Machine learning models, trusted research environments and UK health data: ensuring a safe and beneficial future for AI development in healthcare.Charalampia Kerasidou, Maeve Malone, Angela Daly & Francesco Tava - 2023 - Journal of Medical Ethics 49 (12):838-843.
    Digitalisation of health and the use of health data in artificial intelligence, and machine learning (ML), including for applications that will then in turn be used in healthcare are major themes permeating current UK and other countries’ healthcare systems and policies. Obtaining rich and representative data is key for robust ML development, and UK health data sets are particularly attractive sources for this. However, ensuring that such research and development is in the public interest, produces public benefit and preserves (...)
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  22.  42
    Implementing a cooperative learning model in universities.Zeng Yi & Zhang LuXi - 2012 - Educational Studies 38 (2):165-173.
    In the past few years, many students have begun to lose interest in science and information and engineering technology courses because they find them too boring and hard to learn. To strengthen this field of education and stimulate students? motivation and interest in learning, this study introduces a theoretical pedagogical framework based on cooperative learning theory and tailored to the realities of the university education system in China. In the framework, a group in a class is treated as (...)
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  23. Hybridized Deep Learning Model for Perfobond Rib Shear Strength Connector Prediction.Jamal Abdulrazzaq Khalaf, Abeer A. Majeed, Mohammed Suleman Aldlemy, Zainab Hasan Ali, Ahmed W. Al Zand, S. Adarsh, Aissa Bouaissi, Mohammed Majeed Hameed & Zaher Mundher Yaseen - 2021 - Complexity 2021:1-21.
    Accurate and reliable prediction of Perfobond Rib Shear Strength Connector is considered as a major issue in the structural engineering sector. Besides, selecting the most significant variables that have a major influence on PRSC in every important step for attaining economic and more accurate predictive models, this study investigates the capacity of deep learning neural network for shear strength prediction of PRSC. The proposed DLNN model is validated against support vector regression, artificial neural network, and M5 tree (...). In the second scenario, a comparable AI model hybridized with genetic algorithm as a robust bioinspired optimization approach for optimizing the related predictors for the PRSC is proposed. Hybridizing AI models with GA as a selector tool is an attempt to acquire the best accuracy of predictions with the fewest possible related parameters. In accordance with quantitative analysis, it can be observed that the GA-DLNN models required only 7 input parameters and yielded the best prediction accuracy with highest correlation coefficient and lowest value root mean square error. However, the other comparable models such as GA-M5Tree, GA-ANN, and GA-SVR required 10 input parameters to obtain a relatively acceptable level of accuracy. Employing GA as a feature parameter selection technique improves the precision of almost all hybrid models by optimally removing redundant variables which decrease the efficiency of the model. (shrink)
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  24.  7
    Development of Learning Model for Hajj Based on Cooperative Learning in Padang City. Japeri, Mohd Suhadi Mohamed Sidik, Nasril, Romi Isnanda, Sabiruddin Juli & Muhammad Yunus - forthcoming - Evolutionary Studies in Imaginative Culture:1762-1769.
    The research aimed to produce an appropriate product, namely a cooperative learning model in the rituals of Hajj, to realize an independent Hajj congregation in terms of knowledge, understanding, attitudes, and skills, to specify the level of validity, realism, effectiveness, and attractiveness and so that the problems above can be resolved immediately resolved. This research uses the Research and Development (R&D) approach to achieve the aforementioned objectives. In general, the research and development model is the Four D (...)
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  25.  36
    A computational learning model for metrical phonology.B. Elan Dresher & Jonathan D. Kaye - 1990 - Cognition 34 (2):137-195.
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  26.  52
    Reconciling reinforcement learning models with behavioral extinction and renewal: Implications for addiction, relapse, and problem gambling.A. David Redish, Steve Jensen, Adam Johnson & Zeb Kurth-Nelson - 2007 - Psychological Review 114 (3):784-805.
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  27.  20
    Tensions Between Learning Models and Engaging in Modeling.Candice Guy-Gaytán, Julia S. Gouvea, Chris Griesemer & Cynthia Passmore - 2019 - Science & Education 28 (8):843-864.
    The ability to develop and use models to explain phenomena is a key component of the Next Generation Science Standards, and without examples of what modeling instruction looks like in the reality of classrooms, it will be difficult for us as a field to understand how to move forward in designing curricula that foreground the practice in ways that align with the epistemic commitments of modeling. In this article, we illustrate examples drawn from a model-based curriculum development project to (...)
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  28.  44
    The emergence of linguistic structure: An overview of the iterated learning model.Simon Kirby & James R. Hurford - 2002 - In Angelo Cangelosi & Domenico Parisi (eds.), Simulating the Evolution of Language. Springer Verlag. pp. 121--147.
  29. Connectionist learning models for application problems involving differential and integral equations.S. Mall, S. K. Jeswal & S. Chakraverty - 2020 - In Snehashish Chakraverty (ed.), Mathematical methods in interdisciplinary sciences. Hoboken, NJ: Wiley.
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  30. What is it for a Machine Learning Model to Have a Capability?Jacqueline Harding & Nathaniel Sharadin - forthcoming - British Journal for the Philosophy of Science.
    What can contemporary machine learning (ML) models do? Given the proliferation of ML models in society, answering this question matters to a variety of stakeholders, both public and private. The evaluation of models' capabilities is rapidly emerging as a key subfield of modern ML, buoyed by regulatory attention and government grants. Despite this, the notion of an ML model possessing a capability has not been interrogated: what are we saying when we say that a model is able (...)
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  31.  84
    The Outcome‐Representation Learning Model: A Novel Reinforcement Learning Model of the Iowa Gambling Task.Nathaniel Haines, Jasmin Vassileva & Woo-Young Ahn - 2018 - Cognitive Science 42 (8):2534-2561.
    The Iowa Gambling Task (IGT) is widely used to study decision‐making within healthy and psychiatric populations. However, the complexity of the IGT makes it difficult to attribute variation in performance to specific cognitive processes. Several cognitive models have been proposed for the IGT in an effort to address this problem, but currently no single model shows optimal performance for both short‐ and long‐term prediction accuracy and parameter recovery. Here, we propose the Outcome‐Representation Learning (ORL) model, a novel (...)
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  32.  16
    An Ensemble Learning Model for Short-Term Passenger Flow Prediction.Xiangping Wang, Lei Huang, Haifeng Huang, Baoyu Li, Ziyang Xia & Jing Li - 2020 - Complexity 2020:1-13.
    In recent years, with the continuous improvement of urban public transportation capacity, citizens’ travel has become more and more convenient, but there are still some potential problems, such as morning and evening peak congestion, imbalance between the supply and demand of vehicles and passenger flow, emergencies, and social local passenger flow surged due to special circumstances such as activities and inclement weather. If you want to properly guide the local passenger flow and make a reasonable deployment of operating buses, it (...)
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  33.  57
    Do current connectionist learning models account for reading development in different languages?Florian Hutzler, Johannes C. Ziegler, Conrad Perry, Heinz Wimmer & Marco Zorzi - 2004 - Cognition 91 (3):273-296.
  34.  18
    Disease Identification of Lentinus Edodes Sticks Based on Deep Learning Model.Dawei Zu, Feng Zhang, Qiulan Wu, Wenyan Wang, Zimeng Yang & Zhengpeng Hu - 2022 - Complexity 2022:1-9.
    Lentinus edodes sticks are susceptible to mold infection during the culture process, and manual identification of infected sticks is heavy, untimely, and inaccurate. Aiming to solve this problem, this paper proposes a method for identifying infected Lentinus edodes sticks based on improved ResNeXt-50 deep transfer learning. First, a dataset of Lentinus edodes stick diseases was constructed. Second, based on the ResNeXt-50 model and the pretraining weight of the ImageNet dataset, the influence of pretraining weight parameters on recognition accuracy (...)
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  35. Cue combination rules and learning-models-some theory and data.Ma Metzger - 1986 - Bulletin of the Psychonomic Society 24 (5):331-331.
  36.  80
    Exploring, expounding & ersatzing: a three-level account of deep learning models in cognitive neuroscience.Vanja Subotić - 2024 - Synthese 203 (3):1-28.
    Deep learning (DL) is a statistical technique for pattern classification through which AI researchers train artificial neural networks containing multiple layers that process massive amounts of data. I present a three-level account of explanation that can be reasonably expected from DL models in cognitive neuroscience and that illustrates the explanatory dynamics within a future-biased research program (Feest Philosophy of Science 84:1165–1176, 2017 ; Doerig et al. Nature Reviews: Neuroscience 24:431–450, 2023 ). By relying on the mechanistic framework (Craver Explaining (...)
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  37.  14
    A cognitive category-learning model of rule abstraction, attention learning, and contextual modulation.René Schlegelmilch, Andy J. Wills & Bettina von Helversen - 2022 - Psychological Review 129 (6):1211-1248.
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  38.  10
    Enhancing Arabic Literacy Skills in Indonesian Boarding Schools: Empirical Evidence of an Innovative Learning Model for Reading Religious Texts.Isop Syafei - 2023 - European Journal for Philosophy of Religion 15 (4):82-103.
    Arabic literacy skills are essential for Muslim learners to comprehend religious texts; however, when trying to improve these skills, students face numerous obstacles that require immediate attention. This study aims to develop and evaluate an Arabic learning model designed to enhance the capability of students in Indonesian boarding schools to read religious books. The research follows a three-stage approach: introductory study, model development, and model validation. The study takes place in Al-Jawami and Al-Falah boarding schools in (...)
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  39.  78
    Ensemble Machine Learning Model for Classification of Spam Product Reviews.Muhammad Fayaz, Atif Khan, Javid Ur Rahman, Abdullah Alharbi, M. Irfan Uddin & Bader Alouffi - 2020 - Complexity 2020:1-10.
    Nowadays, online product reviews have been at the heart of the product assessment process for a company and its customers. They give feedback to a company on improving product quality, planning, and monitoring its business schemes in order to increase sale and gain more profit. They are also helpful for customers to select the right products in less effort and time. Most companies make spam reviews of products in order to increase the products sales and gain more profit. Detecting spam (...)
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  40.  26
    The virtue of simplicity: On machine learning models in algorithmic trading.Kristian Bondo Hansen - 2020 - Big Data and Society 7 (1).
    Machine learning models are becoming increasingly prevalent in algorithmic trading and investment management. The spread of machine learning in finance challenges existing practices of modelling and model use and creates a demand for practical solutions for how to manage the complexity pertaining to these techniques. Drawing on interviews with quants applying machine learning techniques to financial problems, the article examines how these people manage model complexity in the process of devising machine learning-powered trading algorithms. (...)
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  41.  21
    Application of Machine Learning Models for Tracking Participant Skills in Cognitive Training.Sanjana Sandeep, Christian R. Shelton, Anja Pahor, Susanne M. Jaeggi & Aaron R. Seitz - 2020 - Frontiers in Psychology 11.
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  42.  19
    “Reconciling reinforcement learning models with behavioral extinction and renewal: Implications for addiction, relapse, and problem gambling”: Correction.David A. Redish, Steve Jensen, Adam Johnson & Zeb Kurth-Nelson - 2009 - Psychological Review 116 (3):518-518.
  43.  3
    Adaptive Medical Machine Learning Models Should Not Be Classified as Perpetual Research, but Do Require New Regulatory Solutions.Yves Saint James Aquino & Stacy Carter - 2024 - American Journal of Bioethics 24 (10):82-85.
    Volume 24, Issue 10, October 2024, Page 82-85.
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  44.  33
    Effects of the Problem-Oriented Learning Model on Middle School Students’ Computational Thinking Skills in a Python Course.Hongquan Bai, Xin Wang & Li Zhao - 2021 - Frontiers in Psychology 12.
    The rapid development of computers and technology affects modern daily life. Individuals in the digital age need to develop computational thinking skills. Existing studies have shown that programming teaching is conducive to cultivating students’ CT, and various learning models have different effects on the cultivation of CT. This study proposed a problem-oriented learning model that is closely related to programming and computational thinking. In all, 60 eighth-grade students from a middle school in China were divided into an (...)
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  45.  22
    Visual Heuristics for Verb Production: Testing a Deep‐Learning Model With Experiments in Japanese.Franklin Chang, Tomoko Tatsumi, Yuna Hiranuma & Colin Bannard - 2023 - Cognitive Science 47 (8):e13324.
    Tense/aspect morphology on verbs is often thought to depend on event features like telicity, but it is not known how speakers identify these features in visual scenes. To examine this question, we asked Japanese speakers to describe computer‐generated animations of simple actions with variation in visual features related to telicity. Experiments with adults and children found that they could use goal information in the animations to select appropriate past and progressive verb forms. They also produced a large number of different (...)
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  46.  30
    Sources of Understanding in Supervised Machine Learning Models.Paulo Pirozelli - 2022 - Philosophy and Technology 35 (2):1-19.
    In the last decades, supervised machine learning has seen the widespread growth of highly complex, non-interpretable models, of which deep neural networks are the most typical representative. Due to their complexity, these models have showed an outstanding performance in a series of tasks, as in image recognition and machine translation. Recently, though, there has been an important discussion over whether those non-interpretable models are able to provide any sort of understanding whatsoever. For some scholars, only interpretable models can provide (...)
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  47.  15
    Two-Stage Hybrid Machine Learning Model for High-Frequency Intraday Bitcoin Price Prediction Based on Technical Indicators, Variational Mode Decomposition, and Support Vector Regression.Samuel Asante Gyamerah - 2021 - Complexity 2021:1-15.
    Due to the inherent chaotic and fractal dynamics in the price series of Bitcoin, this paper proposes a two-stage Bitcoin price prediction model by combining the advantage of variational mode decomposition and technical analysis. VMD eliminates the noise signals and stochastic volatility in the price data by decomposing the data into variational mode functions, while technical analysis uses statistical trends obtained from past trading activity and price changes to construct technical indicators. The support vector regression accepts input from a (...)
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  48.  29
    Implementations are not conceptualizations: Revising the verb learning model.Brian MacWhinney & Jared Leinbach - 1991 - Cognition 40 (1-2):121-157.
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  49.  70
    Just How Much Does Business Ethics Education Influence Practitioner Attitudes? An Empirical Investigation of a Multi-Level Ethical Learning Model.Edward R. Balotsky - 2012 - Journal of Business Ethics Education 9:101-128.
    The impact of business ethics education on socially responsible practitioner behavior is not a new concern. A sizable extant literature base questions pedagogies used and outcomes achieved by the few early studies done in this area. Ensuing research has not produced definitive answers; measurement, methodological, and generalizability issues are prevalent due to the fragmented nature of most work. Given little pre-existing structure, an empirically-based model is needed which both sheds more awareness on the ethics education-business conduct relationship and quantifies (...)
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  50.  26
    Compressive Strength Prediction Using Coupled Deep Learning Model with Extreme Gradient Boosting Algorithm: Environmentally Friendly Concrete Incorporating Recycled Aggregate.Mayadah W. Falah, Sadaam Hadee Hussein, Mohammed Ayad Saad, Zainab Hasan Ali, Tan Huy Tran, Rania M. Ghoniem & Ahmed A. Ewees - 2022 - Complexity 2022:1-22.
    The application of recycled aggregate as a sustainable material in construction projects is considered a promising approach to decrease the carbon footprint of concrete structures. Prediction of compressive strength of environmentally friendly concrete containing recycled aggregate is important for understanding sustainable structures’ concrete behaviour. In this research, the capability of the deep learning neural network approach is examined on the simulation of CS of EF concrete. The developed approach is compared to the well-known artificial intelligence approaches named multivariate adaptive (...)
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