Results for 'machine learning image analysis'

999 found
Order:
  1.  11
    From pixels to insights: Machine learning and deep learning for bioimage analysis.Mahta Jan, Allie Spangaro, Michelle Lenartowicz & Mojca Mattiazzi Usaj - 2024 - Bioessays 46 (2):2300114.
    Bioimage analysis plays a critical role in extracting information from biological images, enabling deeper insights into cellular structures and processes. The integration of machine learning and deep learning techniques has revolutionized the field, enabling the automated, reproducible, and accurate analysis of biological images. Here, we provide an overview of the history and principles of machine learning and deep learning in the context of bioimage analysis. We discuss the essential steps of the (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  2.  11
    Research on Chinese Consumers’ Attitudes Analysis of Big-Data Driven Price Discrimination Based on Machine Learning.Jun Wang, Tao Shu, Wenjin Zhao & Jixian Zhou - 2022 - Frontiers in Psychology 12:803212.
    From the end of 2018 in China, the Big-data Driven Price Discrimination (BDPD) of online consumption raised public debate on social media. To study the consumers’ attitude about the BDPD, this study constructed a semantic recognition frame to deconstruct the Affection-Behavior-Cognition (ABC) consumer attitude theory using machine learning models inclusive of the Labeled Latent Dirichlet Allocation (LDA), Long Short-Term Memory (LSTM), and Snow Natural Language Processing (NLP), based on social media comments text dataset. Similar to the questionnaires published (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  3.  4
    Identifying Alcohol Use Disorder With Resting State Functional Magnetic Resonance Imaging Data: A Comparison Among Machine Learning Classifiers.Victor M. Vergara, Flor A. Espinoza & Vince D. Calhoun - 2022 - Frontiers in Psychology 13.
    Alcohol use disorder is a burden to society creating social and health problems. Detection of AUD and its effects on the brain are difficult to assess. This problem is enhanced by the comorbid use of other substances such as nicotine that has been present in previous studies. Recent machine learning algorithms have raised the attention of researchers as a useful tool in studying and detecting AUD. This work uses AUD and controls samples free of any other substance use (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  4.  2
    Towards Transnational Fairness in Machine Learning: A Case Study in Disaster Response Systems.Cem Kozcuer, Anne Mollen & Felix Bießmann - 2024 - Minds and Machines 34 (2):1-26.
    Research on fairness in machine learning (ML) has been largely focusing on individual and group fairness. With the adoption of ML-based technologies as assistive technology in complex societal transformations or crisis situations on a global scale these existing definitions fail to account for algorithmic fairness transnationally. We propose to complement existing perspectives on algorithmic fairness with a notion of transnational algorithmic fairness and take first steps towards an analytical framework. We exemplify the relevance of a transnational fairness assessment (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark  
  5.  32
    Visually branding the environment: climate change as a marketing opportunity.David Machin & Anders Hansen - 2008 - Discourse Studies 10 (6):777-794.
    While there has been extensive work on the textual realizations of climate change in the media, there has been little on the way such discourses are realized and promoted visually. This article addresses this using Multimodal Critical Discourse Analysis to examine a new collection of images from the globally operating Getty Images intended for use in promotions, advertisements and editorials. Getty is promoting this collection in terms of Green Issues being a `marketing opportunity'. In this article we consider the (...)
    No categories
    Direct download  
     
    Export citation  
     
    Bookmark   3 citations  
  6.  17
    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 (...)
    No categories
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  7.  53
    From privacy to anti-discrimination in times of machine learning.Thilo Hagendorff - 2019 - Ethics and Information Technology 21 (4):331-343.
    Due to the technology of machine learning, new breakthroughs are currently being achieved with constant regularity. By using machine learning techniques, computer applications can be developed and used to solve tasks that have hitherto been assumed not to be solvable by computers. If these achievements consider applications that collect and process personal data, this is typically perceived as a threat to information privacy. This paper aims to discuss applications from both fields of personality and image (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   2 citations  
  8.  13
    Identifying and Predicting Autism Spectrum Disorder Based on Multi-Site Structural MRI With Machine Learning.YuMei Duan, WeiDong Zhao, Cheng Luo, XiaoJu Liu, Hong Jiang, YiQian Tang, Chang Liu & DeZhong Yao - 2022 - Frontiers in Human Neuroscience 15.
    Although emerging evidence has implicated structural/functional abnormalities of patients with Autism Spectrum Disorder, definitive neuroimaging markers remain obscured due to inconsistent or incompatible findings, especially for structural imaging. Furthermore, brain differences defined by statistical analysis are difficult to implement individual prediction. The present study has employed the machine learning techniques under the unified framework in neuroimaging to identify the neuroimaging markers of patients with ASD and distinguish them from typically developing controls. To enhance the interpretability of the (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  9.  22
    Engaging Tomorrow’s Doctors in Clinical Ethics: Implications for Healthcare Organisations.Laura L. Machin & Robin D. Proctor - 2020 - Health Care Analysis 29 (4):319-342.
    Clinical ethics can be viewed as a practical discipline that provides a structured approach to assist healthcare practitioners in identifying, analysing and resolving ethical issues that arise in practice. Clinical ethics can therefore promote ethically sound clinical and organisational practices and decision-making, thereby contributing to health organisation and system quality improvement. In order to develop students’ decision-making skills, as well as prepare them for practice, we decided to introduce a clinical ethics strand within an undergraduate medical curriculum. We designed a (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  10.  11
    Avoiding the Inherent Limitations in Datasets Used for Measuring Aesthetics When Using a Machine Learning Approach.Adrian Carballal, Carlos Fernandez-Lozano, Nereida Rodriguez-Fernandez, Luz Castro & Antonino Santos - 2019 - Complexity 2019:1-12.
    An important topic in evolutionary art is the development of systems that can mimic the aesthetics decisions made by human begins, e.g., fitness evaluations made by humans using interactive evolution in generative art. This paper focuses on the analysis of several datasets used for aesthetic prediction based on ratings from photography websites and psychological experiments. Since these datasets present problems, we proposed a new dataset that is a subset of DPChallenge.com. Subsequently, three different evaluation methods were considered, one derived (...)
    No categories
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  11.  81
    Machine Learning-Based Analysis of Digital Movement Assessment and ExerGame Scores for Parkinson's Disease Severity Estimation.Dunia J. Mahboobeh, Sofia B. Dias, Ahsan H. Khandoker & Leontios J. Hadjileontiadis - 2022 - Frontiers in Psychology 13.
    Neurodegenerative Parkinson's Disease is one of the common incurable diseases among the elderly. Clinical assessments are characterized as standardized means for PD diagnosis. However, relying on medical evaluation of a patient's status can be subjective to physicians' experience, making the assessment process susceptible to human errors. The use of ICT-based tools for capturing the status of patients with PD can provide more objective and quantitative metrics. In this vein, the Personalized Serious Game Suite and intelligent Motor Assessment Tests, produced within (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  12. Machine Learning and Irresponsible Inference: Morally Assessing the Training Data for Image Recognition Systems.Owen C. King - 2019 - In Matteo Vincenzo D'Alfonso & Don Berkich (eds.), On the Cognitive, Ethical, and Scientific Dimensions of Artificial Intelligence. Springer Verlag. pp. 265-282.
    Just as humans can draw conclusions responsibly or irresponsibly, so too can computers. Machine learning systems that have been trained on data sets that include irresponsible judgments are likely to yield irresponsible predictions as outputs. In this paper I focus on a particular kind of inference a computer system might make: identification of the intentions with which a person acted on the basis of photographic evidence. Such inferences are liable to be morally objectionable, because of a way in (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark   2 citations  
  13. Deep-Learning-Based Multivariate Pattern Analysis (dMVPA): A Tutorial and a Toolbox.Karl M. Kuntzelman, Jacob M. Williams, Phui Cheng Lim, Ashok Samal, Prahalada K. Rao & Matthew R. Johnson - 2021 - Frontiers in Human Neuroscience 15.
    In recent years, multivariate pattern analysis has been hugely beneficial for cognitive neuroscience by making new experiment designs possible and by increasing the inferential power of functional magnetic resonance imaging, electroencephalography, and other neuroimaging methodologies. In a similar time frame, “deep learning” has produced a parallel revolution in the field of machine learning and has been employed across a wide variety of applications. Traditional MVPA also uses a form of machine learning, but most commonly (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  14.  21
    Ground truth to fake geographies: machine vision and learning in visual practices.Abelardo Gil-Fournier & Jussi Parikka - 2021 - AI and Society 36 (4):1253-1262.
    This article investigates the concept of the ground truth as both an epistemic and technical figure of knowledge that is central to discussions of machine vision and media techniques of visuality. While ground truth refers to a set of remote sensing practices, it has a longer history in operational photography, such as aerial reconnaissance. Building on a discussion of this history, this article argues that ground truth has shifted from a reference to the physical, geographical ground to the surface (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark   2 citations  
  15.  12
    Gaussian Process Panel Modeling—Machine Learning Inspired Analysis of Longitudinal Panel Data.Julian D. Karch, Andreas M. Brandmaier & Manuel C. Voelkle - 2020 - Frontiers in Psychology 11.
    In this article, we extend the Bayesian nonparametric regression method Gaussian Process Regression to the analysis of longitudinal panel data. We call this new approach Gaussian Process Panel Modeling (GPPM). GPPM provides great flexibility because of the large number of models it can represent. It allows classical statistical inference as well as machine learning inspired predictive modeling. GPPM offers frequentist and Bayesian inference without the need to resort to Markov chain Monte Carlo-based approximations, which makes the approach (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  16.  19
    Machine Learning Classifiers to Evaluate Data From Gait Analysis With Depth Cameras in Patients With Parkinson’s Disease.Beatriz Muñoz-Ospina, Daniela Alvarez-Garcia, Hugo Juan Camilo Clavijo-Moran, Jaime Andrés Valderrama-Chaparro, Melisa García-Peña, Carlos Alfonso Herrán, Christian Camilo Urcuqui, Andrés Navarro-Cadavid & Jorge Orozco - 2022 - Frontiers in Human Neuroscience 16.
    IntroductionThe assessments of the motor symptoms in Parkinson’s disease are usually limited to clinical rating scales, and it depends on the clinician’s experience. This study aims to propose a machine learning technique algorithm using the variables from upper and lower limbs, to classify people with PD from healthy people, using data from a portable low-cost device. And can be used to support the diagnosis and follow-up of patients in developing countries and remote areas.MethodsWe used Kinect®eMotion system to capture (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  17.  18
    Machine Learning Against Terrorism: How Big Data Collection and Analysis Influences the Privacy-Security Dilemma.H. M. Verhelst, A. W. Stannat & G. Mecacci - 2020 - Science and Engineering Ethics 26 (6):2975-2984.
    Rapid advancements in machine learning techniques allow mass surveillance to be applied on larger scales and utilize more and more personal data. These developments demand reconsideration of the privacy-security dilemma, which describes the tradeoffs between national security interests and individual privacy concerns. By investigating mass surveillance techniques that use bulk data collection and machine learning algorithms, we show why these methods are unlikely to pinpoint terrorists in order to prevent attacks. The diverse characteristics of terrorist attacks—especially (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  18.  16
    Bidders Recommender for Public Procurement Auctions Using Machine Learning: Data Analysis, Algorithm, and Case Study with Tenders from Spain.Manuel J. García Rodríguez, Vicente Rodríguez Montequín, Francisco Ortega Fernández & Joaquín M. Villanueva Balsera - 2020 - Complexity 2020:1-20.
    Recommending the identity of bidders in public procurement auctions has a significant impact in many areas of public procurement, but it has not yet been studied in depth. A bidders recommender would be a very beneficial tool because a supplier can search appropriate tenders and, vice versa, a public procurement agency can discover automatically unknown companies which are suitable for its tender. This paper develops a pioneering algorithm to recommend potential bidders using a machine learning method, particularly a (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  19.  21
    Machine learning from examples: A non-inductivist analysis.Edoardo Datteri, Hykel Hosni & Guglielmo Tamburrini - 2005 - Logic and Philosophy of Science 3 (1):1-31.
    Direct download  
     
    Export citation  
     
    Bookmark   1 citation  
  20.  17
    Machine Learning in Psychometrics and Psychological Research.Graziella Orrù, Merylin Monaro, Ciro Conversano, Angelo Gemignani & Giuseppe Sartori - 2020 - Frontiers in Psychology 10:492685.
    Recent controversies about the level of replicability of behavioral research analyzed using statistical inference have cast interest in developing more efficient techniques for analyzing the results of psychological experiments. Here we claim that complementing the analytical workflow of psychological experiments with Machine Learning-based analysis will both maximize accuracy and minimize replicability issues. As compared to statistical inference, ML analysis of experimental data is model agnostic and primarily focused on prediction rather than inference. We also highlight some (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   6 citations  
  21.  72
    Using machine learning to create a repository of judgments concerning a new practice area: a case study in animal protection law.Joe Watson, Guy Aglionby & Samuel March - 2023 - Artificial Intelligence and Law 31 (2):293-324.
    Judgments concerning animals have arisen across a variety of established practice areas. There is, however, no publicly available repository of judgments concerning the emerging practice area of animal protection law. This has hindered the identification of individual animal protection law judgments and comprehension of the scale of animal protection law made by courts. Thus, we detail the creation of an initial animal protection law repository using natural language processing and machine learning techniques. This involved domain expert classification of (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  22.  40
    The ethics of machine learning-based clinical decision support: an analysis through the lens of professionalisation theory.Sabine Salloch & Nils B. Heyen - 2021 - BMC Medical Ethics 22 (1):1-9.
    BackgroundMachine learning-based clinical decision support systems (ML_CDSS) are increasingly employed in various sectors of health care aiming at supporting clinicians’ practice by matching the characteristics of individual patients with a computerised clinical knowledge base. Some studies even indicate that ML_CDSS may surpass physicians’ competencies regarding specific isolated tasks. From an ethical perspective, however, the usage of ML_CDSS in medical practice touches on a range of fundamental normative issues. This article aims to add to the ethical discussion by using professionalisation (...)
    No categories
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  23. Excavating AI: the politics of images in machine learning training sets.Kate Crawford & Trevor Paglen - forthcoming - AI and Society:1-12.
    By looking at the politics of classification within machine learning systems, this article demonstrates why the automated interpretation of images is an inherently social and political project. We begin by asking what work images do in computer vision systems, and what is meant by the claim that computers can “recognize” an image? Next, we look at the method for introducing images into computer systems and look at how taxonomies order the foundational concepts that will determine how a (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   13 citations  
  24.  22
    Can Negation Be Depicted? Comparing Human and Machine Understanding of Visual Representations.Yuri Sato, Koji Mineshima & Kazuhiro Ueda - 2023 - Cognitive Science 47 (3):e13258.
    There is a widely held view that visual representations (images) do not depict negation, for example, as expressed by the sentence, “the train is not coming.” The present study focuses on the real-world visual representations of photographs and comic (manga) illustrations and empirically challenges the question of whether humans and machines, that is, modern deep neural networks, can recognize visual representations as expressing negation. By collecting data on the captions humans gave to images and analyzing the occurrences of negation phrases, (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark  
  25.  5
    Classification of tumor from computed tomography images: A brain-inspired multisource transfer learning under probability distribution adaptation.Yu Liu & Enming Cui - 2022 - Frontiers in Human Neuroscience 16:1040536.
    Preoperative diagnosis of gastric cancer and primary gastric lymphoma is challenging and has important clinical significance. Inspired by the inductive reasoning learning of the human brain, transfer learning can improve diagnosis performance of target task by utilizing the knowledge learned from the other domains (source domain). However, most studies focus on single-source transfer learning and may lead to model performance degradation when a large domain shift exists between the single-source domain and target domain. By simulating the multi-modal (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  26.  10
    What Machine Learning Can Tell Us About the Role of Language Dominance in the Diagnostic Accuracy of German LITMUS Non-word and Sentence Repetition Tasks.Lina Abed Ibrahim & István Fekete - 2019 - Frontiers in Psychology 9.
    This study investigates the performance of 21 monolingual and 56 bilingual children aged 5;6-9;0 on German-LITMUS-sentence-repetition (SRT; Hamann et al., 2013) and nonword-repetition-tasks (NWRT; Grimm et al., 2014), which were constructed according to the LITMUS-principles (Language Impairment Testing in Multilingual Settings; Armon-Lotem et al., 2015). Both tasks incorporate complex structures shown to be cross-linguistically challenging for children with Specific Language Impairment (SLI) and aim at minimizing bias against bilingual children while still being indicative of the presence of language impairment across (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  27. Using machine learning to predict decisions of the European Court of Human Rights.Masha Medvedeva, Michel Vols & Martijn Wieling - 2020 - Artificial Intelligence and Law 28 (2):237-266.
    When courts started publishing judgements, big data analysis within the legal domain became possible. By taking data from the European Court of Human Rights as an example, we investigate how natural language processing tools can be used to analyse texts of the court proceedings in order to automatically predict judicial decisions. With an average accuracy of 75% in predicting the violation of 9 articles of the European Convention on Human Rights our approach highlights the potential of machine (...) approaches in the legal domain. We show, however, that predicting decisions for future cases based on the cases from the past negatively impacts performance. Furthermore, we demonstrate that we can achieve a relatively high classification performance when predicting outcomes based only on the surnames of the judges that try the case. (shrink)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   17 citations  
  28.  14
    Using machine learning to predict decisions of the European Court of Human Rights.Masha Medvedeva, Michel Vols & Martijn Wieling - 2020 - Artificial Intelligence and Law 28 (2):237-266.
    When courts started publishing judgements, big data analysis within the legal domain became possible. By taking data from the European Court of Human Rights as an example, we investigate how natural language processing tools can be used to analyse texts of the court proceedings in order to automatically predict judicial decisions. With an average accuracy of 75% in predicting the violation of 9 articles of the European Convention on Human Rights our approach highlights the potential of machine (...) approaches in the legal domain. We show, however, that predicting decisions for future cases based on the cases from the past negatively impacts performance. Furthermore, we demonstrate that we can achieve a relatively high classification performance when predicting outcomes based only on the surnames of the judges that try the case. (shrink)
    No categories
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   16 citations  
  29.  29
    Machine learning and power relations.Jonne Maas - forthcoming - AI and Society.
    There has been an increased focus within the AI ethics literature on questions of power, reflected in the ideal of accountability supported by many Responsible AI guidelines. While this recent debate points towards the power asymmetry between those who shape AI systems and those affected by them, the literature lacks normative grounding and misses conceptual clarity on how these power dynamics take shape. In this paper, I develop a workable conceptualization of said power dynamics according to Cristiano Castelfranchi’s conceptual framework (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   6 citations  
  30.  25
    Applying machine learning methods to quantify emotional experience in installation art.Sofia Vlachou & Michail Panagopoulos - 2023 - Technoetic Arts 21 (1):53-72.
    Aesthetic experience is original, dynamic and ever-changing. This article covers three research questions (RQs) concerning how immersive installation artworks can elicit emotions that may contribute to their popularity. Based on Yayoi Kusama’s and Peter Kogler’s kaleidoscopic rooms, this study aims to predict the emotions of visitors of immersive installation art based on their Twitter activity. As indicators, we employed the total number of likes, comments, retweets, followers, followings, the average of tweets per user, and emotional response. According to our evaluation (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  31.  13
    Machine learning in tutorials – Universal applicability, underinformed application, and other misconceptions.Andreas Breiter, Juliane Jarke & Hendrik Heuer - 2021 - Big Data and Society 8 (1).
    Machine learning has become a key component of contemporary information systems. Unlike prior information systems explicitly programmed in formal languages, ML systems infer rules from data. This paper shows what this difference means for the critical analysis of socio-technical systems based on machine learning. To provide a foundation for future critical analysis of machine learning-based systems, we engage with how the term is framed and constructed in self-education resources. For this, we analyze (...)
    No categories
    Direct download  
     
    Export citation  
     
    Bookmark   1 citation  
  32. Machine learning in scientific grant review: algorithmically predicting project efficiency in high energy physics.Vlasta Sikimić & Sandro Radovanović - 2022 - European Journal for Philosophy of Science 12 (3):1-21.
    As more objections have been raised against grant peer-review for being costly and time-consuming, the legitimate question arises whether machine learning algorithms could help assess the epistemic efficiency of the proposed projects. As a case study, we investigated whether project efficiency in high energy physics can be algorithmically predicted based on the data from the proposal. To analyze the potential of algorithmic prediction in HEP, we conducted a study on data about the structure and outcomes of HEP experiments (...)
    Direct download (5 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  33.  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.
  34.  30
    Machine learning applications in healthcare and the role of informed consent: Ethical and practical considerations.Giorgia Lorenzini, David Martin Shaw, Laura Arbelaez Ossa & Bernice Simone Elger - forthcoming - Clinical Ethics:147775092210944.
    Informed consent is at the core of the clinical relationship. With the introduction of machine learning in healthcare, the role of informed consent is challenged. This paper addresses the issue of whether patients must be informed about medical ML applications and asked for consent. It aims to expose the discrepancy between ethical and practical considerations, while arguing that this polarization is a false dichotomy: in reality, ethics is applied to specific contexts and situations. Bridging this gap and considering (...)
    Direct download  
     
    Export citation  
     
    Bookmark   2 citations  
  35.  73
    Machine learning’s limitations in avoiding automation of bias.Daniel Varona, Yadira Lizama-Mue & Juan Luis Suárez - 2021 - AI and Society 36 (1):197-203.
    The use of predictive systems has become wider with the development of related computational methods, and the evolution of the sciences in which these methods are applied Solon and Selbst and Pedreschi et al.. The referred methods include machine learning techniques, face and/or voice recognition, temperature mapping, and other, within the artificial intelligence domain. These techniques are being applied to solve problems in socially and politically sensitive areas such as crime prevention and justice management, crowd management, and emotion (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  36.  14
    Ethical considerations and statistical analysis of industry involvement in machine learning research.Thilo Hagendorff & Kristof Meding - 2023 - AI and Society 38 (1):35-45.
    Industry involvement in the machine learning (ML) community seems to be increasing. However, the quantitative scale and ethical implications of this influence are rather unknown. For this purpose, we have not only carried out an informed ethical analysis of the field, but have inspected all papers of the main ML conferences NeurIPS, CVPR, and ICML of the last 5 years—almost 11,000 papers in total. Our statistical approach focuses on conflicts of interest, innovation, and gender equality. We have (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark   3 citations  
  37.  25
    Machine learning and human learning: a socio-cultural and -material perspective on their relationship and the implications for researching working and learning.David Guile & Jelena Popov - forthcoming - AI and Society:1-14.
    The paper adopts an inter-theoretical socio-cultural and -material perspective on the relationship between human + machine learning to propose a new way to investigate the human + machine assistive assemblages emerging in professional work (e.g. medicine, architecture, design and engineering). Its starting point is Hutchins’s (1995a) concept of ‘distributed cognition’ and his argument that his concept of ‘cultural ecosystems’ constitutes a unit of analysis to investigate collective human + machine working and learning (Hutchins, Philos (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark  
  38.  92
    Machine learning: A structuralist discipline?Christophe Bruchansky - 2019 - AI and Society 34 (4):931-938.
    Advances in machine learning and natural language processing are revolutionizing the way we live, work, and think. As for any science, they are based on assumptions about what the world is, and how humans interact with it. In this paper, I discuss what is potentially one of these assumptions: structuralism, which states that all cultures share a hidden structure. I illustrate this assumption with political footprints: a machine-learning technique using pre-trained word vectors for political discourse (...). I introduce some of the benefits and limitations of structuralism when applied to machine learning, and the risks of exploiting a technology before establishing the validity of all its hypotheses. I consider how machine-learning techniques could evolve towards hybrid structuralism or post-structuralism, and how deeply these developments would impact cultural studies. (shrink)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  39.  11
    Machine learning for the history of ideas.Simon Brausch & Gerd Graßhoff - unknown
    The information technological progress that has been achieved over the last decades has also given the humanities the opportunity to expand their methodological toolbox. This paper explores how recent advancements in natural language processing may be used for research in the history of ideas so as to overcome traditional scholarship's inevitably selective approach to historical sources. By employing two machine learning techniques whose potential for the analysis of conceptual continuities and innovations has never been considered before, we (...)
    No categories
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark  
  40. Machine learning, inductive reasoning, and reliability of generalisations.Petr Spelda - 2020 - AI and Society 35 (1):29-37.
    The present paper shows how statistical learning theory and machine learning models can be used to enhance understanding of AI-related epistemological issues regarding inductive reasoning and reliability of generalisations. Towards this aim, the paper proceeds as follows. First, it expounds Price’s dual image of representation in terms of the notions of e-representations and i-representations that constitute subject naturalism. For Price, this is not a strictly anti-representationalist position but rather a dualist one (e- and i-representations). Second, the (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark  
  41.  28
    “The Brain Is the Prisoner of Thought”: A Machine-Learning Assisted Quantitative Narrative Analysis of Literary Metaphors for Use in Neurocognitive Poetics.Arthur M. Jacobs & Annette Kinder - 2017 - Metaphor and Symbol 32 (3):139-160.
    Two main goals of the emerging field of neurocognitive poetics are the use of more natural and ecologically valid stimuli, tasks and contexts and providing methods and models allowing to quantify distinctive features of verbal materials used in such tasks and contexts and their effects on readers responses. A natural key element of poetic language, metaphor, still is understudied insofar as relatively little empirical research looked at literary or poetic metaphors. An exception is Katz et al.’s corpus of 204 literary (...)
    No categories
    Direct download (4 more)  
     
    Export citation  
     
    Bookmark   8 citations  
  42.  15
    Radiography image analysis using cat swarm optimized deep belief networks.Sura Khalil Abd, Mustafa Musa Jaber & Amer S. Elameer - 2021 - Journal of Intelligent Systems 31 (1):40-54.
    Radiography images are widely utilized in the health sector to recognize the patient health condition. The noise and irrelevant region information minimize the entire disease detection accuracy and computation complexity. Therefore, in this study, statistical Kolmogorov–Smirnov test has been integrated with wavelet transform to overcome the de-noising issues. Then the cat swarm-optimized deep belief network is applied to extract the features from the affected region. The optimized deep learning model reduces the feature training cost and time and improves the (...)
    No categories
    Direct download  
     
    Export citation  
     
    Bookmark   2 citations  
  43.  17
    Machine learning: A structuralist discipline?Christophe Bruchansky - 2019 - AI and Society 34 (4):931-938.
    Advances in machine learning and natural language processing are revolutionizing the way we live, work, and think. As for any science, they are based on assumptions about what the world is, and how humans interact with it. In this paper, I discuss what is potentially one of these assumptions: structuralism, which states that all cultures share a hidden structure. I illustrate this assumption with political footprints: a machine-learning technique using pre-trained word vectors for political discourse (...). I introduce some of the benefits and limitations of structuralism when applied to machine learning, and the risks of exploiting a technology before establishing the validity of all its hypotheses. I consider how machine-learning techniques could evolve towards hybrid structuralism or post-structuralism, and how deeply these developments would impact cultural studies. (shrink)
    No categories
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  44.  14
    No-Reference Stereoscopic Image Quality Assessment Based on Binocular Statistical Features and Machine Learning.Peng Xu, Man Guo, Lei Chen, Weifeng Hu, Qingshan Chen & Yujun Li - 2021 - Complexity 2021:1-14.
    Learning a deep structure representation for complex information networks is a vital research area, and assessing the quality of stereoscopic images or videos is challenging due to complex 3D quality factors. In this paper, we explore how to extract effective features to enhance the prediction accuracy of perceptual quality assessment. Inspired by the structure representation of the human visual system and the machine learning technique, we propose a no-reference quality assessment scheme for stereoscopic images. More specifically, the (...)
    No categories
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  45.  14
    The predictive reframing of machine learning applications: good predictions and bad measurements.Alexander Martin Mussgnug - 2022 - European Journal for Philosophy of Science 12 (3):1-21.
    Supervised machine learning has found its way into ever more areas of scientific inquiry, where the outcomes of supervised machine learning applications are almost universally classified as predictions. I argue that what researchers often present as a mere terminological particularity of the field involves the consequential transformation of tasks as diverse as classification, measurement, or image segmentation into prediction problems. Focusing on the case of machine-learning enabled poverty prediction, I explore how reframing a (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  46. Statistical Machine Learning and the Logic of Scientific Discovery.Antonino Freno - 2009 - Iris. European Journal of Philosophy and Public Debate 1 (2):375-388.
    One important problem in the philosophy of science is whether there can be a normative theory of discovery, as opposed to a normative theory of justification. Although the possibility of developing a logic of scientific discovery has been often doubted by philosophers, it is particularly interesting to consider how the basic insights of a normative theory of discovery have been turned into an effective research program in computer science, namely the research field of machine learning. In this paper, (...)
     
    Export citation  
     
    Bookmark   1 citation  
  47.  73
    Correction to: Excavating AI: the politics of images in machine learning training sets.Kate Crawford & Trevor Paglen - 2021 - AI and Society 36 (4):1399-1399.
  48.  72
    Humanistic interpretation and machine learning.Juho Pääkkönen & Petri Ylikoski - 2021 - Synthese 199:1461–1497.
    This paper investigates how unsupervised machine learning methods might make hermeneutic interpretive text analysis more objective in the social sciences. Through a close examination of the uses of topic modeling—a popular unsupervised approach in the social sciences—it argues that the primary way in which unsupervised learning supports interpretation is by allowing interpreters to discover unanticipated information in larger and more diverse corpora and by improving the transparency of the interpretive process. This view highlights that unsupervised modeling (...)
    Direct download (4 more)  
     
    Export citation  
     
    Bookmark   2 citations  
  49.  10
    A Machine Learning Approach to Evaluate the Performance of Rural Bank.Jun Wei, Tao Ye & Zhe Zhang - 2021 - Complexity 2021:1-10.
    In the current performance evaluation works of commercial banks, most of the researches only focus on the relationship between a single characteristic and performance and lack a comprehensive analysis of characteristics. On the other hand, they mainly focus on causal inference and lack systematic quantitative conclusions from the perspective of prediction. This paper is the first to comprehensively investigate the predictability of multidimensional features on commercial bank performance using boosting regression tree. The dimensionality in the financial-related fields is relatively (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  50.  8
    Machine Learning Techniques for Quantification of Knee Segmentation from MRI.Sujeet More, Jimmy Singla, Ahed Abugabah & Ahmad Ali AlZubi - 2020 - Complexity 2020:1-13.
    Magnetic resonance imaging is precise and efficient for interpreting the soft and hard tissues. Moreover, for the detailed diagnosis of varied diseases such as knee rheumatoid arthritis, segmentation of the knee magnetic resonance image is a challenging and complex task that has been explored broadly. However, the accuracy and reproducibility of segmentation approaches may require prior extraction of tissues from MR images. The advances in computational methods for segmentation are reliant on several parameters such as the complexity of the (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
1 — 50 / 999