Results for 'Prediction model'

989 found
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  1.  13
    Predictive Model of The Factors Involved in Cyberbullying of Adolescent Victims.Ligia Isabel Estrada-Vidal, Amaya Epelde-Larrañaga & Fátima Chacón-Borrego - 2022 - Frontiers in Psychology 12.
    The development of Information and Communication Technologies has favored access to technological resources in adolescents. These tools provide access to information that can promote learning. However, they can also have a negative effect against people, as they can be used with other functionality, in which cyberbullying situations are caused during the interactions that arise when using social networks. The objective of this study was to determine the predictive value of the role of cyberbullying victims based on variables related to other (...)
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  2.  21
    Link Prediction Model for Weighted Networks Based on Evidence Theory and the Influence of Common Neighbours.Miaomiao Liu, Yang Wang, Jing Chen & Yongsheng Zhang - 2022 - Complexity 2022:1-16.
    A link prediction model for weighted networks based on Dempster–Shafer evidence theory and the influence of common neighbours is proposed in this paper. First, three types of future common neighbours and their topological structures are proposed. Second, the concepts of endpoint weight influence, link weight influence, and high-strength node influence are introduced. Then, the similarity based on the impacts of current common neighbours and FCNs is defined, respectively. Finally, the two similarity indices are fused by the DS evidence (...)
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  3.  37
    Predictive models of biology students’ convictions towards bioethical issues.Jeannemar Genevive Yap-Figueras - 2019 - International Journal of Ethics Education 4 (2):147-165.
    This study aimed at determining B.S. Biology students’ comprehension of the Bioethics principles and conviction schemas towards bioethical issues; as well as at identifying predictors for comprehension of bioethical principles and convictions and creating model constructs of predictors which are fit for the data. One-hundred sixteen Filipino Biology majors were pre and post-tested for comprehension of bioethics principles and convictions towards bioethical issues. Predictors for comprehension and convictions among personal and family background factors, global and primary personality factors, and (...)
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  4.  58
    Abduction-Prediction Model of Scientific Inference Reflected in a Prototype System for Model-based Diagnosis.John R. Josephson - 1998 - Philosophica 61 (1).
    This paper describes in some detail a pattern of justification which seems to be part of common sense logic and also part of the logic of scientific investigations. Calling this pattern “abduction,” the paper lays out an “abduction-prediction” model of scientific inference as an update to the traditional hypothetico-deductive model. According to this newer model, scientific theories receive their claims for acceptance and belief from the abductive arguments that support them, and the processes of scientific discovery (...)
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  5.  29
    On prediction-modelers and decision-makers: why fairness requires more than a fair prediction model.Teresa Scantamburlo, Joachim Baumann & Christoph Heitz - forthcoming - AI and Society:1-17.
    An implicit ambiguity in the field of prediction-based decision-making concerns the relation between the concepts of prediction and decision. Much of the literature in the field tends to blur the boundaries between the two concepts and often simply refers to ‘fair prediction’. In this paper, we point out that a differentiation of these concepts is helpful when trying to implement algorithmic fairness. Even if fairness properties are related to the features of the used prediction model, (...)
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  6.  13
    Prediction Models for Radiation-Induced Neurocognitive Decline in Adult Patients With Primary or Secondary Brain Tumors: A Systematic Review.Fariba Tohidinezhad, Dario Di Perri, Catharina M. L. Zegers, Jeanette Dijkstra, Monique Anten, Andre Dekker, Wouter Van Elmpt, Daniëlle B. P. Eekers & Alberto Traverso - 2022 - Frontiers in Psychology 13.
    PurposeAlthough an increasing body of literature suggests a relationship between brain irradiation and deterioration of neurocognitive function, it remains as the standard therapeutic and prophylactic modality in patients with brain tumors. This review was aimed to abstract and evaluate the prediction models for radiation-induced neurocognitive decline in patients with primary or secondary brain tumors.MethodsMEDLINE was searched on October 31, 2021 for publications containing relevant truncation and MeSH terms related to “radiotherapy,” “brain,” “prediction model,” and “neurocognitive impairments.” Risk (...)
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  7.  16
    Improving Grey Prediction Model and Its Application in Predicting the Number of Users of a Public Road Transportation System.Hossein Baloochian & Saeed Balochian - 2020 - Journal of Intelligent Systems 30 (1):104-114.
    The recent increase in the road transportation necessitates scheduling to reduce the adverse impacts of the road transportation and evaluate the effectiveness of previous actions taken in this context. However, it is impossible to undertake the scheduling and evaluation tasks unless previous information are available to predict the future. The grey model requires a limited volume of data for estimating the behavior of an unknown system. It provides high-accuracy predictions based on few data points. Various grey prediction models (...)
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  8.  27
    Predictive Models of Word Reading Fluency in Hebrew.Adi Shechter, Orly Lipka & Tami Katzir - 2018 - Frontiers in Psychology 9.
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  9.  17
    A 4D Trajectory Prediction Model Based on the BP Neural Network.Lan Ma, Shan Tian & Zhi-Jun Wu - 2019 - Journal of Intelligent Systems 29 (1):1545-1557.
    To solve the problem that traditional trajectory prediction methods cannot meet the requirements of high-precision, multi-dimensional and real-time prediction, a 4D trajectory prediction model based on the backpropagation (BP) neural network was studied. First, the hierarchical clustering algorithm and the k-means clustering algorithm were adopted to analyze the total flight time. Then, cubic spline interpolation was used to interpolate the flight position to extract the main trajectory feature. The 4D trajectory prediction model was based (...)
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  10.  17
    Quality Prediction Model Based on Novel Elman Neural Network Ensemble.Lan Xu & Yuting Zhang - 2019 - Complexity 2019:1-11.
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  11.  18
    Predictive model for progression of hearing loss: meta‐analysis of multi‐state outcome.Ting-Kuang Chao & Tony Hsiu-Hsi Chen - 2009 - Journal of Evaluation in Clinical Practice 15 (1):32-40.
  12. When are Purely Predictive Models Best?Robert Northcott - 2017 - Disputatio 9 (47):631-656.
    Can purely predictive models be useful in investigating causal systems? I argue ‘yes’. Moreover, in many cases not only are they useful, they are essential. The alternative is to stick to models or mechanisms drawn from well-understood theory. But a necessary condition for explanation is empirical success, and in many cases in social and field sciences such success can only be achieved by purely predictive models, not by ones drawn from theory. Alas, the attempt to use theory to achieve explanation (...)
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  13.  17
    A Markov Chain Position Prediction Model Based on Multidimensional Correction.Sijia Chen, Jian Zhang, Fanwei Meng & Dini Wang - 2021 - Complexity 2021:1-8.
    User location prediction in location-based social networks can predict the density of people flow well in terms of intelligent transportation, which can make corresponding adjustments in time to make traffic smooth, reduce fuel consumption, reduce greenhouse gas emissions, and help build a green cycle low-carbon transportation green system. This paper proposes a Markov chain position prediction model based on multidimensional correction. Firstly, extract corresponding information from the user’s historical check-in position sequence as a position-position conversion map. Secondly, (...)
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  14.  12
    The Optimized Multivariate Grey Prediction Model Based on Dynamic Background Value and Its Application.Tongfei Lao, Xiaoting Chen & Jianian Zhu - 2021 - Complexity 2021:1-13.
    As a tool for analyzing time series, grey prediction models have been widely used in various fields of society due to their higher prediction accuracy and the advantages of small sample modeling. The basic GM model is the most popular and important grey model, in which the first “1” stands for the “first order” and the second “N” represents the “multivariate.” The construction of the background values is not only an important step in grey modeling but (...)
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  15.  70
    Explanatory Models Versus Predictive Models: Reduced Complexity Modeling in Geomorphology.Alisa Bokulich - 2013 - In Vassilios Karakostas & Dennis Dieks (eds.), EPSA11 Perspectives and Foundational Problems in Philosophy of Science. Cham: Springer. pp. 115--128.
    Although predictive power and explanatory insight are both desiderata of scientific models, these features are often in tension with each other and cannot be simultaneously maximized. In such situations, scientists may adopt what I term a ‘division of cognitive labor’ among models, using different models for the purposes of explanation and prediction, respectively, even for the exact same phenomenon being investigated. Adopting this strategy raises a number of issues, however, which have received inadequate philosophical attention. More specifically, while one (...)
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  16.  19
    An Improved Prediction Model of IGBT Junction Temperature Based on Backpropagation Neural Network and Kalman Filter.Yu Dou - 2021 - Complexity 2021:1-10.
    With the rapid development of emerging technologies such as electric vehicles and high-speed railways, the insulated gate bipolar transistor is becoming increasingly important as the core of the power electronic devices. Therefore, it is imperative to maintain the stability and reliability of IGBT under different circumstances. By predicting the junction temperature of IGBT, the operating condition and aging degree can be roughly evaluated. However, the current predicting approaches such as optical, physical, and electrical methods have various shortcomings. Hence, the backpropagation (...)
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  17.  16
    Single‐Stage Prediction Models Do Not Explain the Magnitude of Syntactic Disambiguation Difficulty.Marten van Schijndel & Tal Linzen - 2021 - Cognitive Science 45 (6):e12988.
    The disambiguation of a syntactically ambiguous sentence in favor of a less preferred parse can lead to slower reading at the disambiguation point. This phenomenon, referred to as a garden‐path effect, has motivated models in which readers initially maintain only a subset of the possible parses of the sentence, and subsequently require time‐consuming reanalysis to reconstruct a discarded parse. A more recent proposal argues that the garden‐path effect can be reduced to surprisal arising in a fully parallel parser: words consistent (...)
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  18. Interpretable and accurate prediction models for metagenomics data.Edi Prifti, Antoine Danchin, Jean-Daniel Zucker & Eugeni Belda - 2020 - Gigascience 9 (3):giaa010.
    Background: Microbiome biomarker discovery for patient diagnosis, prognosis, and risk evaluation is attracting broad interest. Selected groups of microbial features provide signatures that characterize host disease states such as cancer or cardio-metabolic diseases. Yet, the current predictive models stemming from machine learning still behave as black boxes and seldom generalize well. Their interpretation is challenging for physicians and biologists, which makes them difficult to trust and use routinely in the physician-patient decision-making process. Novel methods that provide interpretability and biological insight (...)
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  19.  42
    A Non-linear Predictive Model of Borderline Personality Disorder Based on Multilayer Perceptron.Nelson M. Maldonato, Raffaele Sperandeo, Enrico Moretto & Silvia Dell'Orco - 2018 - Frontiers in Psychology 9.
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  20. Stress, Coping, and Resilience Before and After COVID-19: A Predictive Model Based on Artificial Intelligence in the University Environment.Francisco Manuel Morales-Rodríguez, Juan Pedro Martínez-Ramón, Inmaculada Méndez & Cecilia Ruiz-Esteban - 2021 - Frontiers in Psychology 12.
    The COVID-19 global health emergency has greatly impacted the educational field. Faced with unprecedented stress situations, professors, students, and families have employed various coping and resilience strategies throughout the confinement period. High and persistent stress levels are associated with other pathologies; hence, their detection and prevention are needed. Consequently, this study aimed to design a predictive model of stress in the educational field based on artificial intelligence that included certain sociodemographic variables, coping strategies, and resilience capacity, and to study (...)
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  21.  13
    Design of digital economy consumer psychology prediction model based on canopy clustering algorithm.Yue Zhang, Peng Ruan & Jingfeng Zhao - 2022 - Frontiers in Psychology 13.
    With the continuous improvement of the level of science and technology, the popularization of the Internet and the development of applications, online consumption has become a major force in personal consumption. As a result, digital consumption is born, and digital consumption is not only reflected in transaction consumption at the monetary level. Like some intangible services similar to the use of dating software, it can also become digital consumption. In this environment, a new economic concept, the digital economy, has emerged (...)
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  22.  23
    A Combined Prediction Model for Hog Futures Prices Based on WOA-LightGBM-CEEMDAN.Xiang Wang, Shen Gao, Yibin Guo, Shiyu Zhou, Yonghui Duan & Daqing Wu - 2022 - Complexity 2022:1-15.
    An integrated hog futures price forecasting model based on whale optimization algorithm, LightGBM, and Complete Ensemble Empirical Mode Decomposition with Adaptive Noise is proposed to overcome the limitations of a single machine learning model with low prediction accuracy and insufficient model stability. The simulation process begins with a grey correlation analysis of the hog futures price index system in order to identify influencing factors; after that, the WOA-LightGBM model is developed, and the WOA algorithm is (...)
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  23. Predicting Big Data Adoption in Companies With an Explanatory and Predictive Model.Ángel F. Villarejo-Ramos, Juan-Pedro Cabrera-Sánchez, Juan Lara-Rubio & Francisco Liébana-Cabanillas - 2021 - Frontiers in Psychology 12:651398.
    The purpose of this paper is to identify the factors that affect the intention to use Big Data Applications in companies. Research into Big Data usage intention and adoption is scarce and much less from the perspective of the use of these techniques in companies. That is why this research focuses on analyzing the adoption of Big Data Applications by companies. Further to a review of the literature, it is proposed to use a UTAUT model as a starting (...) with the update and incorporation of other variables such as resistance to use and perceived risk, and then to perform a neural network to predict this adoption. With respect to this non-parametric technique, we found that the multilayer perceptron model (MLP) for the use of Big Data Applications in companies obtains higher AUC values, and a better confusion matrix. This paper is a pioneering study using this hybrid methodology on the intention to use Big Data Applications. The result of this research has important implications for the theory and practice of adopting Big Data Applications. (shrink)
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  24.  13
    A Machine-Based Prediction Model of ADHD Using CPT Data.Ortal Slobodin, Inbal Yahav & Itai Berger - 2020 - Frontiers in Human Neuroscience 14.
  25.  16
    Development of a nomogram prediction model for depression in patients with systemic lupus erythematosus.Haoyang Chen, Hengmei Cui, Yaqin Geng, Tiantian Jin, Songsong Shi, Yunyun Li, Xin Chen & Biyu Shen - 2022 - Frontiers in Psychology 13.
    Systemic lupus erythematosus is an inflammatory autoimmune disease with depression as one of its most common symptoms. The aim of this study is to establish a nomogram prediction model to assess the occurrence of depression in patients with SLE. Based on the Hospital Anxiety and Depression Scale cutoff of 8, 341 patients with SLE, recruited between June 2017 and December 2019, were divided into depressive and non-depressive groups. Data on socio-demographic characteristics, medical history, sociopsychological factors, and other risk (...)
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  26.  38
    Number of Clusters and the Quality of Hybrid Predictive Models in Analytical CRM.Mariusz Łapczyński & Bartłomiej Jefmański - 2014 - Studies in Logic, Grammar and Rhetoric 37 (1):141-157.
    Making more accurate marketing decisions by managers requires building effective predictive models. Typically, these models specify the probability of customer belonging to a particular category, group or segment. The analytical CRM categories refer to customers interested in starting cooperation with the company, customers who purchase additional products or customers intending to resign from the cooperation. During building predictive models researchers use analytical tools from various disciplines with an emphasis on their best performance. This article attempts to build a hybrid predictive (...)
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  27.  16
    Construction of a financial default risk prediction model based on the LightGBM algorithm.Vipin Balyan & Bo Gao - 2022 - Journal of Intelligent Systems 31 (1):767-779.
    The construction of a financial risk prediction model has become the need of the hour due to long-term and short-term violations in the financial market. To reduce the default risk of peer-to-peer companies and promote the healthy and sustainable development of the P2P industry, this article uses a model based on the LightGBM algorithm to analyze a large number of sample data from Renrendai, which is a representative platform of the P2P industry. This article explores the base (...)
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  28.  19
    An Aggregating Prediction Model for Management Decision Analysis.Jianhong Guo, Che-Jung Chang, Yingyi Huang & Xiaotian Zhang - 2022 - Complexity 2022:1-7.
    Facing an increasingly competitive market, enterprises need correct decisions to solve operational problems in a timely manner to maintain their competitive advantages. In this context, insufficient information may lead to an overfitting phenomenon in general mathematical modeling methods, making it difficult to ensure good analytical performance. Therefore, it is important for enterprises to be able to effectively analyze and make predictions using small data sets. Although various approaches have been developed to solve the problem of prediction, their application is (...)
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  29.  28
    Complexity in Forecasting and Predictive Models.Jose L. Salmeron, Marisol B. Correia & Pedro R. Palos-Sanchez - 2019 - Complexity 2019:1-3.
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  30.  5
    ‘A mechanistic interpretation, if possible’: How does predictive modelling causality affect the regulation of chemicals?François Thoreau - 2016 - Big Data and Society 3 (2).
    The regulation of chemicals is undergoing drastic changes with the use of computational models to predict environmental toxicity. This particular issue has not attracted much attention, despite its major impacts on the regulation of chemicals. This raises the problem of causality at the crossroads between data and regulatory sciences, particularly in the case models known as quantitative structure–activity relationship models. This paper shows that models establish correlations and not scientific facts, and it engages anew the way regulators deal with uncertainties. (...)
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  31.  17
    Cognitive architecture enables comprehensive predictive models of visual search.David E. Kieras & Anthony Hornof - 2017 - Behavioral and Brain Sciences 40.
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  32.  46
    Sotsiaalteaduste teaduslikkusest. Rein Taagepera, Making Social Sciences More Scientific: The Need for Predictive Models.Ave Mets - 2009 - Studia Philosophica Estonica 2 (1):112-134.
    Physics has for a long time been regarded as the most mature of all sciences due to strict mathematically formulated laws of physics and success of theories in applications, for which it has been taken as the example of scientificity which other sciences should strive towards. Just what aspect of physics it is that is regarded as the cause of its success and hence the yardstick of scientificity – this question has given rise to differing opinions. In his book Making (...)
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  33.  15
    Visual Classification of Music Style Transfer Based on PSO-BP Rating Prediction Model.Tianjiao Li - 2021 - Complexity 2021:1-9.
    In this paper, based on computer reading and processing of music frequency, amplitude, timbre, image pixel, color filling, and so forth, a method of image style transfer guided by music feature data is implemented in real-time playback, using existing music files and image files, processing and trying to reconstruct the fluent relationship between the two in terms of auditory and visual, generating dynamic, musical sound visualization with real-time changes in the visualization. Although recommendation systems have been well developed in real (...)
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  34.  18
    LPR-MLP: A Novel Health Prediction Model for Transmission Lines in Grid Sensor Networks.Yunliang Chen, Shaoqian Chen, Nian Zhang, Hao Liu, Honglei Jing & Geyong Min - 2021 - Complexity 2021:1-10.
    The safety of the transmission lines maintains the stable and efficient operation of the smart grid. Therefore, it is very important and highly desirable to diagnose the health status of transmission lines by developing an efficient prediction model in the grid sensor network. However, the traditional methods have limitations caused by the characteristics of high dimensions, multimodality, nonlinearity, and heterogeneity of the data collected by sensors. In this paper, a novel model called LPR-MLP is proposed to predict (...)
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  35.  40
    Day-ahead price forecasting based on hybrid prediction model.Javad Olamaee, Mohsen Mohammadi, Alireza Noruzi & Seyed Mohammad Hassan Hosseini - 2016 - Complexity 21 (S2):156-164.
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  36.  24
    Use of Stability and Seasonality Analysis for Optimal Inventory Prediction Models.Pawan Lingras, Manish Joshi & Peng Zhang - 2011 - Journal of Intelligent Systems 20 (2):147-166.
    Inventory prediction and management is a key issue in a retail store. There are a number of inventory prediction techniques. However, it is difficult to identify a time series prediction model for inventory forecasting that provides uniformly good results for all the products in a store. This paper uses data from a small retail store to demonstrate the variability of results for different modeling techniques and different products. We demonstrate inadequacy of a generic inventory model. (...)
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  37.  12
    Ink Art Three-Dimensional Big Data Three-Dimensional Display Index Prediction Model.Xiaonan Cao - 2021 - Complexity 2021:1-10.
    This paper starts with the study of realistic three-dimensional models, from the two aspects of ink art style simulation model and three-dimensional display technology, explores the three-dimensional display model of three-dimensional model ink style, and conducts experiments through the software development platform and auxiliary software. The feasibility of the model is verified. Aiming at the problem of real-time rendering of large-scale 3D scenes in the model, efficient visibility rejection method and a multiresolution fast rendering method (...)
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  38.  17
    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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  39.  77
    Exploring intellectual humility through the lens of artificial intelligence: Top terms, features and a predictive model.Ehsan Abedin, Marinus Ferreira, Ritsaart Reimann, Marc Cheong, Igor Grossmann & Mark Alfano - 2023 - Acta Psychologica 238 (103979).
    Intellectual humility (IH) is often conceived as the recognition of, and appropriate response to, your own intellectual limitations. As far as we are aware, only a handful of studies look at interventions to increase IH – e.g. through journalling – and no study so far explores the extent to which having high or low IH can be predicted. This paper uses machine learning and natural language processing techniques to develop a predictive model for IH and identify top terms and (...)
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  40. Going in, moral, circles: A data-driven exploration of moral circle predictors and prediction models.Hyemin Han & Marja Graham - manuscript
    Moral circles help define the boundaries of one’s moral consideration. One’s moral circle may provide insight into how one perceives or treats other entities. A data-driven model exploration was conducted to explore predictors and prediction models. Candidate predictors were built upon past research using moral foundations and political orientation. Moreover, we also employed additional moral psychological indicators, i.e., moral reasoning, moral identity, and empathy, based on prior research in moral development and education. We used model exploration methods, (...)
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  41. Combining psychological models with machine learning to better predict people’s decisions.Avi Rosenfeld, Inon Zuckerman, Amos Azaria & Sarit Kraus - 2012 - Synthese 189 (S1):81-93.
    Creating agents that proficiently interact with people is critical for many applications. Towards creating these agents, models are needed that effectively predict people's decisions in a variety of problems. To date, two approaches have been suggested to generally describe people's decision behavior. One approach creates a-priori predictions about people's behavior, either based on theoretical rational behavior or based on psychological models, including bounded rationality. A second type of approach focuses on creating models based exclusively on observations of people's behavior. At (...)
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  42.  30
    On the Evolution of Symbols and Prediction Models.Rainer Feistel - 2023 - Biosemiotics 16 (2):311-371.
    The ability of predicting upcoming events or conditions in advance offers substantial selective advantage to living beings. The most successful systematic tool for fairly reliable prognoses is the use of dynamical causal models in combination with memorised experience. Surprisingly, causality is a fundamental but rather controversially disputed concept. For both models and memory, symbol processing is requisite. Symbols are a necessary and sufficient attribute of life from its very beginning; the process of their evolutionary emergence was discovered by Julian Huxley (...)
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  43.  26
    Counter-factual mathematics of counterfactual predictive models.Maria Otworowska, Johan Kwisthout & Iris van Rooij - 2014 - Frontiers in Psychology 5.
  44.  21
    A Stock Closing Price Prediction Model Based on CNN-BiSLSTM.Haiyao Wang, Jianxuan Wang, Lihui Cao, Yifan Li, Qiuhong Sun & Jingyang Wang - 2021 - Complexity 2021:1-12.
    As the stock market is an important part of the national economy, more and more investors have begun to pay attention to the methods to improve the return on investment and effectively avoid certain risks. Many factors affect the trend of the stock market, and the relevant information has the nature of time series. This paper proposes a composite model CNN-BiSLSTM to predict the closing price of the stock. Bidirectional special long short-term memory improved on bidirectional long short-term memory (...)
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  45.  16
    Determinants of Major Choice and Academic Expectations: Testing a Prediction Model Across Gender.Sonia Alfonso, António M. Diniz, Angeles Conde & Mar García-Señorán - 2022 - Frontiers in Psychology 13.
    With this study, we aim to test the predictive relationships between determinants of major choice and academic expectations and to analyze gender differences, using six items of the Determinants of Major Choice Scale and the Academic Perceptions Questionnaire to assess AEs. A convenience sample of Portuguese and Spanish first-year students, mostly composed of women, was selected from two public universities. The invariance of the multivariate regression model with latent variables of the effect of DMC on AEs, with determinants linked (...)
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  46.  22
    Fear of COVID-19, Stress, and Anxiety in University Undergraduate Students: A Predictive Model for Depression.Antonio J. Rodríguez-Hidalgo, Yisela Pantaleón, Irene Dios & Daniel Falla - 2020 - Frontiers in Psychology 11.
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  47.  29
    Determining the statistical significance of survivorship prediction models.Holly P. Berty, Haiwen Shi & James Lyons-Weiler - 2010 - Journal of Evaluation in Clinical Practice 16 (1):155-165.
  48.  10
    Domain-general and domain-specific influences on emerging numerical cognition: Contrasting uni-and bidirectional prediction models.I. Coolen, R. Merkley, D. Ansari, E. Dove, A. Dowker, A. Mills, V. Murphy, M. von Spreckelsen & G. Scerif - 2021 - Cognition 215 (C):104816.
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  49.  19
    Power Prediction-Based Model Predictive Control for Energy Management in Land and Air Vehicle with Turboshaft Engine.Zhengchao Wei, Yue Ma, Changle Xiang & Dabo Liu - 2021 - Complexity 2021:1-24.
    In recent years, the green aviation technology draws more attention, and more hybrid power units have been applied to the aerial vehicles. To achieve the high performance and long lifetime of components during varied working conditions, the effective regulation of the energy management is necessary for the vehicles with hybrid power unit. In this paper, power prediction-based model predictive control for energy management strategy is proposed for the vehicle equipped with HPU based on turboshaft engine in order to (...)
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  50.  69
    A Generalized Model for Predicting Postcompletion Errors.Raj M. Ratwani & J. Gregory Trafton - 2010 - Topics in Cognitive Science 2 (1):154-167.
    A postcompletion error is a type of procedural error that occurs after the main goal of a task has been accomplished. There is a strong theoretical foundation accounting for postcompletion errors (Altmann & Trafton, 2002; Byrne & Bovair, 1997). This theoretical foundation has been leveraged to develop a logistic regression model of postcompletion errors based on reaction time and eye movement measures (Ratwani, McCurry, & Trafton, 2008). This study further develops and extends this predictive model by (a) validating (...)
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