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Online Handwritten Character Recognition Using an Optical Backpropagation Neural Network




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Exploring the Key Informational, Ethical and Legal Concerns to the Development of Population Genomic Databases for Pharmacogenomic Research




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Mobile Learning, Cognitive Architecture and the Study of Literature




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Discovering a Decision Maker’s Mental Model with Instance-Based Cognitive Mining:




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A Cognitive Knowledge-based Framework for Social and Metacognitive Support in Mobile Learning

Aim/Purpose: This work aims to present a knowledge modeling technique that supports the representation of the student learning process and that is capable of providing a means for self-assessment and evaluating newly acquired knowledge. The objective is to propose a means to address the pedagogical challenges in m-learning by aiding students’ metacognition through a model of a student with the target domain and pedagogy. Background: This research proposes a framework for social and meta-cognitive support to tackle the challenges raised. Two algorithms are introduced: the meta-cognition algorithm for representing the student’s learning process, which is capable of providing a means for self-assessment, and the social group mapping algorithm for classifying students according to social groups. Methodology : Based on the characteristics of knowledge in an m-learning system, the cognitive knowledge base is proposed for knowledge elicitation and representation. The proposed technique allows a proper categorization of students to support collaborative learning in a social platform by utilizing the strength of m-learning in a social context. The social group mapping and metacognition algorithms are presented. Contribution: The proposed model is envisaged to serve as a guide for developers in implementing suitable m-learning applications. Furthermore, educationists and instructors can devise new pedagogical practices based on the possibilities provided by the proposed m-learning framework. Findings: The effectiveness of any knowledge management system is grounded in the technique used in representing the knowledge. The CKB proposed manipulates knowledge as a dynamic concept network, similar to human knowledge processing, thus, providing a rich semantic capability, which provides various relationships between concepts. Recommendations for Practitioners: Educationist and instructors need to develop new pedagogical practices in line with m-learning. Recommendation for Researchers: The design and implementation of an effective m-learning application are challenging due to the reliance on both pedagogical and technological elements. To tackle this challenge, frameworks which describe the conceptual interaction between the various components of pedagogy and technology need to be proposed. Impact on Society: The creation of an educational platform that provides instant access to relevant knowledge. Future Research: In the future, the proposed framework will be evaluated against some set of criteria for its effectiveness in acquiring and presenting knowledge in a real-life scenario. By analyzing real student interaction in m-learning, the algorithms will be tested to show their applicability in eliciting student metacognition and support for social interactivity.




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A Cognitive Knowledge-based Model for an Academic Adaptive e-Advising System

Aim/Purpose: This study describes a conceptual model, based on the principles of concept algebra that can provide intelligent academic advice using adaptive, knowledge-based feedback. The proposed model advises students based on their traits and academic history. The system aims to deliver adaptive advice to students using historical data from previous and current students. This data-driven approach utilizes a cognitive knowledge-based (CKB) model to update the weights (values that indicate the strength of relationships between concepts) that exist between student’s performances and recommended courses. Background: A research study conducted at the Public Authority for Applied Education and Training (PAAET), a higher education institution in Kuwait, indicates that students’ have positive perceptions of the e-Advising system. Most students believe that PAAET’s e-Advising system is effective because it allows them to check their academic status, provides a clear vision of their academic timeline, and is a convenient, user-friendly, and attractive online service. Student advising can be a tedious element of academic life but is necessary to fill the gap between student performance and degree requirements. Higher education institutions have prioritized assisting undecided students with career decisions for decades. An important feature of e-Advising systems is personalized feedback, where tailored advice is provided based on students' characteristics and other external parameters. Previous e-Advising systems provide students with advice without taking into consideration their different attributes and goals. Methodology: This research describes a model for an e-Advising system that enables students to select courses recommended based on their personalities and academic performance. Three algorithms are used to provide students with adaptive course selection advice: the knowledge elicitation algorithm that represents students' personalities and academic information, the knowledge bonding algorithm that combines related concepts or ideas within the knowledge base, and the adaptive e-Advising model that recommends relevant courses. The knowledge elicitation algorithm acquires student and academic characteristics from data provided, while the knowledge bonding algorithm fuses the newly acquired features with existing information in the database. The adaptive e-Advising algorithm provides recommended courses to students based on existing cognitive knowledge to overcome the issues associated with traditional knowledge representation methods. Contribution: The design and implementation of an adaptive e-Advising system are challenging because it relies on both academic and student traits. A model that incorporates the conceptual interaction between the various academic and student-specific components is needed to manage these challenges. While other e-Advising systems provide students with general advice, these earlier models are too rudimentary to take student characteristics (e.g., knowledge level, learning style, performance, demographics) into consideration. For the online systems that have replaced face-to-face academic advising to be effective, they need to take into consideration the dynamic nature of contemporary students and academic settings. Findings: The proposed algorithms can accommodate a highly diverse student body by providing information tailored to each student. The academic and student elements are represented as an Object-Attribute-Relationship (OAR) model. Recommendations for Practitioners: The model proposed here provides insight into the potential relationships between students’ characteristics and their academic standing. Furthermore, this novel e-Advising system provides large quantities of data and a platform through which to query students, which should enable developing more effective, knowledge-based approaches to academic advising. Recommendation for Researchers: The proposed model provides researches with a framework to incorporate various academic and student characteristics to determine the optimal advisory factors that affect a student’s performance. Impact on Society: The proposed model will benefit e-Advising system developers in implementing updateable algorithms that can be tested and improved to provide adaptive advice to students. The proposed approach can provide new insight to advisors on possible relationships between student’s characteristics and current academic settings. Thus, providing a means to develop new curriculums and approaches to learning. Future Research: In future studies, the proposed algorithms will be implemented, and the adaptive e-Advising model will be tested on real-world data and then further improved to cater to specific academic settings. The proposed model will benefit e-Advising system developers in implementing updateable algorithms that can be tested and improved to provide adaptive advisory to students. The approach proposed can provide new insight to advisors on possible relationships between student’s characteristics and current academic settings. Thus, providing a means to develop new curriculums and approaches to course recommendation.




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Improving the Accuracy of Facial Micro-Expression Recognition: Spatio-Temporal Deep Learning with Enhanced Data Augmentation and Class Balancing

Aim/Purpose: This study presents a novel deep learning-based framework designed to enhance spontaneous micro-expression recognition by effectively increasing the amount and variety of data and balancing the class distribution to improve recognition accuracy. Background: Micro-expression recognition using deep learning requires large amounts of data. Micro-expression datasets are relatively small, and their class distribution is not balanced. Methodology: This study developed a framework using a deep learning-based model to recognize spontaneous micro-expressions on a person’s face. The framework also includes several technical stages, including image and data preprocessing. In data preprocessing, data augmentation is carried out to increase the amount and variety of data and class balancing to balance the distribution of sample classes in the dataset. Contribution: This study’s essential contribution lies in enhancing the accuracy of micro-expression recognition and overcoming the limited amount of data and imbalanced class distribution that typically leads to overfitting. Findings: The results indicate that the proposed framework, with its data preprocessing stages and deep learning model, significantly increases the accuracy of micro-expression recognition by overcoming dataset limitations and producing a balanced class distribution. This leads to improved micro-expression recognition accuracy using deep learning techniques. Recommendations for Practitioners: Practitioners can utilize the model produced by the proposed framework, which was developed to recognize spontaneous micro-expressions on a person’s face, by implementing it as an emotional analysis application based on facial micro-expressions. Recommendation for Researchers: Researchers involved in the development of a spontaneous micro-expression recognition framework for analyzing hidden emotions from a person’s face are playing an essential role in advancing this field and continue to search for more innovative deep learning-based solutions that continue to explore techniques to increase the amount and variety of data and find solutions to balancing the number of sample classes in various micro-expression datasets. They can further improvise to develop deep learning model architectures that are more suitable and relevant according to the needs of recognition tasks and the various characteristics of different datasets. Impact on Society: The proposed framework could significantly impact society by providing a reliable model for recognizing spontaneous micro-expressions in real-world applications, ranging from security systems and criminal investigations to healthcare and emotional analysis. Future Research: Developing a spontaneous micro-expression recognition framework based on spatial and temporal flow requires the learning model to classify optimal features. Our future work will focus more on exploring micro-expression features by developing various alternative learning models and increasing the weights of spatial and temporal features.




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Exploring business students' Perry cognitive development position and implications at teaching universities in the USA

In the context of US universities where student evaluations of teaching play an important role in the retention and promotion of faculty, it is important to understand what a student expects in the classroom. This study took the perspective of Perry's cognitive development scheme with the following research question: what is the Perry level of cognitive development of business students? An established survey was used at two different universities. It was found that the median was position 3, and that there was large variation in three dimensions. First is the variation across program levels. Second, there was variation across universities. This becomes an issue when instructors move to a different university and questions the possibility to transfer 'best practices'. Third, variation was found within a specific program level. This means that instructors are faced with students who, from a cognitive perspective, have different demands which are unlikely to be simultaneously met.




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A Cognitive and Logic Based Model for Building Glass-Box Learning Objects




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An Introduction to Face Recognition Technology




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A Cognitive Approach to Instructional Design for Multimedia Learning




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From Group-based Learning to Cooperative Learning: A Metacognitive Approach to Project-based Group Supervision




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Informing: A Cognitive Load Perspective




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The Helix of Human Cognition: Knowledge Management According to DIKW, E2E, and the Proposed View




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The Impact Facebook and Twitter has on the Cognitive Social Capital of University Students

The impact that Facebook and Twitter usage has on the creation and maintenance of university student’s cognitive social capital was investigated on students in the Western Cape province of South Africa. Facebook and Twitter were selected as part of the research context because both are popular online social network systems (SNSs), and few studies were found that investigated the impact that both Facebook and Twitter have on the cognitive social capital of South African university students. Data was collected from a survey questionnaire, which was successfully completed by over 100 students from all 5 universities within the Western Cape. The questionnaire was obtained from a previous study, allowing comparisons to be made. Analysis of the results however, did not show a strong relationship between the intensity of Facebook and Twitter usage, and the various forms of social capital. Facebook usage was found to correlate with student’s satisfaction with university life; which suggests that increasing the intensity of Facebook usage for students experiencing low satisfaction with university life might be beneficial.




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Cognition to Collaboration: User-Centric Approach and Information Behaviour Theories/Models

Aim/Purpose: The objective of this paper is to review the vast literature of user-centric in-formation science and inform about the emerging themes in information behaviour science. Background: The paradigmatic shift from system-centric to user-centric approach facilitates research on the cognitive and individual information processing. Various information behaviour theories/models emerged. Methodology: Recent information behaviour theories and models are presented. Features, strengths and weaknesses of the models are discussed through the analysis of the information behaviour literature. Contribution: This paper sheds light onto the weaknesses in earlier information behaviour models and stresses (and advocates) the need for research on social information behaviour. Findings: Prominent information behaviour models deal with individual information behaviour. People live in a social world and sort out most of their daily or work problems in groups. However, only seven papers discuss social information behaviour (Scopus search). Recommendations for Practitioners : ICT tools used for inter-organisational sharing should be redesigned for effective information-sharing during disaster/emergency times. Recommendation for Researchers: There are scarce sources on social side of the information behaviour, however, most of the work tasks are carried out in groups/teams. Impact on Society: In dynamic work contexts like disaster management and health care settings, collaborative information-sharing may result in decreasing the losses. Future Research: A fieldwork will be conducted in disaster management context investigating the inter-organisational information-sharing.




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Why People Perceive Messages Differently: The Theory of Cognitive Mapping

Aim/Purpose: The paper introduces new concepts including cognitive mapping, cognitive message processing, and message resonance. Background: This paper draws upon philosophy, psychology, physiology, communications, and introspection to develop the theory of cognitive mapping. Methodology: Theory development Contribution: The theory offers new ways to conceptualize the informing process. Findings: Cognitive mapping has a far-reaching explanatory power on message resonance. Recommendation for Researchers: The theory of cognitive mapping offers a new conceptualization for those exploring the informing process that is ripe for exploration and theory testing. Future Research: This paper forms a building block toward the development of a fuller model of the informing process.




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Analysis of Machine-Based Learning Algorithm Used in Named Entity Recognition

Aim/Purpose: The amount of information published has increased dramatically due to the information explosion. The issue of managing information as it expands at this rate lies in the development of information extraction technology that can turn unstructured data into organized data that is understandable and controllable by computers Background: The primary goal of named entity recognition (NER) is to extract named entities from amorphous materials and place them in pre-defined semantic classes. Methodology: In our work, we analyze various machine learning algorithms and implement K-NN which has been widely used in machine learning and remains one of the most popular methods to classify data. Contribution: To the researchers’ best knowledge, no published study has presented Named entity recognition for the Kikuyu language using a machine learning algorithm. This research will fill this gap by recognizing entities in the Kikuyu language. Findings: An evaluation was done by testing precision, recall, and F-measure. The experiment results demonstrate that using K-NN is effective in classification performance. Recommendation for Researchers: With enough training data, researchers could perform an experiment and check the learning curve with accuracy that compares to state of art NER. Future Research: Future studies may be done using unsupervised and semi-supervised learning algorithms for other resource-scarce languages.




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Multimodal Speech Emotion Recognition Based on Large Language Model

Congcong FANG,Yun JIN,Guanlin CHEN,Yunfan ZHANG,Shidang LI,Yong MA,Yue XIE, Vol.E107-D, No.11, pp.1463-1467
Currently, an increasing number of tasks in speech emotion recognition rely on the analysis of both speech and text features. However, there remains a paucity of research exploring the potential of leveraging large language models like GPT-3 to enhance emotion recognition. In this investigation, we harness the power of the GPT-3 model to extract semantic information from transcribed texts, generating text modal features with a dimensionality of 1536. Subsequently, we perform feature fusion, combining the 1536-dimensional text features with 1188-dimensional acoustic features to yield comprehensive multi-modal recognition outcomes. Our findings reveal that the proposed method achieves a weighted accuracy of 79.62% across the four emotion categories in IEMOCAP, underscoring the considerable enhancement in emotion recognition accuracy facilitated by integrating large language models.
Publication Date: 2024/11/01




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Key Pirate Bay Figures Don’t Recognize Themselves in TV Series

The Pirate Bay TV series is the entertainment industry's depiction of the torrent site's turbulent history. The creators don't take sides but mostly focus on the legal battle that only represents part of the story. According to Pirate Bay co-founder Peter Sunde and Piratbyrån's Rasmus Fleischer, living though it all was a completely different experience.

From: TF, for the latest news on copyright battles, piracy and more.




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China's cognitive warfare advances include sound weapons, according to intel report

China's military is advancing the development of high-technology arms, including sound weapons to wage cognitive warfare -- the use of unconventional tools and capabilities to alter enemy thinking and decision-making, according to a new open-source intelligence report.





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Volunteer recognised for 60 years’ service to charity that rescued him in 1959

Brian Cole says he was so grateful to the RNLI for helping him that he began fundraising and giving talks about it




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Study links shift work to cognitive impairment

Toronto — Middle-aged and older adults who have worked the night shift or rotating shifts are significantly more likely to experience cognitive impairment, results of a recent study suggest.




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All Eyes on Iris Recognition

Iris recognition technology is quickly emerging as the preeminent biometric solution for PIAM — here’s why.




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U.S. Department of Homeland Security Recognizes 911inform for Anti-Terrorism Capabilities

911inform announced that the U.S. Department of Homeland Security has officially designated its innovative emergency management platform as a Qualified Anti-Terrorism Technology (QATT) under the Support Anti-Terrorism by Fostering Effective Technologies (SAFETY) Act.




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SIA Recognizes Green Solutions

The Security Industry Association’s (SIA) New Product Showcase (NPS) is the premier awards-based marketing program in the security industry. It has been in existence since 1979. Each year at ISC West, the NPS program recognizes outstanding contributions to the protection of life and property in residential, commercial and institutional settings. Judging panels composed of industry experts select winners in various categories. The most coveted awards are the Judges’ Choice Award and the Best New Product Award.




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Study links physical stress on the job to cognitive decline, memory loss later in life

Fort Collins, CO — Physically demanding work may lead to poor memory and faster aging of the brain among older adults, results of a recent study led by researchers from Colorado State University show.




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NSC recognizes 6 safety pros with Distinguished Service to Safety Award

Orlando, FL — The National Safety Council awarded six safety professionals with its highest honor Monday during the Opening Session of the 2024 Safety Congress & Expo.




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Mental illness an ‘unrecognized crisis’ among miners with black lung, study shows

Charlottesville, VA — Coal miners with black lung disease commonly face various mental health issues, including thoughts of suicide, results of a recent study conducted by researchers from the University of Virginia show.




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New NIOSH training tool: mine hazard recognition software

Washington — NIOSH has unveiled a beta version of an interactive, PC-based simulation software tool aimed at improving hazard recognition in mines.




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What's Driving Trends & Innovations in License Plate Recognition?

Explore the technological and use case dynamics that are reshaping the LPR landscape, and opening new revenue opportunities for security integrators.




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Nedap and Tuxen & Associates Offering Free Webinar to Introduce New License Plate Recognition Technology

Nedap and Tuxen & Associates will offer a free webinar introducing ANPR Lumo on May 7 at 3 p.m. CT. 




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ASSA ABLOY’s Reader Recognizes 3,000 Faces

Embedded in a modern and ergonomically designed structure, iDFace provides exceptional performance with unmatched facial recognition and authentication performance.




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Freight-carrier alliance pushes for federal recognition of hair-sample drug testing

Washington — The Federal Motor Carrier Safety Administration is seeking public comment on a freight-carrier alliance petition regarding the use of hair samples as a drug-testing method for commercial motor vehicle drivers.




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FMCSA denies petition for federal recognition of hair-sample drug testing

Washington — The Federal Motor Carrier Safety Administration has denied a petition calling on the agency to recognize hair samples as an alternative drug-testing method for truckers, reasserting a long-standing position that it lacks the statutory authority to do so.




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Recognize the hazards of formaldehyde

Widely known as a preservative in morgues, formaldehyde – a colorless, strong-smelling gas – can be found in chemicals, plywood and various household items, including glue and paper product coatings, according to OSHA. It’s also used as an industrial fungicide, germicide and disinfectant.




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Study links shift work to cognitive issues

Linz, Austria — Shift work may be associated with poorer memory and slower mental processing speed, as well as lower levels of alertness and visual focus, results of a recent study out of Austria suggest.




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Hazard recognition

Hazards are all around us. Although some are easy to see, many are not. The trick is learning to spot the hidden hazards.




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Recognize the signs of opioid misuse

Opioid use disorder is defined by Johns Hopkins Medicine as a medical condition in which you’re unable to abstain from using opioids, and behaviors centered around opioid use that interfere with daily life.




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Recognize the signs of impairment

Alcohol, cannabis, prescription drugs, fatigue and mental distress can all cause impairment in the workplace. “Impairment risks are everyone’s responsibility,” the National Safety Council says.




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Caffeine may not be the cognitive kick-starter many people imagine: study

Lansing, MI — If you rely on caffeine to provide a brain boost after a poor night of sleep, findings of a recent study from researchers at Michigan State University may give you a jolt.




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Professional drivers receive recognition for being safe

Orlando, FL — The National Safety Council, during the 2024 NSC Safety Congress & Expo, honored 14 professional drivers who have helped make roads and communities safer.




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Nutrition21: Cognitive Health

Nutrition21, LLC, an Everwell Health company, shared new insights into the cognitive health category and noted that the sector is poised to be one of the fastest growing health areas of the year.




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How digestion, the Microbiome, and Gut Health Could Influence Cognition and Mental Well-Being

Mounting research into causes of dementia and cognitive decline have produced the recognition that two of the potentially modifiable risk factors into these conditions are diet and exercise. In a recent study at King’s College, London 418 adults age 65 and up were tested every two to three years over a 12-year period. Results revealed that cognitive decline and Alzheimer’s Disease were linked to levels of neural stem cell death. Importantly, underlying which was low levels of vitamin D, carotenoids, and lipids




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New Beverages for Cognitive Health

Bigelow says the Peak Energy Black Tea features caffeine and L-Theanine to benefit brain and mood with sustained clarity and focus. Whispering Wildflowers is a caffeine-free, herbal tea with a rosy purple color and a floral blend of lavender, rose, passionflower, and butterfly pea flower that finishes with a hint of sweetness. 




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Prairie Farms Recognized in 2024 WDE Championship Dairy Product Contest

"I would like to thank the Wisconsin Dairy Products Association for hosting the World Dairy Expo competition platform. Winning 65 awards is a great honor, and not only did we top last year's number of WDE awards, but we also retained our place as the competition's most-awarded dairy," said Matt McClelland, Prairie Farms CEO/EVP. 




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The 2024 NAFCD Annual Convention Recognizes Sponsors

NAFCD Executive Vice President Michael Wilbur applauds the sponsor who committed to the growth of the flooring distribution channel.




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NWFA Recognizes 41 Companies for Community Service

The National Wood Flooring Association (NWFA) recognized 41 member companies for community service in 2016.




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Landscapes as represented in textbooks and in students' imagination: stability, generational gap, image retention and recognisability.

Children's Geographies; 08/01/2021
(AN 152310091); ISSN: 14733285
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