mining The dilemma of mining more metals so we can ditch fossil fuels By www.newscientist.com Published On :: Wed, 13 Nov 2024 18:00:00 +0000 In his new book, Power Metal, journalist Vince Beiser provides a balanced briefing on the race for the resources that will shape our technological future Full Article
mining New Victorian mining and exploration online map By www.invest.vic.gov.au Published On :: Wed, 15 Oct 2014 15:29:00 +1000 The Victorian Government has launched Australia's first web tool specifically designed to help Victorian communities locate mining and exploration activities in their regions quickly and easily. The Mining Licences Near Me web tool ensures greater transparency for communities regarding industry activity in their region, both onshore and offshore, including minerals, gas and quarries. Full Article
mining Shocking study questions Einstein’s gravity theory after examining 100 million galaxies By www.yahoo.com Published On :: 2024-11-13T12:40:45Z Full Article
mining B.C. community angry over proposed gravel pit mining operation By www.cbc.ca Published On :: Wed, 13 Nov 2024 00:54:51 EST In the district of Summerland in the southern Interior, local First Nations, environmental groups and hundreds of neighbours have all banded together to oppose a provincial permit to mine in a hillside within the picturesque Garnet Valley. But as Tom Popyk reports, they’re running out of appeals. Full Article
mining Nigeria’s $700bn mining potential draws global interest By punchng.com Published On :: Thu, 14 Nov 2024 01:42:05 +0000 Nigeria’s push to revamp its mining sector is generating heightened interest from global investors as President Bola Tinubu’s administration drives reforms to unlock an estimated $700 billion in untapped mineral resources, diplomatic sources said. Last week, Nigeria launched a four-day mining investment roadshow in South Africa, aiming to attract $500m in foreign investment for its Read More Full Article Business
mining Examining 6 AI Use Cases for Marketing Technology By www.cmswire.com Published On :: Fri, 08 Nov 2024 09:28:14 -0500 AI tools are reshaping how businesses engage with their audiences. Continue reading... Full Article digital marketing personalized customer experience customer data predictive analytics #martech marketing technology customer data platforms cdps generative ai personalization ai
mining Waste mining: investigating the elemental composition of late Carboniferous coprolites from the Joggins Formation By geoscan.nrcan.gc.ca Published On :: Tue, 03 Oct 2023 00:00:00 EDT Bingham-Koslowski, N; Grey, M; Pufahl, P; Ehrman, J; Strauss, A. Geoscience Canada vol. 50, 2023 p. 118, https://doi.org/10.12789/geocanj.2023.50.20<a href="https://geoscan.nrcan.gc.ca/images/geoscan/20220635.jpg"><img src="https://geoscan.nrcan.gc.ca/images/geoscan/20220635.jpg" title="Geoscience Canada vol. 50, 2023 p. 118, https://doi.org/10.12789/geocanj.2023.50.20" height="150" border="1" /></a> Full Article
mining Examining Recent Omnichannel Successes By www.dmnews.com Published On :: Wed, 26 Jul 2017 15:36:22 GMT Here's a collection of recent DMN content that exemplifies successful omnichannel strategies, as well as a few tips to help bring omnichannel mainstream Full Article
mining Mux Miner develops efficient blockchain mining technology for beginners By www.prleap.com Published On :: Mon, 30 Aug 2021 00:00:00 PDT Mux Miner puts in effort to lower energy consumption in cryptocurrency mining. Users can mine with the MUX series in BCH, BTC, Ether, LTC, Monero, and Dash. Full Article
mining [82% Discount] Mine passive bitcoin with this A.I.-powered mining app By www.internetmasterycenter.com Published On :: Tue, 29 Oct 2024 04:34:34 +0000 Crypto, soaring once again, could reach $100,000. As it becomes more expensive, you could afford to buy in less quantity or get into mining as an alternative option, which is what Opal is about today. Opal, as the world’s first A.I.-powered crypto-mining app, could get you up to $29 in bitcoin every 4 hours! For […] Full Article Other Stuff Opal
mining Exams? Examining St. Euphrosynos By www.ancientfaith.com Published On :: 2014-05-18T02:11:46+00:00 Elissa addresses the issue of testing Sunday School students. Full Article
mining The Orthodox Deaconess: Examining the Call for Restoration By www.ancientfaith.com Published On :: 2024-02-01T18:52:43+00:00 The story of the Orthodox Deaconess is largely unknown today. When did they exist, and what was their function? In recent decades, there has been a call for restoring the female diaconate, causing no small debate between Orthodox proponents and opponents. In the first special edition of Ancient Faith Today Live, Fr. Tom Soroka and John Maddex take a deep dive into the topic with a full-length audio documentary, which will feature scholarly experts from both sides of the issue and reflect upon the views shared and what we can conclude about the Church’s wisdom on this issue today. Full Article
mining Two Natures: Examining Chalcedon and Communion By www.ancientfaith.com Published On :: 2024-04-04T14:27:25+00:00 Most of us know about the so-called Great Schism, which tragically divided the Christian Church between East and West in 1054. But there was an earlier division in the 5th century, following the Fourth Ecumenical Council in Chalcedon in 451, which clarified how Jesus is both God and Man. Charges of heresy were brought, anathemas were proclaimed, and communion was broken. Which Churches did not accept the decision of the Council and the subsequent three Councils that followed? Today they are known as the Oriental Orthodox Churches, including the Coptic, Armenian, Syrian, Malankara, Eritrean, and Ethiopian Orthodox Churches. What specifically separates us theologically? Are there reasons to hope that we are closer to these believers than we thought? What efforts have been made to better understand each other in recent decades? On this special edition of Ancient Faith Today Live, Fr. Tom Soroka and John Maddex examine the causes of our division and consider what any path to unity might involve. Panelists include: Bishop (Dr.) Daniel (Findikyan) Dr. Peter Bouteneff Christine Chaillot Dr. David Ford Dr. Emmanuel Gergis Dr. Chad Hatfield Dr. Michael Ibrahim Rev. Dr. Joseph Lucas Dr. Sam Noble Rev Dr. Timothy Thomas Full Article
mining Will All be Saved? Examining Universalism and the Last Judgement By www.ancientfaith.com Published On :: 2024-07-17T05:00:01+00:00 Fr. Tom Soroka and John Maddex will dive into the topic of Universalism and speak with Orthodox panelists who fall into one of three categories: Confident Universalists, Hopeful Universalists, and those who say Universalism was condemned as a heresy. We read in Scripture that God is not willing that any should perish (2 Peter 3:9). But we also read that It is appointed unto man once to die, and after that comes the judgment (Hebrews 9:27). There are those who claim that, since Christ died for all, we can be assured that all will indeed be saved and not face eternal condemnation. This is called “universalism” or “apocatastasis.” Was this teaching condemned by the Church? Who among the Church Fathers embraced universal salvation? Full Article
mining Research on Weibo marketing advertising push method based on social network data mining By www.inderscience.com Published On :: 2024-10-02T23:20:50-05:00 The current advertising push methods have low accuracy and poor advertising conversion effects. Therefore, a Weibo marketing advertising push method based on social network data mining is studied. Firstly, establish a social network graph and use graph clustering algorithm to mine the association relationships of users in the network. Secondly, through sparsisation processing, the association between nodes in the social network graph is excavated. Then, evaluate the tightness between user preferences and other nodes in the social network, and use the TF-IDF algorithm to extract user interest features. Finally, an attention mechanism is introduced to improve the deep learning model, which matches user interests with advertising domain features and outputs push results. The experimental results show that the push accuracy of this method is higher than 95%, with a maximum advertising click through rate of 82.7% and a maximum advertising conversion rate of 60.7%. Full Article
mining Human resource management and organisation decision optimisation based on data mining By www.inderscience.com Published On :: 2024-07-02T23:20:50-05:00 The utilisation of big data presents significant opportunities for businesses to create value and gain a competitive edge. This capability enables firms to anticipate and uncover information quickly and intelligently. The author introduces a human resource scheduling optimisation strategy using a parallel network fusion structure model. The author's approach involves designing a set of network structures based on parallel networks and streaming media, enabling the macro implementation of the enterprise parallel network fusion structure. Furthermore, the author proposes a human resource scheduling optimisation method based on a parallel deep learning network fusion structure. It combines convolutional neural networks and transformer networks to fuse streaming media features, thereby achieving comprehensive identification of the effectiveness of the current human resource scheduling in enterprises. The result shows that the macro and deep learning methods achieve a recognition rate of 87.53%, making it feasible to assess the current state of human resource scheduling in enterprises. Full Article
mining Design of data mining system for sports training biochemical indicators based on artificial intelligence and association rules By www.inderscience.com Published On :: 2024-07-02T23:20:50-05:00 Physiological indicators are an important basis for reflecting the physiological health status of the human body and play an important role in medical practice. Association rules have also been one of the important research hotspots in recent years. This study aims to create a data mining system of association rules and artificial intelligence in biochemical indicators of sports training. This article uses Markov logic for network creation and system training, and tests whether the Markov logic network can be associated with the training system. The results show that the accuracy and recall rate obtained are about 90%, which shows that it is feasible to establish biochemical indicators of sports training based on Markov logic network, and the system has universal, guiding and constructive significance, ensuring that the construction of training system indicators will not go in the wrong direction. Full Article
mining International Journal of Data Mining and Bioinformatics By www.inderscience.com Published On :: Full Article
mining Examining the Efficacy of Personal Response Devices in Army Training By Published On :: Full Article
mining Using Educational Data Mining to Predict Students’ Academic Performance for Applying Early Interventions By Published On :: 2021-07-23 Aim/Purpose: One of the main objectives of higher education institutions is to provide a high-quality education to their students and reduce dropout rates. This can be achieved by predicting students’ academic achievement early using Educational Data Mining (EDM). This study aims to predict students’ final grades and identify honorary students at an early stage. Background: EDM research has emerged as an exciting research area, which can unfold valuable knowledge from educational databases for many purposes, such as identifying the dropouts and students who need special attention and discovering honorary students for allocating scholarships. Methodology: In this work, we have collected 300 undergraduate students’ records from three departments of a Computer and Information Science College at a university located in Saudi Arabia. We compared the performance of six data mining methods in predicting academic achievement. Those methods are C4.5, Simple CART, LADTree, Naïve Bayes, Bayes Net with ADTree, and Random Forest. Contribution: We tested the significance of correlation attribute predictors using four different methods. We found 9 out of 18 proposed features with a significant correlation for predicting students’ academic achievement after their 4th semester. Those features are student GPA during the first four semesters, the number of failed courses during the first four semesters, and the grades of three core courses, i.e., database fundamentals, programming language (1), and computer network fundamentals. Findings: The empirical results show the following: (i) the main features that can predict students’ academic achievement are the student GPA during the first four semesters, the number of failed courses during the first four semesters, and the grades of three core courses; (ii) Naïve Bayes classifier performed better than Tree-based Models in predicting students’ academic achievement in general, however, Random Forest outperformed Naïve Bayes in predicting honorary students; (iii) English language skills do not play an essential role in students’ success at the college of Computer and Information Sciences; and (iv) studying an orientation year does not contribute to students’ success. Recommendations for Practitioners: We would recommend instructors to consider using EDM in predicting students’ academic achievement and benefit from that in customizing students’ learning experience based on their different needs. Recommendation for Researchers: We would highly endorse that researchers apply more EDM studies across various universities and compare between them. For example, future research could investigate the effects of offering tutoring sessions for students who fail core courses in their first semesters, examine the role of language skills in social science programs, and examine the role of the orientation year in other programs. Impact on Society: The prediction of academic performance can help both teachers and students in many ways. It also enables the early discovery of honorary students. Thus, well-deserved opportunities can be offered; for example, scholarships, internships, and workshops. It can also help identify students who require special attention to take an appropriate intervention at the earliest stage possible. Moreover, instructors can be aware of each student’s capability and customize the teaching tasks based on students’ needs. Future Research: For future work, the experiment can be repeated with a larger dataset. It could also be extended with more distinctive attributes to reach more accurate results that are useful for improving the students’ learning outcomes. Moreover, experiments could be done using other data mining algorithms to get a broader approach and more valuable and accurate outputs. Full Article
mining High quality management of higher education based on data mining By www.inderscience.com Published On :: 2024-09-03T23:20:50-05:00 In order to improve the quality of higher education, student satisfaction, and employment rate, a data mining based high-quality management method for higher education is proposed. Firstly, construct a high-quality evaluation system for higher education based on the principles of education quality evaluation. Secondly, the association rule mining method is used to construct a university education quality management model and determine the weight of the impact indicators for high-quality management of university education. Finally, the fuzzy evaluation method is used to determine the high-quality evaluation function of higher education, and the results of high-quality evaluation of higher education are obtained. High-quality management strategies are developed based on the evaluation results to improve the quality of education. The experimental results show that the student satisfaction rate of this method can reach 99.3%, and the student employment rate can reach 99.9%. Full Article
mining Reflections on strategies for psychological health education for college students based on data mining By www.inderscience.com Published On :: 2024-09-03T23:20:50-05:00 In order to improve the mental health level of college students, a data mining based mental health education strategy for college students is proposed. Firstly, analyse the characteristics of data mining and its potential value in mental health education. Secondly, after denoising the mental health data of college students using wavelet transform, data mining methods are used to identify the psychological crisis status of college students. Finally, based on the psychological crisis status of college students, measures for mental health education are proposed from the following aspects: building a psychological counselling platform, launching psychological health promotion activities, establishing a psychological support network, strengthening academic guidance and stress management. The example analysis results show that after the application of the strategy in this article, the psychological health scores of college students have been effectively improved, with an average score of 93.5 points. Full Article
mining A method for evaluating the quality of college curriculum teaching reform based on data mining By www.inderscience.com Published On :: 2024-09-03T23:20:50-05:00 In order to improve the evaluation effect of current university teaching reform, a new method for evaluating the quality of university course teaching reform is proposed based on data mining algorithms. Firstly, the optimal data clustering criterion was used to select evaluation indicators and a quality evaluation system for university curriculum teaching reform was established. Next, a reform quality evaluation model is constructed using BP neural network, and the training process is improved through genetic algorithm to obtain the model weight and threshold of the optimal solution. Finally, the calculated parameters are substituted into the model to achieve accurate evaluation of the quality of university curriculum teaching reform. Selecting evaluation accuracy and evaluation efficiency as evaluation indicators, the practicality of the proposed method was verified through experiments. The experimental results showed that the proposed method can mine teaching reform data and evaluate the quality of teaching reform. Its evaluation accuracy is higher than 96.3%, and the evaluation time is less than 10ms, which is much better than the comparison method, fully demonstrating the practicality of the method. Full Article
mining A personalised recommendation method for English teaching resources on MOOC platform based on data mining By www.inderscience.com Published On :: 2024-09-03T23:20:50-05:00 In order to enhance the accuracy of teaching resource recommendation results and optimise user experience, a personalised recommendation method for English teaching resources on the MOOC platform based on data mining is proposed. First, the learner's evaluation of resources and resource attributes are abstracted into the same space, and resource tags are established using the Knowledge graph. Then, interest preference constraints are introduced to mine sequential patterns of user historical learning behaviour in the MOOC platform. Finally, a graph neural network is used to construct a recommendation model, which adjusts users' short-term and short-term interest parameters to achieve dynamic personalised teaching recommendation resources. The experimental results show that the accuracy and recall of the resource recommendation results of the research method are always higher than 0.9, the normalised sorting gain is always higher than 0.5. Full Article
mining Prediction method of college students' achievements based on learning behaviour data mining By www.inderscience.com Published On :: 2024-09-03T23:20:50-05:00 This paper proposes a method for predicting college students' performance based on learning behaviour data mining. The method addresses the issue of limited sample size affecting prediction accuracy. It utilises the K-means clustering algorithm to mine learning behaviour data and employs a density-based approach to determine optimal clustering centres, which are then output as the results of the clustering process. These clustering results are used as input for an attention encoder-decoder model to extract features from the learning behaviour sequence, incorporating an attention mechanism, sequence feature generator, and decoder. The characteristics derived from the learning behaviour sequence are then used to establish a prediction model for college students' performance, employing support vector regression. Experimental results demonstrate that this method accurately predicts students' performance with a relative error of less than 4% by leveraging the results obtained from learning behaviour data mining. Full Article
mining International Journal of Business Intelligence and Data Mining By www.inderscience.com Published On :: Full Article
mining A data mining method based on label mapping for long-term and short-term browsing behaviour of network users By www.inderscience.com Published On :: 2024-07-04T23:20:50-05:00 In order to improve the speedup and recognition accuracy of the recognition process, this paper designs a data mining method based on label mapping for long-term and short-term browsing behaviour of network users. First, after removing the noise information in the behaviour sequence, calculate the similarity of behaviour characteristics. Then, multi-source behaviour data is mapped to the same dimension, and a behaviour label mapping layer and a behaviour data mining layer are established. Finally, the similarity of the tag matrix is calculated based on the similarity calculation results, and the mining results are output using SVM binary classification process. Experimental results show that the acceleration ratio of this method exceeds 0.9; area under curve receiver operating characteristic curve (AUC-ROC) value increases rapidly in a short time, and the maximum value can reach 0.95, indicating that the mining precision of this method is high. Full Article
mining Research on fast mining of enterprise marketing investment databased on improved association rules By www.inderscience.com Published On :: 2024-07-04T23:20:50-05:00 Because of the problems of low mining precision and slow mining speed in traditional enterprise marketing investment data mining methods, a fast mining method for enterprise marketing investment databased on improved association rules is proposed. First, the enterprise marketing investment data is collected through the crawler framework, and then the collected data is cleaned. Then, the cleaned data features are extracted, and the correlation degree between features is calculated. Finally, according to the calculation results, all data items are used as constraints to reduce the number of frequent itemsets. A pruning strategy is designed in advance. Combined with the constraints, the Apriori algorithm of association rules is improved, and the improved algorithm is used to calculate all frequent itemsets, Obtain fast mining results of enterprise marketing investment data. The experimental results show that the proposed method is fast and accurate in data mining of enterprise marketing investment. Full Article
mining How Much Can We Spare with E-business: Examining the Effects in Supply Chain Management By Published On :: Full Article
mining Finding Diamonds in Data: Reflections on Teaching Data Mining from the Coal Face By Published On :: Full Article
mining Planning an Iron Ore Mine: From Exploration Data to Informed Mining Decisions By Published On :: Full Article
mining Analyzing Computer Programming Job Trend Using Web Data Mining By Published On :: Full Article
mining Discovering a Decision Maker’s Mental Model with Instance-Based Cognitive Mining: By Published On :: Full Article
mining Factors Determining the Balance between Online and Face-to-Face Teaching: An Analysis using Actor-Network Theory By Published On :: Full Article
mining Examining a Flow-Usage Model to Understand MultiMedia-Based Learning By Published On :: Full Article
mining The Roles of Knowledge Management and Cooperation in Determining Company Innovation Capability: A Literature Review By Published On :: 2021-04-05 Aim/Purpose: The aim of this study is to develop a research model derived from relevant literature to guide empirical efforts. Background: Companies struggle to innovate, which is essential for improving their performance, surviving in competition, and growing. A number of studies have discussed company innovation capability, stating that innovation capability is influenced by several variables such as cooperation and knowledge management. Therefore, further research is necessary to identify factors playing a role in enhancing innovation capability. Methodology: This study is based on systematic literature review. The stages are: (1) research scope review, (2) comprehensive online research, (3) journal quality assessment, (4) data extraction from journals, (5) journal synthesis, and (6) comprehensive report. The online research used Google Scholar database, by browsing titles, abstracts, and keywords to locate empirical research studies in peer-reviewed journals published in 2010-2020. Furthermore, 62 related articles were found, of which 38 articles were excluded from further analysis and 24 articles were selected because they were more related to the topic. Contribution: The results of this study enrich the research in the field of knowledge management, cooperation, and innovation capability by developing a conceptual framework of innovation capability. The proposed theoretical model may be fundamental in addressing the need of a research model to guide further empirical efforts. Findings: This study provides a research model derived from systematically reviewing relevant literature. The proposed theoretical model was done by incorporating the aspects of knowledge management, cooperation, and innovation capability. The model shows that knowledge management and cooperation are essential aspects of innovation capability. Furthermore, this study also provides the dimensions and sub dimensions of each variable that was established after synthesizing the literature review. Recommendations for Practitioners: Business practitioners can use the identified predictors of innovation capability and the dimensions of each variable to explore their company’s innovation capability. They can also take the relevant variables into consideration when making policies regarding innovation. Recommendation for Researchers: The theoretical model proposed in this study needs validation with further empirical investigation. Impact on Society: Readers of this paper can obtain an understanding that knowledge management and cooperation are essential aspects to consider in enhancing innovation capability. Future Research: Future studies should explore other dimensions of knowledge management and cooperation through alternative approaches and perspectives. Full Article
mining Challenges in Contact Tracing by Mining Mobile Phone Location Data for COVID-19: Implications for Public Governance in South Africa By Published On :: 2021-04-05 Aim/Purpose: The paper’s objective is to examine the challenges of using the mobile phone to mine location data for effective contact tracing of symptomatic, pre-symptomatic, and asymptomatic individuals and the implications of this technology for public health governance. Background: The COVID-19 crisis has created an unprecedented need for contact tracing across South Africa, requiring thousands of people to be traced and their details captured in government health databases as part of public health efforts aimed at breaking the chains of transmission. Contact tracing for COVID-19 requires the identification of persons who may have been exposed to the virus and following them up daily for 14 days from the last point of exposure. Mining mobile phone location data can play a critical role in locating people from the time they were identified as contacts to the time they access medical assistance. In this case, it aids data flow to various databases designated for COVID-19 work. Methodology: The researchers conducted a review of the available literature on this subject drawing from academic articles published in peer-reviewed journals, research reports, and other relevant national and international government documents reporting on public health and COVID-19. Document analysis was used as the primary research method, drawing on the case studies. Contribution: Contact tracing remains a critical strategy in curbing the deadly COVID-19 pandemic in South Africa and elsewhere in the world. However, given increasing concern regarding its invasive nature and possible infringement of individual liberties, it is imperative to interrogate the challenges related to its implementation to ensure a balance with public governance. The research findings can thus be used to inform policies and practices associated with contact tracing in South Africa. Findings: The study found that contact tracing using mobile phone location data mining can be used to enforce quarantine measures such as lockdowns aimed at mitigating a public health emergency such as COVID-19. However, the use of technology can expose the public to criminal activities by exposing their locations. From a public governance point of view, any exposure of the public to social ills is highly undesirable. Recommendations for Practitioners: In using contact tracing apps to provide pertinent data location caution needs to be exercised to ensure that sensitive private information is not made public to the extent that it compromises citizens’ safety and security. The study recommends the development and implementation of data use protocols to support the use of this technology, in order to mitigate against infringement of individual privacy and other civil liberties. Recommendation for Researchers: Researchers should explore ways of improving digital applications in order to improve the acceptability of the use of contact tracing technology to manage pandemics such as COVID-19, paying attention to ethical considerations. Impact on Society: Since contact tracing has implications for privacy and confidentiality it must be conducted with caution. This research highlights the challenges that the authorities must address to ensure that the right to privacy and confidentiality is upheld. Future Research: Future research could focus on collecting primary data to provide insight on contact tracing through mining mobile phone location data. Research could also be conducted on how app-based technology can enhance the effectiveness of contact tracing in order to optimize testing and tracing coverage. This has the potential to minimize transmission whilst also minimizing tracing delays. Moreover, it is important to develop contact tracing apps that are universally inter-operable and privacy-preserving. Full Article
mining Learning about Online Learning Processes and Students' Motivation through Web Usage Mining By Published On :: Full Article
mining Examining the Effectiveness of Web-Based Learning Tools in Middle and Secondary School Science Classrooms By Published On :: Full Article
mining A Data Mining Approach to Improve Re-Accessibility and Delivery of Learning Knowledge Objects By Published On :: Full Article
mining Detecting Data Errors in Organizational Settings: Examining the Generalizability of Experimental Findings By Published On :: Full Article
mining The Social Network Application Post-Adoptive Use Model (SNAPUM): A Model Examining Social Capital and Other Critical Factors Affecting the Post-Adoptive Use of Facebook By Published On :: Full Article
mining A data mining model to predict the debts with risk of non-payment in tax administration By www.inderscience.com Published On :: 2024-07-29T23:20:50-05:00 One of the main tasks in tax administration is debt management. The main goal of this function is tax due collection. Statements are processed in order to select strategies to use in the debt management process to optimise the debt collection process. This work proposes to carry out a data mining process to predict debts of taxpayers with high probability of non-payment. The data mining process identifies high-risk debts using a survival analysis on a dataset from a tax administration. Three groups of tax debtors with similar payment behaviour were identified and a success rate of up to 90% was reached in estimating the payment time of taxpayers. The concordance index (C-index) was used to determine the performance of the constructed model. The highest prediction rate reached was 90.37% corresponding to the third group. Full Article
mining Pull the Plug or take the Plunge: Multiple Opportunities and the Speed of Venturing Decisions in the Australian Mining Industry By amj.aom.org Published On :: Thu, 16 Jul 2015 15:54:28 +0000 Effectively capturing opportunities requires rapid decision-making. We investigate the speed of opportunity evaluation decisions by focusing on firms' venture termination and venture advancement decisions. Experience, standard operating procedures, and confidence allow firms to make opportunity evaluation decisions faster; we propose that a firm's attentional orientation, as reflected in its project portfolio, limits the number of domains in which these speed-enhancing mechanisms can be developed. Hence firms' decision speed is likely to vary between different types of decisions. Using unique data on 3,269 mineral exploration ventures in the Australian mining industry, we find that firms with a higher degree of attention toward earlier-stage exploration activities are quicker to abandon potential opportunities in early development but slower to do so later, and that such firms are also slower to advance on potential opportunities at all stages compared to firms that focus their attention differently. Market dynamism moderates these relationships, but only with regard to initial evaluation decisions. Our study extends research on decision speed by showing that firms are not necessarily fast or slow regarding all the decisions they make, and by offering an opportunity evaluation framework that recognizes that decision makers can, in fact often do, pursue multiple potential opportunities simultaneously. Full Article
mining Crop vegetation structure is more important than crop type in determining where Lesser Kestrels forage By www.eubon.eu Published On :: Mon, 30 Jun 2014 10:13:25 +0300 Full Article Events
mining D3.3 Updated release and report on publication data-mining software By www.eubon.eu Published On :: Wed, 30 Nov 2016 11:29:46 +0200 Full Article Events
mining Matches and mismatches between national and EU-wide priorities: Examining the Natura 2000 network in vertebrate species conservation By www.eubon.eu Published On :: Mon, 24 Apr 2017 14:59:33 +0300 Full Article Events