2,790 research outputs found

    The Potential for Machine Learning Analysis over Encrypted Data in Cloud-based Clinical Decision Support - Background and Review

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    This paper appeared at the 8th Australasian Workshop on Health Informatics and Knowledge Management (HIKM 2015), Sydney, Australia, January 2015. Conferences in Research and Practice in Information Technology (CRPIT), Vol. 164, Anthony Maeder and Jim Warren, Ed. Reproduction for academic, not-for profit purposes permitted provided this text is includedIn an effort to reduce the risk of sensitive data exposure in untrusted networks such as the public cloud, increasing attention has recently been given to encryption schemes that allow specific computations to occur on encrypted data, without the need for decryption. This relies on the fact that some encryption algorithms display the property of homomorphism, which allows them to manipulate data in a meaningful way while still in encrypted form. Such a framework would find particular relevance in Clinical Decision Support (CDS) applications deployed in the public cloud. CDS applications have an important computational and analytical role over confidential healthcare information with the aim of supporting decision-making in clinical practice. This review paper examines the history and current status of homomoprhic encryption and its potential for preserving the privacy of patient data underpinning cloud-based CDS applications

    Data Challenges and Data Analytics Solutions for Power Systems

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    L'abstract è presente nell'allegato / the abstract is in the attachmen

    Kvaliteedi hindamine tähelepanu abil

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    Väitekirja elektrooniline versioon ei sisalda publikatsiooneMasintõlge on saanud osaks mitte ainult keeleteadlaste ja professionaalsete tõlkijate, vaid peaaegu kõigi elust. Enamik inimesi, kes on kasutanud masintõlget, on kohanud naljakaid ja kohati täiesti valesid tõlkeid, mis lause tähendust täielikult moonutavad. Seega peame peale masintõlke mudeli kasutama hindamismehhanismi, mis teavitab inimesi tõlgete kvaliteedist. Loomulikult saavad professionaalsed tõlkijad masintõlke väljundit hinnata ja vajadusel toimetada. Inimeste märkuste kasutamine veebipõhiste masintõlkesüsteemide tõlgete hindamiseks on aga äärmiselt kulukas ja ebapraktiline. Seetõttu on automatiseeritud tõlkekvaliteedi hindamise süsteemid masintõlke töövoo oluline osa. Kvaliteedihinnangu eesmärk on ennustada masintõlke väljundi kvaliteeti, ilma etalontõlgeteta. Selles töös keskendusime kvaliteedihinnangu mõõdikutele ja käsitleme tõlkekvaliteedi näitajana tähelepanumehhanismi ennustatud jaotusi, mis on üks kaasaegsete neuromasintõlke (NMT) süsteemide sisemistest parameetritest. Kõigepealt rakendasime seda rekurrentsetel närvivõrkudel (RNN) põhinevatele masintõlkemudelitele ja analüüsisime pakutud meetodite toimivust juhendamata ja juhendatud ülesannete jaoks. Kuna RNN-põhised MT-süsteemid on nüüdseks asendunud transformeritega, mis muutusid peamiseks tipptaseme masintõlke tehnoloogiaks, kohandasime oma lähenemisviisi ka transformeri arhitektuurile. Näitasime, et tähelepanupõhised meetodid sobivad nii juhendatud kui ka juhendamata ülesannete jaoks, kuigi teatud piirangutega. Kuna annotatsiooni andmete hankimine on üsna kulukas, uurisime, kui palju annoteeritud andmeid on vaja kvaliteedihinnangu mudeli treenimiseks.Machine translation has become a part of the life of not only linguists and professional translators, but almost everyone. Most people who have used machine translation have come across funny and sometimes completely incorrect translations that turn the meaning of a sentence upside down. Thus, apart from a machine translation model, we need to use a scoring mechanism that informs people about the quality of translations. Of course, professional translators can assess and, if necessary, edit the machine translation output. However, using human annotations to evaluate translations of online machine translation systems is extremely expensive and impractical. That is why automated systems for measuring translation quality are a crucial part of the machine translation pipeline. Quality Estimation aims to predict the quality of machine translation output at run-time without using any gold-standard human annotations. In this work, we focused on Quality Estimation methods and explored the distribution of attention—one of the internal parameters of modern neural machine translation systems—as an indicator of translation quality. We first applied it to machine translation models based on recurrent neural networks (RNNs) and analyzed the performance of proposed methods for unsupervised and supervised tasks. Since transformer-based machine translation models had supplanted RNN-based, we adapted our approach to the attention extracted from transformers. We demonstrated that attention-based methods are suitable for both supervised and unsupervised tasks, albeit with some limitations. Since getting annotation labels is quite expensive, we looked at how much annotated data is needed to train a quality estimation model.https://www.ester.ee/record=b549935

    Impact of Robustness of Supply Chain on its Performance - An Empirical Study

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    Robustness of supply chain is rapidly expanding due to mitigation and reduction in the risk of unexpected and destructive events in the companies. As it is impossible for companies to resume their business post major crisis, the prediction of environmental factors that surround the companies paved way for development of a disaster recovery plan. 80% of the companies suffer from business interruptions and lack clarity in disaster management plan. A conceptual model was developed and validated based on supply chain management and supply chain robustness. A structured questionnaire was developed and administered to the supply chain managers. The survey data was collected from 126 organizations of the automotive sector. Structural equation modeling (SEM) techniques were employed to test the hypotheses. The study indicates that the robustness of Supply chain has a positive impact on the performance of the supply chai

    Strategic determinants of big data analytics in the AEC sector: a multi-perspective framework

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    With constant flow of large data sets generated by different organisations, big data analytics promises to be a revolutionary game changer for Architecture, Engineering and Construction (AEC) industry. Despite the potential of Big Data, there has been little research conducted thus far to understand the Big Data phenomenon, specifically in the AEC industry. The objective of this research therefore is to understand the contributing factors for adopting big data in AEC firms. The investigation combined the perceived strategic value of BDA with the TOE framework (technology, organization, and environment), to develop and test a holistic model on big data adoption. A set of hypotheses derived from the extant literature was tested on data from structured surveys of about 365 firms, categorised as construction service firms (engineering and architecture) and construction firms (firms engaged in managing construction projects). The results indicated that the inhibitors and facilitators of BDA adoption are different in the construction services (architecture and engineering) and construction firms. For effective adoption of BDA solutions, the findings will guide the business managers to have realistic expectations of BDA integration challenges in AEC sector

    Monitoring the waste to energy plant using the latest AI methods and tools

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    Solid wastes for instance, municipal and industrial wastes present great environmental concerns and challenges all over the world. This has led to development of innovative waste-to-energy process technologies capable of handling different waste materials in a more sustainable and energy efficient manner. However, like in many other complex industrial process operations, waste-to-energy plants would require sophisticated process monitoring systems in order to realize very high overall plant efficiencies. Conventional data-driven statistical methods which include principal component analysis, partial least squares, multivariable linear regression and so forth, are normally applied in process monitoring. But recently, latest artificial intelligence (AI) methods in particular deep learning algorithms have demostrated remarkable performances in several important areas such as machine vision, natural language processing and pattern recognition. The new AI algorithms have gained increasing attention from the process industrial applications for instance in areas such as predictive product quality control and machine health monitoring. Moreover, the availability of big-data processing tools and cloud computing technologies further support the use of deep learning based algorithms for process monitoring. In this work, a process monitoring scheme based on the state-of-the-art artificial intelligence methods and cloud computing platforms is proposed for a waste-to-energy industrial use case. The monitoring scheme supports use of latest AI methods, laveraging big-data processing tools and taking advantage of available cloud computing platforms. Deep learning algorithms are able to describe non-linear, dynamic and high demensionality systems better than most conventional data-based process monitoring methods. Moreover, deep learning based methods are best suited for big-data analytics unlike traditional statistical machine learning methods which are less efficient. Furthermore, the proposed monitoring scheme emphasizes real-time process monitoring in addition to offline data analysis. To achieve this the monitoring scheme proposes use of big-data analytics software frameworks and tools such as Microsoft Azure stream analytics, Apache storm, Apache Spark, Hadoop and many others. The availability of open source in addition to proprietary cloud computing platforms, AI and big-data software tools, all support the realization of the proposed monitoring scheme

    Data analytics 2016: proceedings of the fifth international conference on data analytics

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