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Data on Machine Learning Described by Researchers at University of New South Wales (Learning from machines to close the gap between funding and expenditure in the Australian National Disability Insurance Scheme): Machine Learning

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By a News Reporter-Staff News Editor at Insurance Daily News -- New research on artificial intelligence is the subject of a new report. According to news reporting originating from Canberra, Australia, by NewsRx correspondents, research stated, "The Australian National Disability Insurance Scheme (NDIS) allocates funds to participants for purchase of services." Our news reporters obtained a quote from the research from University of New South Wales: "Only one percent of the 89,299 participants spent all of their allocated funds with 85 participants having failed to spend any, meaning that most of the participants were left with unspent funds. The gap between the allocated budget and realised expenditure reflects misallocation of funds. Thus we employ alternative machine learning techniques to estimate budget and close the gap while maintaining the aggregate level of spending. Three experiments are conducted to test the machine learning models in estimating the budget, expenditure and the resulting gap; compare the learning rate between machines and humans; and identify the significant explanatory variables."


Understanding Agent Environment in AI - KDnuggets

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Before starting the article, it is important to understand what an agent in AI is. The agent is basically an entity that helps the AI, machine learning, or deep reinforcement learning to make a decision or trigger the AI to make a decision. In terms of software, it is defined as the entity which can take decisions and can make different decisions on the basis of changes in the environment, or after getting input from the external environment. In simpler words, the quick agent perceives external change and acts against it the better the results obtained from the model. Hence the role of the agent is always very important in artificial intelligence, machine learning, and deep learning.


Qeexo, and Bosch Enable Developers to Quickly Build and Deploy Machine–Learning … – EEJournal

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Machine learning algorithms created using Qeexo's AutoML can now be deployed on Arduino Nicla Sense ME with Bosch BHI260AP and BME688 sensors.


Self-Powered Fabric Can Help Correct Posture in Real Time with the Help of Machine Learning

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The data collected by the sensors is processed by an integrated machine learning algorithm that can provide immediate feedback, alerting the …


Corelight Announces New Platform to Deliver Open-Source Powered Network Evidence … – KPLC

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Customers can leverage machine learning, behavioral analysis, threat intelligence and signatures, mapped to the MITRE ATT&CK framework, to enable …


Day 15–60 days of Data Science and Machine Learning

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Hope you all had a great Halloween weekend [ I dressed up as "Mother of Dragons" along with my cool " Game of thrones" techie friends];) #winteriscoming. Let's get back and learn some more data science and machine learning. I hope you all have already grasped the Python essentials, Statistics and Maths from day 1 -- day 8(links shared below), Pandas part 1 and part 2 on Day 9, Day 10, Numpy as Day 11, Data Preprocessing Part 1 as Day 12, Data Preprocessing part 2 as Day 13th, Hands on Regression Part 1 as Day 14th. In this post we will cover how we can implement Regression -- part 2 as Day 15. The Linear Regression method is basically a linear approach for modeling the relationship between a scalar dependent variable y and one or more explanatory variables (or independent variables) as it just minimizes the least squares error: for one object target y x T * w, where w is model's weights.


GitHub's AI-powered coding tool will be free for students – TechCrunch

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Last June, Microsoft-owned GitHub and OpenAI launched Copilot, a service that provides suggestions for whole lines of code inside development environments like Microsoft Visual Studio. Available as a downloadable extension, Copilot is powered by an AI model called Codex that's trained on billions of lines of public code to suggest additional lines of code and functions given the context of existing code. Copilot can also surface an approach or solution in response to a description of what a developer wants to accomplish (e.g. "Say hello world"), drawing on its knowledge base and current context. While Copilot was previously available in technical preview, it'll become generally available starting sometime this summer, Microsoft announced at Build 2022.


Handwriting Declines With Human Aging: A Machine Learning Study

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BackgroundHandwriting is an acquired complex cognitive and motor skill resulting from the activation of a widespread brain network. Handwriting therefore may provide biologically relevant information on health status. Also, handwriting can be collected easily in an ecological scenario, through safe, cheap, and largely available tools. Hence, objective handwriting analysis through artificial intelligence would represent an innovative strategy for telemedicine purposes in healthy subjects and people affected by neurological disorders.Materials and MethodsOne-hundred and fifty-six healthy subjects (61 males; 49.6 ± 20.4 years) were enrolled and divided according to age into three subgroups: Younger adults (YA), middle-aged adults (MA), and older adults (OA). Participants performed an ecological handwriting task that was digitalized through smartphones. Data underwent the DBNet algorithm for measuring and comparing the average stroke sizes in the three groups. A convolutional neural network (CNN) was also used to classify handwriting samples. Lastly, receiver operating characteristic (ROC) curves and sensitivity, specificity, positive, negative predictive values (PPV, NPV), accuracy and area under the curve (AUC) were calculated to report the performance of the algorithm.ResultsStroke sizes were significantly smaller in OA than in MA and YA. The CNN classifier objectively discriminated YA vs. OA (sensitivity = 82%, specificity = 80%, PPV = 78%, NPV = 79%, accuracy = 77%, and A...


Using Data Science to Catch Criminals

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The power of data science is not limited to solving technical or business issues. Its usage is not limited to data analytics to create new technologies, target ads to consumers, and maximize profits and sales in business. The concept of open science has led organizations to use data to handle social problems. It can offer a statistical and data-driven solution to hidden human behavior and cultural patterns. We will be using data from the San Francisco crime department to understand the relation between civilian-reported incidents of crime and police-reported incidents of crime. To store and readily access a large amount of data, we will be using GridDB as our database platform.


Deep Studying with Label Differential Privateness - Channel969

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Over the past a number of years, there was an elevated give attention to growing differential privateness (DP) machine studying (ML) algorithms. DP has been the idea of a number of sensible deployments in business -- and has even been employed by the U.S. Census -- as a result of it allows the understanding of system and algorithm privateness ensures. The underlying assumption of DP is that altering a single person's contribution to an algorithm mustn't considerably change its output distribution. In the usual supervised studying setting, a mannequin is educated to make a prediction of the label for every enter given a coaching set of instance pairs {[input1,label1], …, [inputn, labeln]}. Within the case of deep studying, earlier work launched a DP coaching framework, DP-SGD, that was built-in into TensorFlow and PyTorch.