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2024 - A Deep Dive into Big Waves - The Seattle U Newsroom

2024 - A Deep Dive into Big Waves - The Seattle U Newsroom
seattleu.edu - get the latest breaking news, showbiz & celebrity photos, sport news & rumours, viral videos and top stories from seattleu.edu Daily Mail and Mail on Sunday newspapers.

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Regióetropolitana
Chile
Spain
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Pontifical-catholic-university

Why we need to rethink what we know about dust

New research reveals our understanding of dust’s role in the environment is far from settled.

United-states
Australia
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Atmosphere
Climate
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Indian-Origin Mathematician T N Subramaniam Passes Away; Remembered for Contributions to General Motors

Dr. T N Subramaniam, renowned mathematician and founder of Route One, passed away in Michigan. Remembered for his contributions to math and GM

Michigan
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International-blogger
Editor-economics-of-press-trust-india
Route-one
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Prime-minister-indira-gandhi
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Mathematician

I worked for the Bank of England – economic forecasts cannot be trusted

How often have you seen a headline which tells you exactly how long inflation is to remain high, or which degree global temperatures are to hit in a given year?

United-kingdom
Monetary-policy-committee-of-the-bank
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Mathematical-models
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Independent-variables
Money-supply
Forecasts
Predictive-models

"A Cost-Sensitive Machine Learning Model With Multitask Learning for In" by Akbar Telikani, Nima Esmi Rudbardeh et al.

A problem with machine learning (ML) techniques for detecting intrusions in the Internet of Things (IoT) is that they are ineffective in the detection of low-frequency intrusions. In addition, as ML models are trained using specific attack categories, they cannot recognize unknown attacks. This article integrates strategies of cost-sensitive learning and multitask learning into a hybrid ML model to address these two challenges. The hybrid model consists of an autoencoder for feature extraction and a support vector machine (SVM) for detecting intrusions. In the cost-sensitive learning phase for the class imbalance problem, the hinge loss layer is enhanced to make a classifier strong against low-distributed intrusions. Moreover, to detect unknown attacks, we formulate the SVM as a multitask problem. Experiments on the UNSW-NB15 and BoT-IoT datasets demonstrate the superiority of our model in terms of recall, precision, and F1-score averagely 92.2%, 96.2%, and 94.3%, respectively, over ot

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Internet-of-things-iot
Intrusion-detection
Mathematical-models
Ultitask-learning
Upport-vector-machine-svm
Support-vector-machines
Task-analysis
Training

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