Support Vector Machines


An easy guide to choose the right Machine Learning algorithm for your task

#artificialintelligence

Well, there is no straightforward and sure-shot answer to this question. The answer depends on many factors like the problem statement and the kind of output you want, type and size of the data, the available computational time, number of features and observations in the data, to name a few. It is usually recommended to gather a good amount of data to get reliable predictions. However, many a time the availability of data is a constraint. So, if the training data is smaller or if the dataset has a fewer number of observations and a higher number of features like genetics or textual data, choose algorithms with high bias/low variance like Linear regression, Naïve Bayes, Linear SVM.


younggns/comparative-abusive-lang

#artificialintelligence

This paper conducts a comparative study of various learning models on Hate and Abusive Speech on Twitter dataset. The following script will install required Python packages. We do not provide the code for crawling text data. While creating the pickle file, you will need to create a python dictionary with the following structure: _dict[_id] [tweet_label, tweet_text, context_text]. If your dataset does not have context, fill '' as the third element of each instance.)


Machine Learning with Python Business Applications AI Robot

#artificialintelligence

If the word'Machine Learning' baffles your mind and you want to master it, then this Machine Learning course is for you. If you want to start your career in Machine Learning and make money from it, then this Machine Learning course is for you. If you want to learn how to manipulate things by learning the Math beforehand and then write a code with python, then this Machine Learning course is for you. If you get bored of the word'this Machine Learning course is for you', then this Machine Learning course is for you. Well, machine learning is becoming a widely-used word on everybody's tongue, and this is reasonable as data is everywhere, and it needs something to get use of it and unleash its hidden secrets, and since humans' mental skills cannot withstand that amount of data, it comes the need to learn machines to do that for us.


Facebook Stock Prediction Using Python & Machine Learning

#artificialintelligence

In this article I will show you how to create your own stock prediction Python program using a machine learning algorithm called Support Vector Regression (SVR). The program will read in Facebook (FB) stock data and make a prediction of the open price based on the day. A Support Vector Regression (SVR) is a type of Support Vector Machine,and is a type of supervised learning algorithm that analyzes data for regression analysis. In 1996, this version of SVM for regression was proposed by Christopher J. C. Burges, Vladimir N. Vapnik, Harris Drucker, Alexander J. Smola and Linda Kaufman. The model produced by SVR depends only on a subset of the training data, because the cost function for building the model ignores any training data close to the model prediction.


Some Essential Hacks and Tricks for Machine Learning with Python

#artificialintelligence

It's never been easier to get started with machine learning. In addition to structured MOOCs, there is also a huge number of incredible, free resources available around the web. Familiarity and moderate expertise in at least one high-level programming language is useful for beginners in machine learning. Unless you are a Ph.D. researcher working on a purely theoretical proof of some complex algorithm, you are expected to mostly use the existing machine learning algorithms and apply them in solving novel problems. This requires you to put on a programming hat.


Electronic Nose Technology Can Diagnose Diseases and Disorders

#artificialintelligence

The world is an increasingly busy place, and scheduling that appointment with your doctor for a check up might be on the end of your to-do list. As new technologies enter into the world of health and medicine, it is becoming increasingly easier to check your own vitals to ensure you're living the healthiest lifestyle possible. Enter IEEE Member Yangong Zheng and the electronic nose technology being used to detect and diagnose diseases and disorders simply through the smell your body emits. Although the biological olfactory system was inspiration for this type of technology, an electronic nose does not physically look like or depict a human nose. "Artificial systems for noninvasive chemical sensing are commonly referred to as'electronic nose technology'," explains Zheng.


List of supervised and unsupervised Machine Learning Algorithms

#artificialintelligence

There are a lot of machine learning algorithm available and among them there are some which are used mostly among the use in daily cases. Some of the Machine Learning algorithm are mentioned.


Machine Learning in the Quantum Era

#artificialintelligence

Machine Learning aims at automatically identifying structures and patterns in large data sets. In order to identify these patterns, algorithms often resort to standard linear algebra routines such as matrix inversion or eigenvalue decompositions. For example, support vector machines, one of the most successful traditional machine learning approaches for classification, can be cast to a linear system of equation, and then be solved using matrix inversion. Similarly, identifying the important signals in a data set can be done by identifying the leading eigenvalues and vectors of the data matrix, a method called principal component analysis. The large dimensionality of the vector spaces involved in these operations make their implementation at large scale very resource intensive, thus motivating the development of innovative methods to lower their computational cost.


bims-arihec 2019-11-10 papers

#artificialintelligence

OBJECTIVE: To evaluate the potential value of the machine learning (ML)-based MRI texture analysis for predicting 1p/19q codeletion status of lower-grade gliomas (LGG), using various state-of-the-art ML algorithms.MATERIALS AND METHODS: For this retrospective study, 107 patients with LGG were included from a public database. Texture features were extracted from conventional T2-weighted and contrast-enhanced T1-weighted MRI images, using LIFEx software. Training and unseen validation splits were created using stratified 10-fold cross-validation technique along with minority over-sampling. Dimension reduction was done using collinearity analysis and feature selection (ReliefF). Classifications were done using adaptive boosting, k-nearest neighbours, naive Bayes, neural network, random forest, stochastic gradient descent, and support vector machine.


Day #84: Model training progress

#artificialintelligence

Two dimensional data is easier to visualize than 202 dimensional data. I don't normally leave my computer on 24 hours a day, but it has been hard a work, so it hasn't been off in days. Training a model can take some time, as I am finding out and while I've made progress on the resulting model, it's still not where I want it. Let's talk about what has been going on. If you recall, my post a few days ago covered what I've been up to these past few days.