Goto

Collaborating Authors

Ensemble Learning


Restaurant Revenue Prediction

#artificialintelligence

Restaurants are an essential part of a country's economy and society. Whether it may be for social gatherings or a quick bite, most of us have experienced at least one visit. With the recent rise in pop up restaurants and food trucks, it's imperative for the business owner to figure out when and where to open new restaurants since it takes up a lot of time, effort, and capital to do so. This brings up the problem of finding the best optimal time and place to open a new restaurant. TFI which owns many giant restaurant chains has provided demographic, real estate, and commercial data in their restaurant revenue prediction on Kaggle.


Decision Trees, Random Forests, AdaBoost & XGBoost in Python

#artificialintelligence

In this section we will learn - What does Machine Learning mean. What are the meanings or different terms associated with machine learning? You will see some examples so that you understand what machine learning actually is. It also contains steps involved in building a machine learning model, not just linear models, any machine learning model.


Elastic Distributed Training with XGBoost on Ray

#artificialintelligence

Introduction Since we productionized distributed XGBoost on Apache Spark™ at Uber in 2017, XGBoost has powered a wide spectrum of machine learning (ML) use cases at Uber, spanning from optimizing marketplace dynamic pricing policies for Freight, improving times of arrival (ETA) estimation, fraud detection and prevention, to content discovery and recommendation for Uber Eats. However, as Uber has scaled, we have started to run distributed training jobs with more data and workers, and more complex distributed training patterns have become increasingly common. As such, we have observed a number of challenges for doing distributed machine learning and deep learning at


Mastering XGBoost

#artificialintelligence

In the case of XGBoost, it is more useful to discuss hyperparameter tuning than the underlying mathematics because hyperparameter tuning is unusually complex, time-consuming, and necessary for deployment, whereas the mathematics are already embedded in the code libraries. While manual hyperparameter tuning is essential and time-consuming in many machine learning algorithms or models, it is especially so in XGBoost. Therefore, while this section focuses on identifying a key element to deploying XGBoost -- in our case study and example here to predict new fashions ("fast fashion") to gain competitive advantage in online apparel sales -- these hyperparameter tuning lessons are valid for all applications of XGBoost, and many other machine learning model applications herein also. The distinction and roles of parameters and hyperparameters is critical to affordable, timely, and accurate machine learning deployments. A core benefit to machine learning is its ability to discover and identify patterns and regularities in Big Data by automatically tuning many thousands or millions of "learnable" parameters.


Using AntiPatterns to avoid MLOps Mistakes

#artificialintelligence

Different values of hyper-parameters often prove to be significant drivers of model performance and are expensive to tune and mostly task specific. Hyper-parameters play such a crucial role in modeling architectures that entire research efforts are devoted to developing efficient hyper-parameter search strategies (Bergstra et al., 2013; Nguyen et al., 2019; Henderson et al., 2018; Van Rijn and Hutter, 2018; Probst et al., 2019). The set of hyper-parameters differs for different learning algorithms. For instance, even a simple classification model like the decision tree classifier, has hyper-parameters like the maximum depth of the tree, the minimum number of samples to split an internal node and the criterion to use for estimating either the impurity at a node (gini) or the information gain (entropy) at each node. Ensemble models like random forest classifiers and gradient boosting machines also have additional parameters governing the number of estimators (trees) to include in the model.


Leveraging Machine Learning to Detect Fraud: Tips to Developing a Winning Kaggle Solution

#artificialintelligence

A value count on the target label shows that only 3.5% of the transactions are labeled fraudulent. Typically, fraudulent transactions make up a small percentage of transactions. Correlation can help you understand the linear relationship between features and between features and the target. A correlation can range between -1 (perfect negative relationship) and 1 (perfect positive relationship), with 0 indicating no straight-line relationship. Visualizing the data helps with feature selection by revealing trends in the data.


A machine learning, bias-free approach for predicting business success using Crunchbase data

#artificialintelligence

Promising results were obtained with the gradient boosting classifier. Predicting the success of a business venture has always been a struggle for both practitioners and researchers. However, thanks to companies that aggregate data about other firms, it has become possible to create and validate predictive models based on an unprecedented amount of real-world examples. In this study, we use data obtained from one of the largest platforms integrating business information – Crunchbase. Our final training set consisted of 213 171 companies.


Giuliano Liguori on Twitter

#artificialintelligence

“🔝 #MachineLearning Prediction Algorithms {#infographic} by @DatumGuy Random regression Logistic regression Decision Tree Random forest Gradient Boosting @antgrasso @Ronald_vanLoon @KirkDBorne @SpirosMargaris @mvollmer1 @machinelearnflx @AISOMA_AG @andy_fitze @SwissCognitive”


A Comprehensive Guide to Ensemble Learning - What Exactly Do You Need to Know - neptune.ai

#artificialintelligence

Ensemble learning techniques have been proven to yield better performance on machine learning problems. We can use these techniques for regression as well as classification problems. The final prediction from these ensembling techniques is obtained by combining results from several base models. Averaging, voting and stacking are some of the ways the results are combined to obtain a final prediction. In this article, we will explore how ensemble learning can be used to come up with optimal machine learning models. Ensemble learning is a combination of several machine learning models in one problem.


Random Forest

#artificialintelligence

Random forest is a Supervised Machine Learning Algorithm that is used widely in Classification and Regression problems. It builds decision trees on different samples and takes their majority vote for classification and average in case of regression. One of the most important features of the Random Forest Algorithm is that it can handle the data set containing continuous variables as in the case of regression and categorical variables as in the case of classification. It performs better results for classification problems. Let's dive into a real-life analogy to understand this concept further.