Self-Assembling Insurance Claim Models Using Regularized Regression and Machine Learning

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Publisher :
ISBN 13 :
Total Pages : 0 pages
Book Rating : 4.:/5 (137 download)

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Book Synopsis Self-Assembling Insurance Claim Models Using Regularized Regression and Machine Learning by : Gráinne McGuire

Download or read book Self-Assembling Insurance Claim Models Using Regularized Regression and Machine Learning written by Gráinne McGuire and published by . This book was released on 2018 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: The lasso is applied in an attempt to automate the loss reserving problem. The regression form contained within the lasso is a GLM, and so that the model has all the versatility of that type of model, but the model selection is automated and the parameter coefficients for selected terms will not be the same. There are two applications presented, one to synthetic data in conventional triangular form, and another to real data.The secret of success in such an endeavor is the selection of the set of candidate basis functions for representation of the data set. Cross-validation is used for model selection. The lasso performs well in modelling, identifying known features in the synthetic data, and tracking them accurately. This is despite complexity in those features that would challenge, and possibly defeat, most loss reserving alternatives. In the case of real data, the lasso also succeeds in tracking features of the data that analysis of the data set over many years has rendered virtually known. A later section of the paper discusses the prediction error associated with a lasso-based loss reserve. It is seen that the procedure can be readily adapted to the estimation of parameter and process error, but can also estimate one component of model error. To the authors knowledge, no other loss reserving model in the literature does so.

Claim Models

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Publisher : MDPI
ISBN 13 : 3039286641
Total Pages : 108 pages
Book Rating : 4.0/5 (392 download)

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Book Synopsis Claim Models by : Greg Taylor

Download or read book Claim Models written by Greg Taylor and published by MDPI. This book was released on 2020-04-15 with total page 108 pages. Available in PDF, EPUB and Kindle. Book excerpt: This collection of articles addresses the most modern forms of loss reserving methodology: granular models and machine learning models. New methodologies come with questions about their applicability. These questions are discussed in one article, which focuses on the relative merits of granular and machine learning models. Others illustrate applications with real-world data. The examples include neural networks, which, though well known in some disciplines, have previously been limited in the actuarial literature. This volume expands on that literature, with specific attention to their application to loss reserving. For example, one of the articles introduces the application of neural networks of the gated recurrent unit form to the actuarial literature, whereas another uses a penalized neural network. Neural networks are not the only form of machine learning, and two other papers outline applications of gradient boosting and regression trees respectively. Both articles construct loss reserves at the individual claim level so that these models resemble granular models. One of these articles provides a practical application of the model to claim watching, the action of monitoring claim development and anticipating major features. Such watching can be used as an early warning system or for other administrative purposes. Overall, this volume is an extremely useful addition to the libraries of those working at the loss reserving frontier.

Machine Learning Techniques for Detecting Hierarchical Interactions in Insurance Claims Models

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Publisher :
ISBN 13 :
Total Pages : 91 pages
Book Rating : 4.:/5 (111 download)

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Book Synopsis Machine Learning Techniques for Detecting Hierarchical Interactions in Insurance Claims Models by : Sandra Maria Nawar

Download or read book Machine Learning Techniques for Detecting Hierarchical Interactions in Insurance Claims Models written by Sandra Maria Nawar and published by . This book was released on 2016 with total page 91 pages. Available in PDF, EPUB and Kindle. Book excerpt: This thesis presents an intuitive way to do predictive modeling in actuarial science. Generalized Linear Models (GLMs) are the standard tool for predictive modeling in the actuarial literature and in actuarial practice, yet GLMs can be quite restrictive. The aim of this work is to model claims and to propose solutions to current actuarial problems such as high variability in large data-sets, variable selection, overfitting, dealing with highly correlated variables and detecting non-linear effects such as interactions. Regularization techniques are crucial for modeling big data, which means dealing with high-dimensionality, sometimes noisy data that often contains many irrelevant predictors. Penalized regression is a set of regression techniques that impose a constraint/penalty on the regression coefficients and can be used as a powerful variable selection tool as well. They are a generalization of GLMs and include techniques such as Ridge regression, lasso, group-lasso and Elastic Net. The proposed approach is a hierarchical group-lasso-type model that can efficiently handle variable selection and interaction detection between variables while enforcing strong hierarchy. This is achieved by imposing a penalty on the coefficients at the individual and group level. By optimizing the penalized objective function the model performs variable selection and estimation. Additionally, the model automatically detects interactions which is another important factor to achieve a high predictive power. For those purposes the group-lasso method is investigated for the Poisson and gamma distributions to perform frequency-severity modeling.

Generalized Linear Models for Insurance Rating

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Publisher :
ISBN 13 : 9780996889728
Total Pages : 106 pages
Book Rating : 4.8/5 (897 download)

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Book Synopsis Generalized Linear Models for Insurance Rating by : Mark Goldburd

Download or read book Generalized Linear Models for Insurance Rating written by Mark Goldburd and published by . This book was released on 2016-06-08 with total page 106 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Claim Models: Granular Forms and Machine Learning Forms

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Publisher :
ISBN 13 : 9783039286652
Total Pages : 108 pages
Book Rating : 4.2/5 (866 download)

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Book Synopsis Claim Models: Granular Forms and Machine Learning Forms by : Greg Taylor

Download or read book Claim Models: Granular Forms and Machine Learning Forms written by Greg Taylor and published by . This book was released on 2020 with total page 108 pages. Available in PDF, EPUB and Kindle. Book excerpt: This collection of articles addresses the most modern forms of loss reserving methodology: granular models and machine learning models. New methodologies come with questions about their applicability. These questions are discussed in one article, which focuses on the relative merits of granular and machine learning models. Others illustrate applications with real-world data. The examples include neural networks, which, though well known in some disciplines, have previously been limited in the actuarial literature. This volume expands on that literature, with specific attention to their application to loss reserving. For example, one of the articles introduces the application of neural networks of the gated recurrent unit form to the actuarial literature, whereas another uses a penalized neural network. Neural networks are not the only form of machine learning, and two other papers outline applications of gradient boosting and regression trees respectively. Both articles construct loss reserves at the individual claim level so that these models resemble granular models. One of these articles provides a practical application of the model to claim watching, the action of monitoring claim development and anticipating major features. Such watching can be used as an early warning system or for other administrative purposes. Overall, this volume is an extremely useful addition to the libraries of those working at the loss reserving frontier.

Data Science and Machine Learning in Insurance. A Gentle Introduction for Actuaries

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Publisher :
ISBN 13 : 9788825528657
Total Pages : 276 pages
Book Rating : 4.5/5 (286 download)

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Book Synopsis Data Science and Machine Learning in Insurance. A Gentle Introduction for Actuaries by : Marco Aleandri

Download or read book Data Science and Machine Learning in Insurance. A Gentle Introduction for Actuaries written by Marco Aleandri and published by . This book was released on 2019 with total page 276 pages. Available in PDF, EPUB and Kindle. Book excerpt:

An EM Algorithm for DPLN-Regression Applied to Heavy-Tailed Insurance Claims

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Publisher :
ISBN 13 :
Total Pages : 31 pages
Book Rating : 4.:/5 (13 download)

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Book Synopsis An EM Algorithm for DPLN-Regression Applied to Heavy-Tailed Insurance Claims by : Enrique Calderin

Download or read book An EM Algorithm for DPLN-Regression Applied to Heavy-Tailed Insurance Claims written by Enrique Calderin and published by . This book was released on 2017 with total page 31 pages. Available in PDF, EPUB and Kindle. Book excerpt: Traditional regression models might not be appropriate when the probability of extreme events is higher than that implied by the normal distribution. Extending the method for estimating the parameters of a double Pareto lognormal distribution (DPLN) in Reed and Jorgensen (2004), we develop an EM algorithm for heavy-tailed DPLN-regression. The DPLN distribution is obtained as a mixture of a lognormal distribution with a double Pareto distribution. In this paper the associated regression model has the location parameter equal to a linear predictor which is used to model insurance claim amounts for various data sets. The performance is compared with those of thegeneralised beta (of the second kind) and lognormal distributions.

Machine Learning Methods for the Detection of Fraudulent Insurance Claims

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Publisher :
ISBN 13 :
Total Pages : 0 pages
Book Rating : 4.:/5 (133 download)

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Book Synopsis Machine Learning Methods for the Detection of Fraudulent Insurance Claims by : Sisheng Zhao

Download or read book Machine Learning Methods for the Detection of Fraudulent Insurance Claims written by Sisheng Zhao and published by . This book was released on 2020 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: This thesis focuses on automotive fraudulent claims detection, a particular Property and Casualty (P&C) insurance product. By analyzing the customer's information, we try to define a model to determine if one customer has filed a fraudulent claim. Two datasets used in this thesis. One of them is very imbalanced, as 6.1% of policyholders file fraudulent claims (coded as 1) and 93.9% of policyholders file normal claims (coded as 0). So, we need to deal with the imbalanced classes, by using rebalanced methods such as SMOTE and under-sampling. Then we use classical methods (naïve Bayes and logistic regression) and new data science methods (random forest and gradient boosting) to detect the fraudulent claims. During the process, we compare these methods to find which one performs better for this application. In addition, the combination of SMOTE and clustering is also used to these two datasets, which is unusual in fraud detection. But the results have been improved a lot for all these four classification models. What is more, link analysis method has also been mentioned in the conclusion. These methods have also been used to another dataset, which is not that imbalanced, with 24.7% of fraudulent claims and 75.3% of normal claims. The reason for using two datasets is to see if the degree of imbalance affects the performance of the oversampling, undersampling and different models. If so, then these methodologies will be more convincing. If not, we can dig deeper to find the reason.

Non-Life Insurance Pricing with Generalized Linear Models

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Publisher : Springer Science & Business Media
ISBN 13 : 3642107915
Total Pages : 181 pages
Book Rating : 4.6/5 (421 download)

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Book Synopsis Non-Life Insurance Pricing with Generalized Linear Models by : Esbjörn Ohlsson

Download or read book Non-Life Insurance Pricing with Generalized Linear Models written by Esbjörn Ohlsson and published by Springer Science & Business Media. This book was released on 2010-03-18 with total page 181 pages. Available in PDF, EPUB and Kindle. Book excerpt: Non-life insurance pricing is the art of setting the price of an insurance policy, taking into consideration varoius properties of the insured object and the policy holder. Introduced by British actuaries generalized linear models (GLMs) have become today a the standard aproach for tariff analysis. The book focuses on methods based on GLMs that have been found useful in actuarial practice and provides a set of tools for a tariff analysis. Basic theory of GLMs in a tariff analysis setting is presented with useful extensions of standarde GLM theory that are not in common use. The book meets the European Core Syllabus for actuarial education and is written for actuarial students as well as practicing actuaries. To support reader real data of some complexity are provided at www.math.su.se/GLMbook.

Insurance Analytics with Tree-Based Models

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ISBN 13 :
Total Pages : 0 pages
Book Rating : 4.:/5 (133 download)

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Book Synopsis Insurance Analytics with Tree-Based Models by : Zhiyu Quan

Download or read book Insurance Analytics with Tree-Based Models written by Zhiyu Quan and published by . This book was released on 2019 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: Tree-based models are supervised learning algorithms broadly described by repeated partitioning of the regions of the explanatory variables to form homogeneous groups. The partitioning is based on minimization of a loss function related to the response variable. The results form and create a tree-based structure, which helps make for better model interpretation, for predicting the response. Because of the many advantages of tree-based models, their use in disciplines like engineering, biostatistics, and ecology has been a popular alternative predictive tools for building classification and regression models. A single decision tree may not produce accurate predictions, thereby, we also examine the benefits of ensemble methods (e.g., random forests, boosting) for which we produce several trees to improve accuracy. We also describe procedures of tuning model parameters to further improve predictive accuracy. In this thesis, we explore the many potential uses of tree-based models in actuarial science and insurance. First, in valuing large portfolios of variable annuities, we examine the performance of tree-based methods as alternative metamodels for calculating associated guarantees embedded in these products. Simulation procedures have been the norm, but tree-based models produce accurate and efficient results that drastically reduce the time needed to produce valuation results. Second, for claims predictions in general insurance, we develop the innovative approach of producing hybrid tree-based models, which can be described as a two-step procedure. The first step develops a classification tree-based model for the frequency component, and the subsequent step builds an elastic net regression model for the severity component. This regression is done at each terminal node produced from the classification tree. The resulting hybrid tree structure captures the many benefits of tree-based models and is proposed as an improvement to the existing Tweedie generalized linear model (GLM) widely popular in practice. Finally, we apply multivariate tree models to multi-line insurance claims data with correlated responses. The literature on the theory and relevant uses of building trees with multivariate response is less numerous. However, in building trees as predictive models with multivariate response, we find the potential benefits of better understanding inherent relationships among the several responses and even improvement in marginal predictive accuracy. In the future, to better accommodate the peculiar characteristics of multivariate claim responses, we will further investigate tree-based models using alternative multivariate loss functions.

Predictive Model Building for Utilizing Word Embedding Models

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Publisher :
ISBN 13 :
Total Pages : 112 pages
Book Rating : 4.6/5 (624 download)

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Book Synopsis Predictive Model Building for Utilizing Word Embedding Models by : Scott Manski

Download or read book Predictive Model Building for Utilizing Word Embedding Models written by Scott Manski and published by . This book was released on 2020 with total page 112 pages. Available in PDF, EPUB and Kindle. Book excerpt: Textual data contains a vast amount of information, yet for many researchers it has not been clear how the information could be used for an empirical analysis. Often times textual data are ignored or discarded in statistical analyses because regression and other statistical methods require numeric covariates. This dissertation will demonstrate how cutting-edge text mining technologies can improve empirical analyses by transforming textual data into numeric explanatory variables, thus allowing textual data to be incorporated into a statistical analysis. By transforming the textual data, the number of explanatory variables often becomes larger than the number of observations. For this reason, we explore the application of generalized additive models in tandem with adaptive lasso. In addition, we construct an algorithm for fitting a Gamma double generalized linear model with a group lasso penalty. Through this, we show how useful information can be extracted from textual data. We show how our methods can be applied through several insurance claims examples. We believe that our work can be widely used for other observational researchers in economics, business, statistical science, and social science.

PREDICTING RISK LEVEL FOR LIFE INSURANCE USING MACHINE LEARNING ALGORITHMS

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Publisher :
ISBN 13 :
Total Pages : 82 pages
Book Rating : 4.:/5 (122 download)

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Book Synopsis PREDICTING RISK LEVEL FOR LIFE INSURANCE USING MACHINE LEARNING ALGORITHMS by : WANG BAOLING (TP051988)

Download or read book PREDICTING RISK LEVEL FOR LIFE INSURANCE USING MACHINE LEARNING ALGORITHMS written by WANG BAOLING (TP051988) and published by . This book was released on 2019 with total page 82 pages. Available in PDF, EPUB and Kindle. Book excerpt: In the era of big data expansion, how to use data to improve risk assessment is a key point for insurance companies. The underwriting process is the starting step of an insurance policy and the first customer touch point. The life insurance underwriters currently face the problem of how to find a solution to improve the accuracy of risk assessment and service efficiency at the same time. This article proposes a solution with three research objectives for underwriters to overcome this predicament. As the high dimensional dataset became the common challenge for insurance dataset, the first objective would be demonstrating the impact between different dimension reduction techniques. One filter method and one wrapper method of feature selection will be applied in this research. The second objective would be identifying the most key risk factors for risk assessment in underwriting, in order to improve the quality of data collection for better risk management. And the last objective is comparing the performance between different machine learning algorithms. In this research, Multiple Linear Regression (MLR), XBoost, Support Vector Regression (SVR) and Stacking Ensemble model be trained according to those two feature selection methods. As the results, overall the models built based on wrapper method have the better performance, meanwhile, Stacking Ensemble model achieved the best performance with RMSE as 1.92 and MAE as 1.45, respectively. Furthermore, this study also analysed the most significant factors that influence the risk level most according t the feature selection methods and models.

Big Data and Social Science

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Publisher : CRC Press
ISBN 13 : 1498751431
Total Pages : 493 pages
Book Rating : 4.4/5 (987 download)

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Book Synopsis Big Data and Social Science by : Ian Foster

Download or read book Big Data and Social Science written by Ian Foster and published by CRC Press. This book was released on 2016-08-10 with total page 493 pages. Available in PDF, EPUB and Kindle. Book excerpt: Both Traditional Students and Working Professionals Acquire the Skills to Analyze Social Problems. Big Data and Social Science: A Practical Guide to Methods and Tools shows how to apply data science to real-world problems in both research and the practice. The book provides practical guidance on combining methods and tools from computer science, statistics, and social science. This concrete approach is illustrated throughout using an important national problem, the quantitative study of innovation. The text draws on the expertise of prominent leaders in statistics, the social sciences, data science, and computer science to teach students how to use modern social science research principles as well as the best analytical and computational tools. It uses a real-world challenge to introduce how these tools are used to identify and capture appropriate data, apply data science models and tools to that data, and recognize and respond to data errors and limitations. For more information, including sample chapters and news, please visit the author's website.

Interpretable Machine Learning

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Publisher : Lulu.com
ISBN 13 : 0244768528
Total Pages : 320 pages
Book Rating : 4.2/5 (447 download)

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Book Synopsis Interpretable Machine Learning by : Christoph Molnar

Download or read book Interpretable Machine Learning written by Christoph Molnar and published by Lulu.com. This book was released on 2020 with total page 320 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book is about making machine learning models and their decisions interpretable. After exploring the concepts of interpretability, you will learn about simple, interpretable models such as decision trees, decision rules and linear regression. Later chapters focus on general model-agnostic methods for interpreting black box models like feature importance and accumulated local effects and explaining individual predictions with Shapley values and LIME. All interpretation methods are explained in depth and discussed critically. How do they work under the hood? What are their strengths and weaknesses? How can their outputs be interpreted? This book will enable you to select and correctly apply the interpretation method that is most suitable for your machine learning project.

Frontiers in Massive Data Analysis

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Publisher : National Academies Press
ISBN 13 : 0309287812
Total Pages : 191 pages
Book Rating : 4.3/5 (92 download)

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Book Synopsis Frontiers in Massive Data Analysis by : National Research Council

Download or read book Frontiers in Massive Data Analysis written by National Research Council and published by National Academies Press. This book was released on 2013-09-03 with total page 191 pages. Available in PDF, EPUB and Kindle. Book excerpt: Data mining of massive data sets is transforming the way we think about crisis response, marketing, entertainment, cybersecurity and national intelligence. Collections of documents, images, videos, and networks are being thought of not merely as bit strings to be stored, indexed, and retrieved, but as potential sources of discovery and knowledge, requiring sophisticated analysis techniques that go far beyond classical indexing and keyword counting, aiming to find relational and semantic interpretations of the phenomena underlying the data. Frontiers in Massive Data Analysis examines the frontier of analyzing massive amounts of data, whether in a static database or streaming through a system. Data at that scale-terabytes and petabytes-is increasingly common in science (e.g., particle physics, remote sensing, genomics), Internet commerce, business analytics, national security, communications, and elsewhere. The tools that work to infer knowledge from data at smaller scales do not necessarily work, or work well, at such massive scale. New tools, skills, and approaches are necessary, and this report identifies many of them, plus promising research directions to explore. Frontiers in Massive Data Analysis discusses pitfalls in trying to infer knowledge from massive data, and it characterizes seven major classes of computation that are common in the analysis of massive data. Overall, this report illustrates the cross-disciplinary knowledge-from computer science, statistics, machine learning, and application disciplines-that must be brought to bear to make useful inferences from massive data.

Deep Learning

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Publisher : MIT Press
ISBN 13 : 0262337371
Total Pages : 801 pages
Book Rating : 4.2/5 (623 download)

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Book Synopsis Deep Learning by : Ian Goodfellow

Download or read book Deep Learning written by Ian Goodfellow and published by MIT Press. This book was released on 2016-11-10 with total page 801 pages. Available in PDF, EPUB and Kindle. Book excerpt: An introduction to a broad range of topics in deep learning, covering mathematical and conceptual background, deep learning techniques used in industry, and research perspectives. “Written by three experts in the field, Deep Learning is the only comprehensive book on the subject.” —Elon Musk, cochair of OpenAI; cofounder and CEO of Tesla and SpaceX Deep learning is a form of machine learning that enables computers to learn from experience and understand the world in terms of a hierarchy of concepts. Because the computer gathers knowledge from experience, there is no need for a human computer operator to formally specify all the knowledge that the computer needs. The hierarchy of concepts allows the computer to learn complicated concepts by building them out of simpler ones; a graph of these hierarchies would be many layers deep. This book introduces a broad range of topics in deep learning. The text offers mathematical and conceptual background, covering relevant concepts in linear algebra, probability theory and information theory, numerical computation, and machine learning. It describes deep learning techniques used by practitioners in industry, including deep feedforward networks, regularization, optimization algorithms, convolutional networks, sequence modeling, and practical methodology; and it surveys such applications as natural language processing, speech recognition, computer vision, online recommendation systems, bioinformatics, and videogames. Finally, the book offers research perspectives, covering such theoretical topics as linear factor models, autoencoders, representation learning, structured probabilistic models, Monte Carlo methods, the partition function, approximate inference, and deep generative models. Deep Learning can be used by undergraduate or graduate students planning careers in either industry or research, and by software engineers who want to begin using deep learning in their products or platforms. A website offers supplementary material for both readers and instructors.

Artificial Intelligence in Asset Management

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Publisher : CFA Institute Research Foundation
ISBN 13 : 195292703X
Total Pages : 95 pages
Book Rating : 4.9/5 (529 download)

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Book Synopsis Artificial Intelligence in Asset Management by : Söhnke M. Bartram

Download or read book Artificial Intelligence in Asset Management written by Söhnke M. Bartram and published by CFA Institute Research Foundation. This book was released on 2020-08-28 with total page 95 pages. Available in PDF, EPUB and Kindle. Book excerpt: Artificial intelligence (AI) has grown in presence in asset management and has revolutionized the sector in many ways. It has improved portfolio management, trading, and risk management practices by increasing efficiency, accuracy, and compliance. In particular, AI techniques help construct portfolios based on more accurate risk and return forecasts and more complex constraints. Trading algorithms use AI to devise novel trading signals and execute trades with lower transaction costs. AI also improves risk modeling and forecasting by generating insights from new data sources. Finally, robo-advisors owe a large part of their success to AI techniques. Yet the use of AI can also create new risks and challenges, such as those resulting from model opacity, complexity, and reliance on data integrity.