When to Sacrifice Prediction Accuracy

When to Sacrifice Prediction Accuracy PDF Author: Zhenkang Peng
Publisher:
ISBN:
Category :
Languages : en
Pages : 0

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Book Description
In revenue management, the customer discrete choice model is essential to describe customer purchase behavior. The multinomial logit (MNL) model is a classical random utility-based choice model that assumes that the consumer can purchase only one product from a set of substitute products. The revenue maximization problem of choosing the assortment under the MNL model must balance the cannibalization effect and nonpurchase probability. On the other hand, a large number of recommendation algorithms used in e-commerce, such as the DeepFM model with high prediction accuracy, tend to ignore the substitution effect among products. In this paper, we investigate whether and how better prediction accuracy transforms into better decisions for assortment planning. To answer this question, we compare MNL, DeepFM and a variant of DeepFM with the assortment information, called DeepFM-a. Instead utilizing the costly field experiment, we first use a real dataset of a flight browsing log and transaction records to train a machine learning model called Transformer, which has better prediction accuracy than MNL, DeepFM and DeepFM-a. Then, we utilize the trained Transformer model as a simulator to generate a synthetic dataset for consumer browsing and purchasing behavior. After training the MNL, DeepFM and DeepFM-a models, assortment decisions are given for simulated product pools with the three models. Then, the simulator is used to evaluate the revenue for each assortment from different choice models. Such a procedure utilizing the simulator can lessen the issue of validating decision models that change the observed data in the real world. Our findings are that a choice model with better prediction power may not yield higher revenue. When the outside option is less attractive, the MNL model provides comparable prediction power with much higher revenue. Fewer training data points reduce both prediction power and revenue for all three choice models. However, fewer features reduced the prediction power for all three choice models, but the assortment decision prescribed by DeepFM could increase the revenue.

When to Sacrifice Prediction Accuracy

When to Sacrifice Prediction Accuracy PDF Author: Zhenkang Peng
Publisher:
ISBN:
Category :
Languages : en
Pages : 0

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Book Description
In revenue management, the customer discrete choice model is essential to describe customer purchase behavior. The multinomial logit (MNL) model is a classical random utility-based choice model that assumes that the consumer can purchase only one product from a set of substitute products. The revenue maximization problem of choosing the assortment under the MNL model must balance the cannibalization effect and nonpurchase probability. On the other hand, a large number of recommendation algorithms used in e-commerce, such as the DeepFM model with high prediction accuracy, tend to ignore the substitution effect among products. In this paper, we investigate whether and how better prediction accuracy transforms into better decisions for assortment planning. To answer this question, we compare MNL, DeepFM and a variant of DeepFM with the assortment information, called DeepFM-a. Instead utilizing the costly field experiment, we first use a real dataset of a flight browsing log and transaction records to train a machine learning model called Transformer, which has better prediction accuracy than MNL, DeepFM and DeepFM-a. Then, we utilize the trained Transformer model as a simulator to generate a synthetic dataset for consumer browsing and purchasing behavior. After training the MNL, DeepFM and DeepFM-a models, assortment decisions are given for simulated product pools with the three models. Then, the simulator is used to evaluate the revenue for each assortment from different choice models. Such a procedure utilizing the simulator can lessen the issue of validating decision models that change the observed data in the real world. Our findings are that a choice model with better prediction power may not yield higher revenue. When the outside option is less attractive, the MNL model provides comparable prediction power with much higher revenue. Fewer training data points reduce both prediction power and revenue for all three choice models. However, fewer features reduced the prediction power for all three choice models, but the assortment decision prescribed by DeepFM could increase the revenue.

Enhancing the Resource Efficiency of Live-fire Tank Gunnery Evaluation

Enhancing the Resource Efficiency of Live-fire Tank Gunnery Evaluation PDF Author: Monte D. Smith
Publisher:
ISBN:
Category : Soldiers
Languages : en
Pages : 62

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Book Description


Computational Toxicology

Computational Toxicology PDF Author: Sean Ekins
Publisher: John Wiley & Sons
ISBN: 0470145889
Category : Science
Languages : en
Pages : 855

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Book Description
A comprehensive analysis of state-of-the-art molecular modeling approaches and strategies applied to risk assessment for pharmaceutical and environmental chemicals This unique volume describes how the interaction of molecules with toxicologically relevant targets can be predicted using computer-based tools utilizing X-ray crystal structures or homology, receptor, pharmacophore, and quantitative structure activity relationship (QSAR) models of human proteins. It covers the in vitro models used, newer technologies, and regulatory aspects. The book offers a complete systems perspective to risk assessment prediction, discussing experimental and computational approaches in detail, with: * An introduction to toxicology methods and an explanation of computational methods * In-depth reviews of QSAR methods applied to enzymes, transporters, nuclear receptors, and ion channels * Sections on applying computers to toxicology assessment in the pharmaceutical industry and in the environmental arena * Chapters written by leading international experts * Figures that illustrate computational models and references for further information This is a key resource for toxicologists and scientists in the pharmaceutical industry and environmental sciences as well as researchers involved in ADMET, drug discovery, and technology and software development.

War and Chance

War and Chance PDF Author: Jeffrey A. Friedman
Publisher: Oxford University Press
ISBN: 0190938048
Category : Political Science
Languages : en
Pages : 272

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Book Description
Uncertainty surrounds every major decision in international politics. Yet there is almost always room for reasonable people to disagree about what that uncertainty entails. No one can reliably predict the outbreak of armed conflict, forecast economic recessions, anticipate terrorist attacks, or estimate the countless other risks that shape foreign policy choices. Many scholars and practitioners therefore believe that it is better to keep foreign policy debates focused on the facts - that it is, at best, a waste of time to debate uncertain judgments that will often prove to be wrong. In War and Chance, Jeffrey A. Friedman shows how foreign policy officials often try to avoid the challenge of assessing uncertainty, and argues that this behavior undermines high-stakes decision making. Drawing on an innovative combination of historical and experimental evidence, he explains how foreign policy analysts can assess uncertainty in a manner that is theoretically coherent, empirically meaningful, politically defensible, practically useful, and sometimes logically necessary for making sound choices. Each of these claims contradicts widespread skepticism about the value of probabilistic reasoning in international politics, and shows how placing greater emphasis on assessing uncertainty can improve nearly any foreign policy debate. A clear-eyed examination of the logic, psychology, and politics of assessing uncertainty, War and Chance provides scholars and practitioners with new foundations for understanding one of the most controversial elements of foreign policy discourse.

Probability and Rationality

Probability and Rationality PDF Author:
Publisher: BRILL
ISBN: 9004457208
Category : Science
Languages : en
Pages : 345

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Air Force Journal of Logistics

Air Force Journal of Logistics PDF Author:
Publisher:
ISBN:
Category :
Languages : en
Pages : 132

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Machine Intelligence, Tools, and Applications

Machine Intelligence, Tools, and Applications PDF Author: Satchidananda Dehuri
Publisher: Springer Nature
ISBN: 3031653920
Category :
Languages : en
Pages : 435

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Microeconomic Modeling and Policy Analysis

Microeconomic Modeling and Policy Analysis PDF Author: Thomas G. Cowing
Publisher: Elsevier
ISBN: 1483268497
Category : Business & Economics
Languages : en
Pages : 309

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Book Description
Microeconomic Modeling and Policy Analysis: Studies in Residential Energy Demand analyzes the aggregates and distributional impacts from alternative energy polices related to the energy demands of residential consumers. The book also analyzes the use of micro-simulation models in the study. The book examines three alternative energy policies and their possible impacts on the residential energy demand. The text describes models on energy use including general micro-simulation and micro-simulation as applied in ""Residential End-Use Energy Planning Systems"" (REEPS) and the Oak Ridge National Laboratory (ORNL) Residential Energy Consumption Model. The book describes REEPS as a model providing end-use specific forecasts of energy consumption at the household level. The text describes ORNL as a computationally simpler design but conceptually more complex one. The book then evaluates three different policy scenarios using each of these two models. The performance of REEPS and ORNL, as well as other dimensions of model projections, is examined. The implications regarding 1) policy analysis and 2) the use of micro simulation models are noted. The book then presents a table that summarizes the results of the comparative model evaluation. Energy policymakers, city and local government planning officials, development engineers, and environmentalists will find this book very relevant.

Foundations of the Theory of Prediction

Foundations of the Theory of Prediction PDF Author: William Warren Rozeboom
Publisher:
ISBN:
Category : Prediction (Psychology)
Languages : en
Pages : 648

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Characterizing the Robustness of Science

Characterizing the Robustness of Science PDF Author: Léna Soler
Publisher: Springer Science & Business Media
ISBN: 9400727593
Category : Science
Languages : en
Pages : 377

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Book Description
Mature sciences have been long been characterized in terms of the “successfulness”, “reliability” or “trustworthiness” of their theoretical, experimental or technical accomplishments. Today many philosophers of science talk of “robustness”, often without specifying in a precise way the meaning of this term. This lack of clarity is the cause of frequent misunderstandings, since all these notions, and that of robustness in particular, are connected to fundamental issues, which concern nothing less than the very nature of science and its specificity with respect to other human practices, the nature of rationality and of scientific progress; and science’s claim to be a truth-conducive activity. This book offers for the first time a comprehensive analysis of the problem of robustness, and in general, that of the reliability of science, based on several detailed case studies and on philosophical essays inspired by the so-called practical turn in philosophy of science.