توضیحاتی در مورد کتاب Modeling Decisions for Artificial Intelligence. 20th International Conference, MDAI 2023 Umeå, Sweden, June 19–22, 2023 Proceedings
نام کتاب : Modeling Decisions for Artificial Intelligence. 20th International Conference, MDAI 2023 Umeå, Sweden, June 19–22, 2023 Proceedings
عنوان ترجمه شده به فارسی : مدل سازی تصمیمات برای هوش مصنوعی. بیستمین کنفرانس بین المللی، MDAI 2023 Umeå، سوئد، 19–22 ژوئن 2023 مجموعه مقالات
سری : Lecture Notes in Artificial Intelligence, 13890
نویسندگان : Vicenç Torra, Yasuo Narukawa
ناشر : Springer
سال نشر : 2023
تعداد صفحات : 274
ISBN (شابک) : 9783031334979 , 9783031334986
زبان کتاب : English
فرمت کتاب : pdf
حجم کتاب : 9 مگابایت
بعد از تکمیل فرایند پرداخت لینک دانلود کتاب ارائه خواهد شد. درصورت ثبت نام و ورود به حساب کاربری خود قادر خواهید بود لیست کتاب های خریداری شده را مشاهده فرمایید.
فهرست مطالب :
Preface
Organization
Invited Talks
Partially Observing Graphs - When Can We Infer Underlying Community Structure?
AI for the Public Good - Reflections on Ethics, Decision Making and Work
Imprecise Probability in Formal Argumentation
Contents
Plenary Talk
Logic Aggregators and Their Implementations
1 Introduction
2 Geometric Characterization of Logic Aggregators and the Set of Border Aggregators
3 Semantic Identity and Noncommutativity
4 Classification of Graded Logic Functions and Andness-Directedness of Logic Aggregators
5 Specification of Requirements for Logic Aggregators
6 Benchmark Problems for Logic Aggregators
7 Implementation of Logic Aggregators Using GCD and Andness-Directed Interpolative Aggregation
7.1 Andness-Directed Interpolative Aggregation (ADIA)
7.2 Five Conjunctive Border Aggregators
7.3 Four Families of Conjunctive Interpolative Aggregators
7.4 Solutions of Benchmark Problems
7.5 Implementation of Hyperconjunction Using Andness-Directed t-norms
8 Implementations of Logic Aggregators Using OWA Family of Aggregators
8.1 WOWA: OWA with Importance Weights
8.2 Distribution of OWA Weights
8.3 Annihilators for OWA: GOWA and OWG
8.4 Andness-Directed OWA with Annihilators
8.5 The OWA Family for GCD
8.6 Solutions of Benchmark Problems
9 Implementations of Logic Aggregators Using Fuzzy Integrals
10 Implementations of Logic Aggregators Using Means
11 Evaluation and Comparison of Logic Aggregators
12 Aggregation as a Graded Propositional Calculus
13 Conclusions
References
Decision Making and Uncertainty
Multi-target Decision Making Under Conditions of Severe Uncertainty
1 Introduction
2 Decision Making Under Weakly Structured Information
2.1 Weakly Structured Probabilistic Information
2.2 Weakly Structured Preferences
2.3 A Criterion for Decision Making
2.4 Computation
3 Adaptation to Multi-target Decision Making
3.1 Multi-target Decision Making
3.2 Transferring the Concepts
4 Example: Comparison of Algorithms
5 Concluding Remarks
References
Constructive Set Function and Extraction of a k-dimensional Element
1 Introduction
2 Constructive Set Function
3 Distortion Measures and Constructive Set Functions
4 Extraction of k-dimensional Elements
5 Conclusion
References
Coherent Upper Conditional Previsions Defined by Fractal Outer Measures to Represent the Unconscious Activity of Human Brain*-12pt
1 Introduction
2 The Model Based on Hausdorff Outer Measures and the Selective Attention
3 Fractal Measures and Dimensions
3.1 Examples and Motivations
3.2 A General Hausdorff Measure, Packing Measure and Dimensions
3.3 General Hewitt-Stromberg Measures and Dimensions
4 Mathematical Representation of Unexpected Events
5 Conclusions
References
Discrete Chain-Based Choquet-Like Operators
1 Introduction
2 Preliminaries
3 Discrete Chain-Based Choquet-Sugeno-Like Operators
3.1 ChainC-operator of Type 1
3.2 ChainC-operator of Type 2
3.3 Basic Properties of ChainC-operator of Type 1 and 2
3.4 Linearity Property
3.5 (j)ChainC-Operator as Monotone Measure Extension
4 Conclusion
References
On a New Generalization of Decomposition Integrals
1 Introduction
2 Preliminaries
3 Decomposition Integrals Generalized by Set-Based Extended Aggregation Functions
4 Concluding Remarks
References
Bipolar OWA Operators with Continuous Input Function
1 Introduction
2 Basic Notations and Some Known Facts
2.1 OWA Operators, Choquet Integral and Bipolar Capacities
2.2 OWA with Continuous Input Functions
2.3 Bipolar Capacity and Bipolar OWA (BIOWA) Operators
2.4 Orness Measures
3 BIOWA with Continuous Input Functions
4 Orness Measure for BIOWA
5 Conclusions
References
Machine Learning and Data Science
Cost-constrained Group Feature Selection Using Information Theory
1 Introduction
2 Related Work
3 Proposed Methods
3.1 Method 1: Single Feature Selection
3.2 Method 2: Group Feature Selection
3.3 Approximating the Relevance Terms
3.4 Algorithms
4 Experiments
4.1 Data
4.2 Results
5 Conclusions
References
Conformal Prediction for Accuracy Guarantees in Classification with Reject Option
1 Introduction
2 Background
2.1 Probabilistic Prediction and Calibration
2.2 Conformal Classification
2.3 Related Work
3 Method
4 Results
5 Concluding Remarks
References
Adapting the Gini\'s Index for Solving Predictive Tasks
1 Introduction
2 Preliminaries
2.1 Notation
2.2 The Lazy Induction of Descriptions Method
2.3 The Gini\'s Index
3 P-LID: Lazy Induction of Description for Prediction
4 Experiments
5 Conclusions
References
Bayesian Logistic Model for Positive and Unlabeled Data
1 Introduction
1.1 Notation and Assumptions in PU Learning
1.2 Logistic Model Assumption for PU Data
1.3 Methods of Label Frequency Estimation
2 Gibbs Sampler for Estimation of Label Frequency
2.1 Gibbs Sampling
2.2 Gibbs Sampler for Bayesian Logistic Regression
2.3 Gibbs Sampler for PU Data
3 Numerical Experiments
3.1 Example
3.2 Real Data Simulations
4 Conclusions
References
A Goal-Oriented Specification Language for Reinforcement Learning
1 Introduction
2 Related Work
3 Reinforcement Learning
4 Case Study - Lunar Lander
5 Environment and Requirements
6 Goal-oriented Specification
6.1 Goals
6.2 Operators
6.3 Annotations
7 Abstraction of Technical Details
8 Conclusion
References
Improved Spectral Norm Regularization for Neural Networks
1 Introduction
2 Background
2.1 Regularization
3 Method
3.1 Exact Spectral Norm Regularization
3.2 Extension to Non-piecewise Linear Transforms
4 Experiments
4.1 Generalization
4.2 Robustness
5 Conclusion
A Experimental details
B Conversion Between Operators
C Time Efficiency and Relative Error
D Proof for Extension Scheme
References
Preprocessing Matters: Automated Pipeline Selection for Fair Classification
1 Introduction
1.1 Related Work
1.2 Fairness
1.3 Problem Formulation
1.4 Contributions and Overview of Results
2 FairPipes
2.1 The FairPipes Algorithm
3 Experimental Evaluation
3.1 Baseline Mapping of the Search Space
4 Performance Evaluation
5 Conclusions
References
Predicting Next Whereabouts Using Deep Learning
1 Introduction
2 State of the Art
3 Methodology
4 Attention and Possible Directions for TRAJectory
4.1 Node Self-attention Module
4.2 Possible Directions Module
4.3 Prediction Module
5 Experiments and Results
5.1 Hyperparameter Tuning
5.2 Preliminary Results
6 Conclusions and Future Works
References
A Generalization of Fuzzy c-Means with Variables Controlling Cluster Size
1 Introduction
2 Preliminaries
3 mGFCM: A Generalization of mSFCM and GFCM, and mRFCM: A Generalization of mEFCM and RFCM
4 Numerical Experiment
5 Conclusion
References
Data Privacy
Local Differential Privacy Protocol for Making Key–Value Data Robust Against Poisoning Attacks
1 Introduction
2 Local Differential Privacy
2.1 Fundamental Definition
2.2 PrivKV
2.3 Poisoning Attack
3 Proposed Algorithm
3.1 Idea
3.2 Oblivious Transfer
3.3 EM Estimation for Key–Value Data
4 Evaluation
4.1 Data
4.2 Methodology
4.3 Experimental Results
4.4 Discussion
5 Conclusion
References
Differentially Private Graph Publishing Through Noise-Graph Addition*-12pt
1 Introduction and Related Work
2 Basic Definitions
2.1 Noise-Graph Addition
3 Differential Privacy, Sparseness, Random Perturbation and Sparsification
3.1 Sparseness of Randomized Graphs
3.2 Random Perturbation and Random Sparsification
4 Experimental Evaluation
5 Conclusions
References
Author Index