{"title":"实现从数据和知识中学习的有效实践","authors":"Yizuo Chen, Haiying Huang, Adnan Darwiche","doi":"10.1016/j.ijar.2024.109188","DOIUrl":null,"url":null,"abstract":"<div><p>We discuss some recent advances on combining data and knowledge in the context of supervised learning using Bayesian networks. A first set of advances concern the computational efficiency of learning and inference, and they include a software-level boost based on compiling Bayesian network structures into tractable circuits in the form of <em>tensor graphs</em>, and algorithmic improvements based on exploiting a type of knowledge called <em>unknown functional dependencies.</em> The used tensor graphs capitalize on a highly optimized tensor operation (matrix multiplication) which brings orders of magnitude speedups in circuit training and evaluation. The exploitation of unknown functional dependencies yields exponential reductions in the size of tractable circuits and gives rise to the notion of <em>causal treewidth</em> for offering a corresponding complexity bound. Beyond computational efficiency, we discuss empirical evidence showing the promise of learning from a combination of data and knowledge, in terms of data hungriness and robustness against noise perturbations. Sometimes, however, an accurate Bayesian network structure may not be available due to the incompleteness of human knowledge, leading to <em>modeling errors</em> in the form of missing dependencies or missing variable values. On this front, we discuss another set of advances for recovering from certain types of modeling errors. This is achieved using Testing Bayesian networks which dynamically select parameters based on the input evidence, and come with theoretical guarantees on full recovery under certain conditions.</p></div>","PeriodicalId":13842,"journal":{"name":"International Journal of Approximate Reasoning","volume":"171 ","pages":"Article 109188"},"PeriodicalIF":3.2000,"publicationDate":"2024-04-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S0888613X24000756/pdfft?md5=a14a683e66d7ef5d6aabb38b3d5cd7fa&pid=1-s2.0-S0888613X24000756-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Towards an effective practice of learning from data and knowledge\",\"authors\":\"Yizuo Chen, Haiying Huang, Adnan Darwiche\",\"doi\":\"10.1016/j.ijar.2024.109188\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>We discuss some recent advances on combining data and knowledge in the context of supervised learning using Bayesian networks. A first set of advances concern the computational efficiency of learning and inference, and they include a software-level boost based on compiling Bayesian network structures into tractable circuits in the form of <em>tensor graphs</em>, and algorithmic improvements based on exploiting a type of knowledge called <em>unknown functional dependencies.</em> The used tensor graphs capitalize on a highly optimized tensor operation (matrix multiplication) which brings orders of magnitude speedups in circuit training and evaluation. The exploitation of unknown functional dependencies yields exponential reductions in the size of tractable circuits and gives rise to the notion of <em>causal treewidth</em> for offering a corresponding complexity bound. Beyond computational efficiency, we discuss empirical evidence showing the promise of learning from a combination of data and knowledge, in terms of data hungriness and robustness against noise perturbations. Sometimes, however, an accurate Bayesian network structure may not be available due to the incompleteness of human knowledge, leading to <em>modeling errors</em> in the form of missing dependencies or missing variable values. On this front, we discuss another set of advances for recovering from certain types of modeling errors. This is achieved using Testing Bayesian networks which dynamically select parameters based on the input evidence, and come with theoretical guarantees on full recovery under certain conditions.</p></div>\",\"PeriodicalId\":13842,\"journal\":{\"name\":\"International Journal of Approximate Reasoning\",\"volume\":\"171 \",\"pages\":\"Article 109188\"},\"PeriodicalIF\":3.2000,\"publicationDate\":\"2024-04-05\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"https://www.sciencedirect.com/science/article/pii/S0888613X24000756/pdfft?md5=a14a683e66d7ef5d6aabb38b3d5cd7fa&pid=1-s2.0-S0888613X24000756-main.pdf\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"International Journal of Approximate Reasoning\",\"FirstCategoryId\":\"94\",\"ListUrlMain\":\"https://www.sciencedirect.com/science/article/pii/S0888613X24000756\",\"RegionNum\":3,\"RegionCategory\":\"计算机科学\",\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"Q2\",\"JCRName\":\"COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal of Approximate Reasoning","FirstCategoryId":"94","ListUrlMain":"https://www.sciencedirect.com/science/article/pii/S0888613X24000756","RegionNum":3,"RegionCategory":"计算机科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE","Score":null,"Total":0}
Towards an effective practice of learning from data and knowledge
We discuss some recent advances on combining data and knowledge in the context of supervised learning using Bayesian networks. A first set of advances concern the computational efficiency of learning and inference, and they include a software-level boost based on compiling Bayesian network structures into tractable circuits in the form of tensor graphs, and algorithmic improvements based on exploiting a type of knowledge called unknown functional dependencies. The used tensor graphs capitalize on a highly optimized tensor operation (matrix multiplication) which brings orders of magnitude speedups in circuit training and evaluation. The exploitation of unknown functional dependencies yields exponential reductions in the size of tractable circuits and gives rise to the notion of causal treewidth for offering a corresponding complexity bound. Beyond computational efficiency, we discuss empirical evidence showing the promise of learning from a combination of data and knowledge, in terms of data hungriness and robustness against noise perturbations. Sometimes, however, an accurate Bayesian network structure may not be available due to the incompleteness of human knowledge, leading to modeling errors in the form of missing dependencies or missing variable values. On this front, we discuss another set of advances for recovering from certain types of modeling errors. This is achieved using Testing Bayesian networks which dynamically select parameters based on the input evidence, and come with theoretical guarantees on full recovery under certain conditions.
期刊介绍:
The International Journal of Approximate Reasoning is intended to serve as a forum for the treatment of imprecision and uncertainty in Artificial and Computational Intelligence, covering both the foundations of uncertainty theories, and the design of intelligent systems for scientific and engineering applications. It publishes high-quality research papers describing theoretical developments or innovative applications, as well as review articles on topics of general interest.
Relevant topics include, but are not limited to, probabilistic reasoning and Bayesian networks, imprecise probabilities, random sets, belief functions (Dempster-Shafer theory), possibility theory, fuzzy sets, rough sets, decision theory, non-additive measures and integrals, qualitative reasoning about uncertainty, comparative probability orderings, game-theoretic probability, default reasoning, nonstandard logics, argumentation systems, inconsistency tolerant reasoning, elicitation techniques, philosophical foundations and psychological models of uncertain reasoning.
Domains of application for uncertain reasoning systems include risk analysis and assessment, information retrieval and database design, information fusion, machine learning, data and web mining, computer vision, image and signal processing, intelligent data analysis, statistics, multi-agent systems, etc.