Mechanizing Hypothesis Formation

Regular price €72.99
A01=David Chudán
A01=Jan Rauch
A01=Milan imnek
A01=Milan Šimůnek
A01=Petr Máa
A01=Petr Máša
Accidents Data Set
Accidents Dataset
Action rules
Adult Dataset
Age Group_Uncategorized
Age Group_Uncategorized
Analysed Data Matrix
Apriori Algorithm
Arules Package
Association Rules
Author_David Chudán
Author_Jan Rauch
Author_Milan imnek
Author_Milan Šimůnek
Author_Petr Máa
Author_Petr Máša
automatic-update
Boolean Attributes
Boolean Characteristics
Categorical Attributes
Category1=Non-Fiction
Category=KCH
Category=KCHS
Category=PBC
Category=PS
Category=UNC
Category=UNF
Category=UYA
Category=UYQM
Conditional Histograms
Contingency Table
COP=United Kingdom
Data Matrix
Data Mining Tasks
Deduction Rules
Delivery_Delivery within 10-20 working days
eq_business-finance-law
eq_computing
eq_isMigrated=2
eq_non-fiction
eq_science
Exception rules
Generalized Quantifiers
GUHA method
Kendall’s Coefficients
Language_English
Logical calculi for data mining
Observational calculi
Ordinal Dependence
PA=Available
Price_€50 to €100
PS=Active
Relative Frequencies
Relevant Antecedents
Service Business Intelligence
Set Cond
softlaunch
Subgroups discovery
UCI
UCI Machine Learn Repository

Product details

  • ISBN 9780367549824
  • Weight: 453g
  • Dimensions: 156 x 234mm
  • Publication Date: 09 Oct 2024
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
  • Language: English
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Mechanizing hypothesis formation is an approach to exploratory data analysis. Its development started in the 1960s inspired by the question “can computers formulate and verify scientific hypotheses?”. The development resulted in a general theory of logic of discovery. It comprises theoretical calculi dealing with theoretical statements as well as observational calculi dealing with observational statements concerning finite results of observation. Both calculi are related through statistical hypotheses tests. A GUHA method is a tool of the logic of discovery. It uses a one-to-one relation between theoretical and observational statements to get all interesting theoretical statements. A GUHA procedure generates all interesting observational statements and verifies them in a given observational data. Output of the procedure consists of all observational statements true in the given data. Several GUHA procedures dealing with association rules, couples of association rules, action rules, histograms, couples of histograms, and patterns based on general contingency tables are involved in the LISp-Miner system developed at the Prague University of Economics and Business. Various results about observational calculi were achieved and applied together with the LISp-Miner system.

The book covers a brief overview of logic of discovery. Many examples of applications of the GUHA procedures to solve real problems relevant to data mining and business intelligence are presented. An overview of recent research results relevant to dealing with domain knowledge in data mining and its automation is provided. Firsthand experiences with implementation of the GUHA method in the Python language are presented.

Jan Rauch graduated from the Faculty of Mathematics and Physics of Charles University in Prague. He received his Ph.D. in Mathematical Logic in 1987 from the Institute of Mathematics of the Czechoslovak Academy of Sciences. He is a full professor at the Department of Information and Knowledge Engineering, Prague University of Economics and Business since 2011.

Milan Šimůnek is an associate professor (since 2012) at the Faculty of Informatics and Statistics, Prague University of Economics and Business. His research activities include data mining, databases, virtual reality and software projects development. He is the software project leader of the LISp-Miner system since its launch in 1996 and author of its core-modules implementation.

David Chudán is an assistant professor of Applied Informatics at the Faculty of Informatics and Statistics, Prague University of Economics and Business. He received his Ph.D. in 2015 in the field of Applied informatics. His research interests include data mining and machine learning on different tools and platforms. Another research area is GUHA association rules and their complementary usage with business intelligence.

Petr Máša graduated from the Prague University of Economics and Business and the Faculty of Mathematics and Physics of Charles University in Prague. He received his Ph.D. in 2006. He also works on business projects where he uses data mining, data science, data analytics and he is also business responsible.