Knowledge Discovery is an interdisciplinary area focusing upon methodologies for identifying valid, novel, potentially useful and meaningful patterns from data, often based on underlying large data sets. A major aspect of Knowledge Discovery is data mining, i.e. applying data analysis and discovery algorithms that produce a particular enumeration of patterns (or models) over the data. Knowledge Discovery also includes the evaluation of patterns and identification of which add to knowledge. This has proven to be a promising approach for enhancing the intelligence of software systems and services. The ongoing rapid growth of online data due to the Internet and the widespread use of large databases have created an important need for knowledge discovery methodologies. The challenge of extracting knowledge from data draws upon research in a large number of disciplines including statistics, databases, pattern recognition, machine learning, data visualization, optimization, and high-performance computing, to deliver advanced business intelligence and web discovery solutions.
Information retrieval (IR) is concerned with gathering relevant information from unstructured and semantically fuzzy data in texts and other media, searching for information within documents and for metadata about documents, as well as searching relational databases and the Web. Automation of information retrieval enables the reduction of what has been called "information overload".
Information retrieval can be combined with knowledge discovery to create software tools that empower users of decision support systems to better understand and use the knowledge underlying large data sets.
The primary focus of KDIR is to provide a major forum for the scientific and technical advancement of knowledge discovery and information retrieval.
BioInformatics & Pattern Discovery
Business Intelligence Applications
Clustering and Classification Methods
Collaborative Filtering
Concept Mining
Context Discovery
Data Analytics
Data Mining in Electronic Commerce
Data Reduction and Quality Assessment
Foundations of Knowledge Discovery in Databases
Information Extraction
Interactive and Online Data Mining
Machine Learning
Mining Multimedia Data
Mining Text and Semi-structured Data
Pre-processing and Post-processing for Data Mining
Process Mining
Software Development
Structured Data Analysis and Statistical Methods
User Profiling and Recommender Systems
Visual Data Mining and Data Visualization
Web Mining
Nov 01
2017
Nov 03
2017
Draft paper submission deadline
Draft Paper Acceptance Notification
Final Paper Deadline
Registration deadline
2018-09-18 Spain
10th International Conference on Knowledge Discovery and Information Retrieval2016-11-09 Portugal Porto,Portugal
8th International Conference on Knowledge Discovery and Information Retrieval2015-11-12 Portugal
7th International Conference on Knowledge Discovery and Information Retrieval2013-09-19 Portugal
5th International Conference on Knowledge Discovery and Information Retrieval
Submit Comment