Time-stamped event data is being generated at an exponential rate from various sources (sensor networks, e-markets etc.), which are stored in event logs and made available to researchers. Despite the data deluge and evolution of a plethora of tools and technologies, science behind exploratory analysis and knowledge discovery lags.There are several reasons behind this. In conducting event data analysis, researchers typically detect a pattern or trend in the data through computation of time-series measures and apply the computed measures to several mathematical models to glean information from data. This is a complex and time-consuming process covering a range of activities from data capture (from a broad array of data sources) to interpr...
Event mining is becoming a challenging area of research. Events in system analysis is not a new conc...
Event sequences and time series are widely recorded in many application domains; examples are stock ...
Through the application of process mining, valuable evidence-based insights can be obtained about bu...
Increasingly in the information age, overwhelming quantities of available data has brought about opp...
In this paper we will present a framework for modeling and management of complex systems. There are ...
Through the application of process mining, valuable evidence-based insights can be obtained about bu...
Event data is generated in many domains, like business process management, industry or healthcare. T...
This thesis is about designing software techniques that support analysing large volumes of event dat...
The information about events is crucial in realtime decision analysis and support. Historically, div...
Event sourcing is an architecture pattern successfully applied in modern microservice-oriented web a...
Conventional data analytics platforms are not adequate to be applied in the management of emergency ...
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüftAbweichender Titel nach Übersetz...
Companies are increasingly gathering and analyzing time-series data, driven by the rising number of ...
Conventional data analytics platforms are not adequate to be applied in the management of emergency ...
This paper proposes a method that discovers time series event patterns from textual data with time i...
Event mining is becoming a challenging area of research. Events in system analysis is not a new conc...
Event sequences and time series are widely recorded in many application domains; examples are stock ...
Through the application of process mining, valuable evidence-based insights can be obtained about bu...
Increasingly in the information age, overwhelming quantities of available data has brought about opp...
In this paper we will present a framework for modeling and management of complex systems. There are ...
Through the application of process mining, valuable evidence-based insights can be obtained about bu...
Event data is generated in many domains, like business process management, industry or healthcare. T...
This thesis is about designing software techniques that support analysing large volumes of event dat...
The information about events is crucial in realtime decision analysis and support. Historically, div...
Event sourcing is an architecture pattern successfully applied in modern microservice-oriented web a...
Conventional data analytics platforms are not adequate to be applied in the management of emergency ...
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüftAbweichender Titel nach Übersetz...
Companies are increasingly gathering and analyzing time-series data, driven by the rising number of ...
Conventional data analytics platforms are not adequate to be applied in the management of emergency ...
This paper proposes a method that discovers time series event patterns from textual data with time i...
Event mining is becoming a challenging area of research. Events in system analysis is not a new conc...
Event sequences and time series are widely recorded in many application domains; examples are stock ...
Through the application of process mining, valuable evidence-based insights can be obtained about bu...