Difference between revisions of "DMIP 2017"

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Workshop Description
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==Workshop Description==
 
 
 
All fields where data is collected have seen an increase in the amount of data
 
All fields where data is collected have seen an increase in the amount of data
 
being analyzed, and this has led to an increase in work related to data mining
 
being analyzed, and this has led to an increase in work related to data mining
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data mining process.
 
data mining process.
  
Cost
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==Cost==
 
 
 
From a data perspective, cost can be divided into three primary areas: 1)
 
From a data perspective, cost can be divided into three primary areas: 1)
 
collection cost – costs associated with acquiring each data stream, 2) labeling
 
collection cost – costs associated with acquiring each data stream, 2) labeling
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meet the system requirements and objectives while not exceeding the budget.
 
meet the system requirements and objectives while not exceeding the budget.
  
Automation
+
==Automation==
 
 
 
There have been many debates in recent years about the need and the ability to
 
There have been many debates in recent years about the need and the ability to
 
automate data mining and machine learning tasks. A recent blog post titled “Data
 
automate data mining and machine learning tasks. A recent blog post titled “Data
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Topics include (but are not limited to):
+
==Topics include (but are not limited to):==
  
 
Automation
 
Automation
Automated methods in machine learning, data mining, predictive analytics, and
+
* Automated methods in machine learning, data mining, predictive analytics, and deep learning
deep learning
+
* Automated methods in knowledge discovery in databases
Automated methods in knowledge discovery in databases
+
* Automation theory, automation and optimization
Automation theory, automation and optimization
+
* Hyperparameter autotuning
Hyperparameter autotuning
+
* Automated pipelines and process-flows in production systems
Automated pipelines and process-flows in production systems
+
* Automated approaches to model monitoring and updating
Automated approaches to model monitoring and updating
+
* Automated methods for streaming data
Automated methods for streaming data
+
* Internet of Things (IoT) and automation
Internet of Things (IoT) and automation
+
* Automated data preparation, automated variable and model selection
Automated data preparation, automated variable and model selection
+
* Automation in big data, automation in massive modeling
Automation in big data, automation in massive modeling
+
*
 
 
 
Cost
 
Cost
Active learning and cost
+
* Active learning and cost
Missing data algorithms
+
* Missing data algorithms
Feature selection and cost
+
* Feature selection and cost
Efficient feature engineering
+
* Efficient feature engineering
Algorithm processing time analysis
+
* Algorithm processing time analysis
Model training algorithms that incorporate costs
+
* Model training algorithms that incorporate costs
Data mining on a budget applications in real-world systems and environments
+
* Data mining on a budget applications in real-world systems and environments
Theory of data mining on a budget
+
* Theory of data mining on a budget
Metrics that combine accuracy and cost
+
* Metrics that combine accuracy and cost

Latest revision as of 13:05, 3 December 2020

DMIP 2017
Workshop on Data Mining in Practice: Automation and Cost
Dates 2017/11/18 (iCal) - 2017/11/18
Homepage: https://sites.google.com/site/icdm17dmip/home
Location
Location: New Orleans, Louisiana, USA
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Important dates
Submissions: 2017/09/07
Table of Contents


Workshop is part of ICDM 2017


Workshop Description

All fields where data is collected have seen an increase in the amount of data being analyzed, and this has led to an increase in work related to data mining and machine learning. These methods are moving out of academic and high tech fields and into new and everyday applications. This half day workshop held in conjunction with the 2017 IEEE International Conference on Data Mining (ICDM) will focus on two primary issues when applying data mining in practice: how to incorporate the cost of data into the problem and how to automate aspects of the data mining process.

Cost

From a data perspective, cost can be divided into three primary areas: 1) collection cost – costs associated with acquiring each data stream, 2) labeling costs – costs associated with assigning classes, acquiring response variable values in supervised learning, or acquiring the values of missing explanatory data, and 3) processing costs – costs associated with model training, prediction, and storage. In the data mining literature, algorithms and models are usually optimized with respect to predictive accuracy and little is published on incorporating costs into the data mining process. However, in almost all real-world data mining applications, costs are present and should be considered. In order to data mining applications to be successful, they must meet the system requirements and objectives while not exceeding the budget.

Automation

There have been many debates in recent years about the need and the ability to automate data mining and machine learning tasks. A recent blog post titled “Data Scientists Need More Automation” discusses the repeated efforts required to configure and run services or scripts on a network of machines. Other discussions ask, “Can We Automate Data Mining?,” arguing that many tasks performed by data scientists require manual intervention and thus cannot be automated; in other words, expertise is needed for each individual case, requiring clear understanding of the business and the data. The development of tools to automate data mining efforts fosters the transformation of theory to application and also promotes the development of standards and the adoption of these standards. Automated standards enable researchers and practitioners to better communicate, sharing successes and challenges in a more consistent common language. In an age of software as a service and ever-increasing scalability requirements, standards are necessary. Consistent adoption, application, and communication in turn promote research and refinement of the automated strategies and growth of the community. The challenges that must be discussed relate to the boundaries of automated tasks and individual attention needed for each unique business and data scenario.


Topics include (but are not limited to):

Automation

  • Automated methods in machine learning, data mining, predictive analytics, and deep learning
  • Automated methods in knowledge discovery in databases
  • Automation theory, automation and optimization
  • Hyperparameter autotuning
  • Automated pipelines and process-flows in production systems
  • Automated approaches to model monitoring and updating
  • Automated methods for streaming data
  • Internet of Things (IoT) and automation
  • Automated data preparation, automated variable and model selection
  • Automation in big data, automation in massive modeling

Cost

  • Active learning and cost
  • Missing data algorithms
  • Feature selection and cost
  • Efficient feature engineering
  • Algorithm processing time analysis
  • Model training algorithms that incorporate costs
  • Data mining on a budget applications in real-world systems and environments
  • Theory of data mining on a budget
  • Metrics that combine accuracy and cost
Facts about "DMIP 2017"
AcronymDMIP 2017 +
End dateNovember 18, 2017 +
Event typeWorkshop +
Has coordinates29° 57' 0", -90° 4' 12"Latitude: 29.949933333333
Longitude: -90.070116666667
+
Has location cityNew Orleans +
Has location countryCategory:USA +
Has location stateLouisiana +
Homepagehttps://sites.google.com/site/icdm17dmip/home +
IsAEvent +
Start dateNovember 18, 2017 +
Submission deadlineSeptember 7, 2017 +
TitleWorkshop on Data Mining in Practice: Automation and Cost +