Share these talks and lectures with your colleagues
Invite colleaguesWe noted you are experiencing viewing problems
-
Check with your IT department that JWPlatform, JWPlayer and Amazon AWS & CloudFront are not being blocked by your network. The relevant domains are *.jwplatform.com, *.jwpsrv.com, *.jwpcdn.com, jwpltx.com, jwpsrv.a.ssl.fastly.net, *.amazonaws.com and *.cloudfront.net. The relevant ports are 80 and 443.
-
Check the following talk links to see which ones work correctly:
Auto Mode
HTTP Progressive Download Send us your results from the above test links at access@hstalks.com and we will contact you with further advice on troubleshooting your viewing problems. -
No luck yet? More tips for troubleshooting viewing issues
-
Contact HST Support access@hstalks.com
-
Please review our troubleshooting guide for tips and advice on resolving your viewing problems.
-
For additional help, please don't hesitate to contact HST support access@hstalks.com
We hope you have enjoyed this limited-length demo
This is a limited length demo talk; you may
login or
review methods of
obtaining more access.
Printable Handouts
Navigable Slide Index
- Introduction
- Agenda: linear models
- Linear models
- Classification by regression
- Advanced linear models
- Support vector machine
- Multilayer perceptron
- Trees for numeric prediction
- Linear models: discussion
- Agenda: instance-based learning and clustering
- Instance-based learning (1)
- Instance-based learning (2)
- Clustering
- Hierarchical clustering
- Iterative: fixed num of clusters
- Probabilistic clustering
- Using the mixture model
- Extending the mixture model
- Bayesian clustering
- Agenda: engineering the input and output
- Engineering the input and output
- Attribute selection
- Data transformations
- Principal component analysis
- Combining multiple models
- Bagging
- Randomization
- Boosting
- Stacking
- Using unlabeled data
- Co-training
- Talk summary
- Data mining algorithms
Topics Covered
- Linear models
- Classification by regression
- Support vector machine
- Multilayer perceptron
- Trees for numeric prediction
- Instance based learning and clustering
- Hierarchical clustering
- Iterative: fixed num of clusters
- Probabilistic clustering
- Using and extending the mixture model
- Bayesian clustering
- Engineering the input and output
- Attribute selection
- Data transformations
- Principal component analysis
- Combining multiple models
- Bagging
- Randomization
- Boosting
- Stacking
- Using unlabeled data
- Co-training
Talk Citation
Witten, I. (2008, June 17). Data mining algorithms 2 [Video file]. In The Business & Management Collection, Henry Stewart Talks. Retrieved November 23, 2024, from https://doi.org/10.69645/MZPQ9596.Export Citation (RIS)