BibSLEIGH
BibSLEIGH corpus
BibSLEIGH tags
BibSLEIGH bundles
BibSLEIGH people
EDIT!
CC-BY
Open Knowledge
XHTML 1.0 W3C Rec
CSS 2.1 W3C CanRec
email twitter
Travelled to:
1 × France
4 × USA
Collaborated with:
A.Schnabl E.Hotz C.Taylor C.Lanquillon H.Mohammadzadeh T.Gottron F.Schweiggert B.Petzsche H.Spiegelberger H.Kauderer F.Artiles H.Jeromin U.Grimmer W.Heuser M.Wieczorek
Talks about:
environ (3) evalu (3) mine (3) data (3) automobil (2) algorithm (2) warranti (2) industri (2) support (2) goodwil (2)

Person: Gholamreza Nakhaeizadeh

DBLP DBLP: Nakhaeizadeh:Gholamreza

Contributed to:

KDIR 20112011
KDD 20012001
KDD 19991999
KDD 19981998
KDD 19971997

Wrote 7 papers:

KDIR-2011-MohammadzadehGSN #documentation #web
Extracting the Main Content of Web Documents based on a Naive Smoothing Method (HM, TG, FS, GN), pp. 470–475.
KDD-2001-HotzGHNW #analysis #detection #industrial
REVI-MINER, a KDD-environment for deviation detection and analysis of warranty and goodwill cost statements in automotive industry (EH, UG, WH, GN, MW), pp. 432–437.
KDD-1999-HotzNPS #data mining #industrial #mining
WAPS, a Data Mining Support Environment for the Planning of Warranty and Goodwill Costs in the Automobile Industry (EH, GN, BP, HS), pp. 417–419.
KDD-1999-KaudererNAJ #optimisation
Optimization of Collection Efforts in Automobile Financing — a KDD Supported Environment (HK, GN, FA, HJ), pp. 414–416.
KDD-1998-NakhaeizadehS #algorithm #data mining #evaluation #mining #personalisation #towards
Towards the Personalization of Algorithms Evaluation in Data Mining (GN, AS), pp. 289–293.
KDD-1998-NakhaeizadehTL #classification
Evaluating Usefulness for Dynamic Classification (GN, CT, CL), pp. 87–93.
KDD-1997-NakhaeizadehS #algorithm #data mining #development #evaluation #metric #mining #multi
Development of Multi-Criteria Metrics for Evaluation of Data Mining Algorithms (GN, AS), pp. 37–42.

Bibliography of Software Language Engineering in Generated Hypertext (BibSLEIGH) is created and maintained by Dr. Vadim Zaytsev.
Hosted as a part of SLEBOK on GitHub.