DocumentCode
659531
Title
Enterprise pre-sales forums: A preliminary study of metadata and content
Author
Deolalikar, Vinay
Author_Institution
HP-Autonomy Res., Sunnyvale, CA, USA
fYear
2013
fDate
6-9 Oct. 2013
Firstpage
1
Lastpage
4
Abstract
Asynchronous discussion forums are one of the artifacts of the internet age. They occur in a wide variety of applications from distance learning to technical support. Technical support forums have also proliferated in enterprises, and today form a salient feature of many technical interactions in large enterprises. Two interconnected example applications where such forums may be employed are the following: customer pre-sales, where sales teams attempt to answer queries of potential customers; and internal forums where technical staff attempt to provide assistance to sales teams on urgent issues that require immediate attention. In this paper, we report a study of an internal technical support forum for pre-sales in a large Fortune-10 global enterprise. The data being generated on such forums is fast evolving, requires quick and intelligent human (assisted by machine) responses, and is of high value to the enterprise since it directly affects sales. Owing to this, it poses unique challenges. We conduct a two-fold study of the forum. First, we study the metadata in the forum messages to understand the temporal, participant, and length profiles of messages. Second, we use text mining to detect trends in forums using clustering and information-theoretic techniques. To our knowledge, this is the first study of an enterprise internal technical support forum. As a focal point in our study, we describe the problem of identifying “hot” or “urgent” issues early, so that management can take requisite steps to deal with emerging problems. Our results are surprising: we show that threads that bring urgent issues to light have temporal, length, and content profiles that resemble that of non-urgent threads. Therefore, the detection of such threads via metadata and content analysis is difficult. We present a solution to this problem based on participant profiles.
Keywords
data mining; meta data; pattern clustering; sales management; text analysis; Fortune-10 global enterprise; Internet age; asynchronous discussion forums; clustering techniques; content analysis; content profile; customer presales; distance learning; enterprise internal technical support forum; enterprise pre-sales forums; information-theoretic techniques; length profile; meta data; sales teams; technical support; temporal profile; text mining; Clustering algorithms; Communities; Data mining; Discussion forums; Electronic mail; Market research;
fLanguage
English
Publisher
ieee
Conference_Titel
Big Data, 2013 IEEE International Conference on
Conference_Location
Silicon Valley, CA
Type
conf
DOI
10.1109/BigData.2013.6691680
Filename
6691680
Link To Document