From user reviews to theory building: an inductive approach to construct identification using text mining

One of 65 papers in the title: Big Data in the Big D available on this site.

PDF Version Also Available for Download.

Description

Poster paper for the 2017 International Conference on Knowledge Management. This paper demonstrates the utility of text analytic for theory building and validation in information science.

Physical Description

3 p.

Creation Information

Nguyen, Quynh & Sidorova, Anna October 25, 2017.

Context

This paper is part of the collection entitled: International Conference on Knowledge Management (ICKM), 2017 and one other and was provided by UNT College of Business to Digital Library, a digital repository hosted by the UNT Libraries. It has been viewed 168 times , with 17 in the last month . More information about this paper can be viewed below.

Who

People and organizations associated with either the creation of this paper or its content.

Authors

Provided By

UNT College of Business

One of the largest business schools in the nation, UNT College of Business strives to prepare global business leaders and scholars in an intellectually stimulating and engaging community through preeminent teaching, research, and service. The college offers degree programs at the bachelor's, master's, and doctoral levels, along with certificate programs in a variety of disciplines.

Contact Us

What

Descriptive information to help identify this paper. Follow the links below to find similar items on the Digital Library.

Titles

Degree Information

Description

Poster paper for the 2017 International Conference on Knowledge Management. This paper demonstrates the utility of text analytic for theory building and validation in information science.

Physical Description

3 p.

Source

  • 13th International Conference on Knowledge Management, October 25-26, 2017. Dallas, Texas.

Language

Item Type

Relationships

  • From User Reviews to Theory Building: An Inductive Approach to Construct Identification Using Text Mining - ark:/67531/metadc1040518

Collections

This paper is part of the following collections of related materials.

International Conference on Knowledge Management (ICKM), 2017

The 13th International Conference on Knowledge Management (ICKM) met October 25-26 in Dallas, Texas. Serving as digital proceedings, this collection includes papers, posters, and slides from invited talks as well as practitioner and sponsor presentations.

UNT Scholarly Works

Materials from the UNT community's research, creative, and scholarly activities and UNT's Open Access Repository. Access to some items in this collection may be restricted.

Related Items

From User Reviews to Theory Building: An Inductive Approach to Construct Identification Using Text Mining (Poster)

From User Reviews to Theory Building: An Inductive Approach to Construct Identification Using Text Mining

Presented at the 2017 International Conference on Knowledge Management. This poster demonstrates the utility of text analytic for theory building and validation in information science.

From User Reviews to Theory Building: An Inductive Approach to Construct Identification Using Text Mining - ark:/67531/metadc1040518

What responsibilities do I have when using this paper?

When

Dates and time periods associated with this paper.

Creation Date

  • October 25, 2017

Added to The UNT Digital Library

  • Oct. 26, 2017, 3:36 p.m.

Description Last Updated

  • Nov. 10, 2017, 5:01 p.m.

Usage Statistics

When was this paper last used?

Yesterday: 0
Past 30 days: 17
Total Uses: 168

Interact With This Paper

Here are some suggestions for what to do next.

Start Reading

PDF Version Also Available for Download.

International Image Interoperability Framework

IIF Logo

We support the IIIF Presentation API

Nguyen, Quynh & Sidorova, Anna. From user reviews to theory building: an inductive approach to construct identification using text mining, paper, October 25, 2017; (digital.library.unt.edu/ark:/67531/metadc1036586/: accessed December 14, 2018), University of North Texas Libraries, Digital Library, digital.library.unt.edu; crediting UNT College of Business.