1 / 55

The use of electronic books (eBooks) in social science research

The use of electronic books (eBooks) in social science research. Richard Parker* Danius Michaelides † Huanji Yang† Alex Frazer† Luc Moreau† Camille Szmaragd * ZhengZheng Zhang* Christopher Charlton* William Browne*. †School of Electronics & Computer Science,

maddox
Télécharger la présentation

The use of electronic books (eBooks) in social science research

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. The use of electronic books (eBooks) in social science research Richard Parker* DaniusMichaelides† Huanji Yang† Alex Frazer† Luc Moreau† Camille Szmaragd* ZhengZheng Zhang* Christopher Charlton* William Browne* †School of Electronics & Computer Science, University of Southampton, UK *Centre for Multilevel Modelling, University of Bristol, UK

  2. Stat-JR: to re-cap… Template Dataset

  3. (If applicable) results outputted as dataset to be fed back in… Stat-JR prompts user for input Stat-JR writes commands, etc., to perform requested function Function performed Template Results of function produced Dataset (If applicable) external software opened, run, then closed, with results returned to Stat-JR. E.g… Results Model: DIC: 9766.506 Parameters: Beta1: 0.594 myModel<- glm(normexam~ Summary(myModel) plot(myModel,1) Select Open Worksheet Select datafile.dta Select Equationsfrom Fi Results tables Charts Scripts Macros Equations Point & click instructions

  4. Stat-JR’s eBook interface: DEEP Documents with Embedded Execution and Provenance Embeds Stat-JR’s statistical functionality within a ‘traditional’ notebook…

  5. No eBooks loaded yet… …so we first import one…

  6. Navigate through pages of eBook Hierarchical table of contents (can be expanded / collapsed at each node)

  7. Behind the scenes… • The eBook author (me) has specified which Stat-JR template to associate with this region of the eBook… • …and has chosen one which creates plots via (“PlotsViaR”). • Templates require input, from a user, before they can go ahead & perform the function appropriately… • …the eBook author can pre-specify inputs (by writing them into the eBook code); any that are not pre-specified are then left to the eBook reader to complete.

  8. (If applicable) results outputted as dataset to be fed back in… Stat-JR: to re-cap… Stat-JR prompts user for input Stat-JR writes commands, etc., to perform requested function Function performed Template Results of function produced Dataset (If applicable) external software opened, run, then closed, with results returned to Stat-JR. Results Model: DIC: 9766.506 Parameters: Beta1: 0.594 myModel<- glm(normexam~ Summary(myModel) plot(myModel,1) Select Open Worksheet Select datafile.dta Select Equationsfrom Fi Results tables Charts Scripts Macros Equations Point & click instructions

  9. Behind the scenes… • …the eBook author has associated relevant model-fitting Stat-JR templates with this region of the eBook… • …and has pre-specified all of the inputs, bar the explanatory variables, which are therefore the only ones left to eBook reader to specify. • Author has alsospecified what / where / when the output resulting from a template’s execution will be presented in the eBook…

  10. (If applicable) results outputted as dataset to be fed back in… Stat-JR: to re-cap… Stat-JR prompts user for input Stat-JR writes commands, etc., to perform requested function Function performed Template Results of function produced Dataset (If applicable) external software opened, run, then closed, with results returned to Stat-JR. Results Model: DIC: 9766.506 Parameters: Beta1: 0.594 myModel<- glm(normexam~ Summary(myModel) plot(myModel,1) Select Open Worksheet Select datafile.dta Select Equationsfrom Fi Results tables Charts Scripts Macros Equations Point & click instructions

  11. Content of text returned is conditional on value of results

  12. Stat-JR’s DEEP system:Summary of features • Built on Stat-JR’s powerful & flexible data-analytical engine. • Embeds inputs and outputs of Stat-JR’s executable statistical functions within contextual information. • Tailoring & specificity: e.g. associating carefully-chosen templates; pre-specifying inputs. • Log / recording tool: behind-the-scenes, a comprehensive record is kept of each execution.

More Related