Javascript must be enabled to continue!
Predictors of high‐quality answers
View through CrossRef
PurposeThe purpose of this study is to examine the predictors of high‐quality answers in a community‐driven question answering service (Yahoo! Answers).Design/methodology/approachThe identified predictors were organised into two categories: social and content features. Social features refer to the community aspects of the users and are extracted from explicit user interaction and feedback. Content features refer to the intrinsic and extrinsic content quality of answers that could be used to select the high‐quality answers. In total the framework built in this study comprises 17 features from two categories. Based on a randomly selected dataset of 1,600 question‐answer pairs from Yahoo! Answers, high‐quality answer predictors were identified.FindingsThe results of the analysis showed the importance of content appraisal features over social and textual content features. The features identified as strongly associated with high‐quality answers include positive votes, completeness, presentation, reliability and accuracy. Features weakly associated with high‐quality answers were high frequency words, answer length, and best answers answered. Features related to the asker's user history were found not to be associated with high‐quality answers.Practical implicationsThis work could help in the reuse of answers for new questions. The study identified features that most influence the selection of high‐quality answers. Hence they could be used to select high‐quality answers for answering similar questions posed by users in the future. When a new question is posed, similar questions are first identified, and the answers for these questions are extracted and routed to the proposed quality framework for identifying high‐quality answers. Based on the overall quality index computed, the high‐quality answer could be returned to the asker.Originality/valuePrevious studies in identifying high‐quality answers were conducted using either of two approaches. First using social and textual content features found in community‐driven question answering services and second using content appraisal features by thorough assessment of answer quality provided by experts. However no study had integrated both approaches. Hence this study addresses this gap by developing an integrated generalisable framework to identify features that influence high‐quality answers.
Title: Predictors of high‐quality answers
Description:
PurposeThe purpose of this study is to examine the predictors of high‐quality answers in a community‐driven question answering service (Yahoo! Answers).
Design/methodology/approachThe identified predictors were organised into two categories: social and content features.
Social features refer to the community aspects of the users and are extracted from explicit user interaction and feedback.
Content features refer to the intrinsic and extrinsic content quality of answers that could be used to select the high‐quality answers.
In total the framework built in this study comprises 17 features from two categories.
Based on a randomly selected dataset of 1,600 question‐answer pairs from Yahoo! Answers, high‐quality answer predictors were identified.
FindingsThe results of the analysis showed the importance of content appraisal features over social and textual content features.
The features identified as strongly associated with high‐quality answers include positive votes, completeness, presentation, reliability and accuracy.
Features weakly associated with high‐quality answers were high frequency words, answer length, and best answers answered.
Features related to the asker's user history were found not to be associated with high‐quality answers.
Practical implicationsThis work could help in the reuse of answers for new questions.
The study identified features that most influence the selection of high‐quality answers.
Hence they could be used to select high‐quality answers for answering similar questions posed by users in the future.
When a new question is posed, similar questions are first identified, and the answers for these questions are extracted and routed to the proposed quality framework for identifying high‐quality answers.
Based on the overall quality index computed, the high‐quality answer could be returned to the asker.
Originality/valuePrevious studies in identifying high‐quality answers were conducted using either of two approaches.
First using social and textual content features found in community‐driven question answering services and second using content appraisal features by thorough assessment of answer quality provided by experts.
However no study had integrated both approaches.
Hence this study addresses this gap by developing an integrated generalisable framework to identify features that influence high‐quality answers.
Related Results
Assessment of Chat-GPT, Gemini, and Perplexity in Principle of Research Publication: A Comparative Study
Assessment of Chat-GPT, Gemini, and Perplexity in Principle of Research Publication: A Comparative Study
Abstract
Introduction
Many researchers utilize artificial intelligence (AI) to aid their research endeavors. This study seeks to assess and contrast the performance of three sophis...
THE FIRST STEPS TOWARDS THE FIRST-ORDER POLITENESS RESEARCH IN UDMURT
THE FIRST STEPS TOWARDS THE FIRST-ORDER POLITENESS RESEARCH IN UDMURT
The research is the continuation of my dissertation written at the Department of the Finno-Ugrian Philology of the University of Szeged. However, in this research I do not analyse ...
Clean energy stock returns forecasting using a large number of predictors: which play important roles?
Clean energy stock returns forecasting using a large number of predictors: which play important roles?
Purpose
Clean energy stocks have recently received significant attention from both investors and researchers, reflecting their growing importance in financial mar...
Predictors of Neonatal Mortality in Ethiopia: A Comprehensive Review of Follow-Up Studies
Predictors of Neonatal Mortality in Ethiopia: A Comprehensive Review of Follow-Up Studies
Background. Neonatal mortality remains a prominent public health problem in developing countries. Particularly, Ethiopia has a higher neonatal mortality rate than the average sub-S...
Digital mapping of soil properties with optimally scaled predictors
Digital mapping of soil properties with optimally scaled predictors
Although improved and more effective approaches for predicting the spatial distribution of soils have long been developed, further study in this field is still required. This study...
Quality of life and its predictive factors among women with obstetric fistula in Ethiopia: A cross-sectional study
Quality of life and its predictive factors among women with obstetric fistula in Ethiopia: A cross-sectional study
ObjectiveLiving with obstetric fistulas is detrimental to the quality of life of women with fistulas. This study aimed to assess the quality of life and predictive factors among wo...
Predictors of nurse's happiness: a systematic review
Predictors of nurse's happiness: a systematic review
Abstract
Objective
An acute shortage of nurses exists all over the world. Part of this shortage appears to be due to nurses’ low...
Science AMA Series: Stephen Hawking AMA Answers!
Science AMA Series: Stephen Hawking AMA Answers!
On July 27, reddit, WIRED, and Nokia brought us the first-ever AMA with
Stephen Hawking with this note: At the time, we, the mods of /r/science,
noted this: “This AMA will be run d...

