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- Academic_analytics abstract "Academic analytics is basically defined as the process of evaluating and analysing organisational data received from university systems for reporting and decision making reasons (Campbell, & Oblinger, 2007). According to Campbell & Oblinger (2007), accrediting agencies, governments, parents and students are all calling for the adoption of new modern and efficient ways of improving and monitoring student success. This has ushered the higher education system into an era characterised by increased scrutiny from the various stakeholders. For instance, the Bradley review acknowledges that benchmarking activities such as student engagement serve as indicators for gauging the institution’s quality (Commonwealth Government of Australia, 2008). Increased competition, accreditation, assessment and regulation are the major factors encouraging the adoption of academic analytics in institutions of higher learning. Although institutions of higher learning gather a lot of vital data that can significantly aid in solving problems like attrition and retention, the collected data is not being analysed adequately and hence translated into useful data (Goldstein, 2005.) Subsequently, higher education leadership are forced to make critical and vital decisions based on inadequate information that could be achieved by properly utilising and analysing the available data (Norris, Leonard, & strategic Initiatives Inc., 2008). This gives rise to strategic problems. This setback also depicts itself at the tactical level. Learning and teaching at institutions of higher education if often a diverse and complex experience. Each and every teacher, student or course is quite different. However, LMS is tasked with taking care of them all. LMS is at the centre of academic analytics. It records each and every student and staff’s information and results in a click within the system. When this crucial information is added, compared and contrasted with different enterprise information systems provides the institution with a vast array of useful information that can be harvested to gain a competitive edge (Dawson & McWilliam, 2008; Goldstein, 2005; Heathcoate & Dawson, 2005).In order to retrieve meaningful information from institution sources i.e. LMS, the information has to be correctly interpreted against a basis of educational efficiency, and this action requires thorough analysis from people with learning and teaching skills. Therefore, a collaborative approach is required from both the people guarding the data and those who will interpret it, otherwise the data will remain to be a total waste (Baepler & Murdoch, 2010). Decision making at its most basic level is based on presumption or intuition (a person can make conclusions and decisions based on experience without having to do data analysis) (Siemens & Long, 2011). However, a lot of decisions made at institutions of higher learning are too vital to be based on anecdote, presumption or intuition since significant decisions need to be backed by data and facts.Analytics which is often termed as business intelligence has therefore come out as new software and hardware that enables businesses to gather and analyse large amounts of information or data. The analytics process is made up of gathering, analysing, data manipulation and employing the results to answer critical questions such as ‘why’. Analytics was first applied in the admissions department in higher education institutions. The institutions normally used some formulas to choose students from a large pool of applicants. These formulas drew their information from high school transcripts and standardized test scores. In today’s world, analytics is commonly used in administrative units such as fund raising and admissions. The use and application of academic analytics is meant to grow due to the ever increasing concerns about student success and accountability. Academic analytics primarily marries complex and vast data with predictive modelling and statistical techniques to better decision making. Current academic analytics initiatives are bent to use data to predict students experiencing difficulty (Arnold, & Pistilli, 2012, April). This allows advisors and faculty members to intervene by tailoring procedures which will meet the student’s learning needs (Arnold, 2010). As such, academic analytics possesses the ability to improve learning, student success and teaching. Analytics has become a valuable tool for institutions because of its ability to predict, model and improve decision making.".
- Academic_analytics wikiPageExternalLink 16930.
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- Academic_analytics wikiPageRevisionID "632271074".
- Academic_analytics wikiPageWikiLink Category:Business_intelligence.
- Academic_analytics wikiPageWikiLink Educause.
- Academic_analytics wikiPageWikiLinkText "Academic analytics".
- Academic_analytics wikiPageWikiLinkText "academic analytics".
- Academic_analytics subject Category:Business_intelligence.
- Academic_analytics type Redirect.
- Academic_analytics comment "Academic analytics is basically defined as the process of evaluating and analysing organisational data received from university systems for reporting and decision making reasons (Campbell, & Oblinger, 2007). According to Campbell & Oblinger (2007), accrediting agencies, governments, parents and students are all calling for the adoption of new modern and efficient ways of improving and monitoring student success.".
- Academic_analytics label "Academic analytics".
- Academic_analytics sameAs Q4671163.
- Academic_analytics sameAs تحليلاتية_أكاديمية.
- Academic_analytics sameAs m.03c0t3d.
- Academic_analytics sameAs Q4671163.
- Academic_analytics wasDerivedFrom Academic_analytics?oldid=632271074.
- Academic_analytics isPrimaryTopicOf Academic_analytics.