2019
DOI: 10.3390/s19071613
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A Context-Aware Accurate Wellness Determination (CAAWD) Model for Elderly People Using Lazy Associative Classification

Abstract: Wireless Sensor Network (WSN) based smart homes are proving to be an ideal candidate to provide better healthcare facilities to elderly people in their living areas. Several currently proposed techniques have implementation and usage complexities (such as wearable devices and the charging of these devices) which make these proposed techniques less acceptable for elderly people, while the behavioral analysis based on visual techniques lacks privacy. In this paper, a context-aware accurate wellness determination… Show more

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Cited by 9 publications
(5 citation statements)
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References 30 publications
(74 reference statements)
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“…H1 (Alternate Hypothesis, µR-µC ≠0 or µR≠µC (2) Where µR denotes the average implementation time of system checks (healthcare edits) through rule-based programming and µC denotes the average implementation time of system checks (healthcare edits) through conventional programming. Implementation time depicts total time spent on each check from analysis to coding and making it operational.…”
Section: Hypothesismentioning
confidence: 99%
See 1 more Smart Citation
“…H1 (Alternate Hypothesis, µR-µC ≠0 or µR≠µC (2) Where µR denotes the average implementation time of system checks (healthcare edits) through rule-based programming and µC denotes the average implementation time of system checks (healthcare edits) through conventional programming. Implementation time depicts total time spent on each check from analysis to coding and making it operational.…”
Section: Hypothesismentioning
confidence: 99%
“…Healthcare overtime has become an important domain in the field of information technology due to the conjunction of technology and its use in different applications. Use of software technology seem becoming a need for management and processing of healthcare data [1,2] and clinical documents [3]. Quality of healthcare is directly proportional to the quality of data stored in healthcare related software like EHRs, Billing Management Systems, Patient Health Records, Integrated Healthcare Systems [4][5][6].…”
Section: Introductionmentioning
confidence: 99%
“…Rule generation at minimum-support values to ensure that, even with fewer occurrences, training data is not ignored for useful rules; the extracted rules are stored in a database for efficient retrieval when needed. Rule pruning is not done in proposed system [25]. In the test instance arrives at the classifiers for the classification, projections of classification rules are made on the basis of the attributes on test instances from the already derived association rules.…”
Section: Context Association Rulesmentioning
confidence: 99%
“…The proposed system, composed of several smart objects to be incorporated into everyday life, is tested on both final users, i.e., self-sufficient and non-self-sufficient seniors, and caregivers, and the assessment is reasonably satisfactory. A smart solution, based on wirelessly interconnected sensors, for proper wellness ascertainment of older adults, living alone in smart homes, is proposed in [14]. This system strives to afford healthcare monitoring of older people, along with the main aim of higher wellness measurement classification accuracy and precision for better healthcare.…”
Section: A Review Of the Contributions In This Special Issuementioning
confidence: 99%