Abstract
This study investigated the influences of knowledge, particularly Internet, Web browser, and search engine knowledge, as well as cognitive abilities on older adult information seeking on the Internet. The emphasis on aspects of cognition was informed by a modeling framework of search engine information-seeking behavior. Participants from two older age groups were recruited: twenty people in a younger-old group (ages 60-70) and twenty people in an older-old group (ages 71-85). Ten younger adults (ages 18-39) served as a comparison group. All participants had at least some Internet search experience. The experimental task consisted of six realistic search problems, all involving information related to health and well-being and which varied in degree of complexity. The results indicated that though necessary, Internet-related knowledge was not sufficient in explaining information-seeking performance, and suggested that a combination of both knowledge and key cognitive abilities is important for successful information seeking. In addition, the cognitive abilities that were found to be critical for task performance depended on the search problem's complexity. Also, significant differences in task performance between the younger and the two older age groups were found on complex, but not on simple problems. Overall, the results from this study have implications for instructing older adults on Internet information seeking and for the design of Web sites.
- Baeza-Yates, R. and Ribeiro-Neto, B. 1999. Modern Information Retrieval. ACM Press/Addison Wesley, New York, NY. Google ScholarDigital Library
- Bass, S. B. 2003. How will Internet use affect the patient? A review of computer network and closed Internet-based system studies and the implications in understanding how the use of the Internet affects patient populations. J. Health Psych. 8, 25--38.Google ScholarCross Ref
- Bhavnani, S. K. 2001. Important cognitive components of domain-specific search knowledge. Proceedings of TREC'01. 571--578.Google Scholar
- Borgman, C. L. 1986. The user's mental model of an information retrieval system: An experiment on a prototype online catalog. Int. J. Man-Mach. Stud. 24, 1, 47--64. Google ScholarDigital Library
- Borgman, C. L. 1996. Why are online catalogs still hard to use. J. Amer. Soc. Inform. Sci. 47, 7, 493--503. Google ScholarDigital Library
- Brown, J. L., Fischo, V. V., and Hanna, G. 1993. The Nelson-Denney Reading Test. Riverside Publishing Co., Chicago, IL.Google Scholar
- Brewer, W. F. 2003. Mental models. In Nadel, L. (ED.) Encyclopedia of Cognitive Science, Nature Publishing Group / Macmillan Publishers Ltd., London, UK.Google Scholar
- Chi, M. T. H. and Glaser, R. 1985. Problem solving ability. In R. J. Sternberg (ED.), Human Abilities: An Information Processing Approach. Freeman, New York, NY.Google Scholar
- Craik, K. J. W. 1943. The Nature of Explanation. Cambridge University Press, Cambridge, UK.Google Scholar
- Czaja, S. J., Charness, N., Fisk, A. D., Hertzog, C., Nair, S. N., Rogers, W. A., and Sharit, J. 2006. Factors predicting the use of technology: Findings from the Center for Research and Education on Aging and Technology Enhancement (CREATE). Psych. Aging 21, 333--352.Google ScholarCross Ref
- Czaja, S. J., Sharit, J., Ownby, R., Roth, D. L., and Nair, S. N. 2001. Examining age differences in performance of a complex information search and retrieval task. Psych. Aging 16, 564--579.Google ScholarCross Ref
- Delis, D. C., Kramer, J. H., Kaplan, E., and Ober, B. A. 1987. California Verbal Learning Test: Adult version. The Psychological Corporation, San Antonio, TX.Google Scholar
- Dimitroff, A. and Wolfram, D. 1995. Searcher response in a hypertext-based bibliographic information retrieval system. J. Amer. Soc. Inform. Sci. 46, 1, 22--29. Google ScholarDigital Library
- Dorsey, D. W., Campbell, G. E., Foster, L. L., and Miles, D. E. 1999. Assessing knowledge structures: Relations with experience and posttraining performance. Human Perform. 12, 1, 31--57.Google ScholarCross Ref
- Ekstrom, R. B., French, J. W., Harman, H. H., and Dermen, D. 1976. Manual for Kit of Factor-Referenced Cognitive Tests. Educational Testing Services, Princeton, NJ.Google Scholar
- Golden, C. J. 1978. Stroop Color and Word Test. A Manual for Clinical and Experimental Uses. Stoelting Company, Wood Dale, IL.Google Scholar
- Google 2005. www.google.com.Google Scholar
- Heppner, P. P. 1988. The Problem Solving Inventory (PSI) Manual. Consulting Psychologists Press, Palo Alto, CA.Google Scholar
- Hyperionics Technology 2006. HyperCam. Murrysville, PA. [email protected].Google Scholar
- Institute for Personality and Ability Testing, Inc. 1982. Manual for the Comprehensive Ability Battery. Champaign, IL.Google Scholar
- Interlink. 1998. PCKNOT Version 4.3 for Pathfinder Network Analysis. Gilbert, AZ. http://interlinkinc.net.Google Scholar
- Jackson, D. N. 1998. MAB-II. Multidimensional Aptitude Battery. Sigma Assessment Systems, Port Huron, MI.Google Scholar
- Johnson, K. and Magusin, E. 2005. Exploring the Digital Library: A Guide for Online Teaching and Learning. Jossey-Bass/Wiley, San Francisco, CA. Google ScholarDigital Library
- Kubeck, J. E., Miller-Albrecht, S. A., and Murphy, M. M. 1999. Finding information on the World Wide Web: Exploring older adults' exploration. Educ. Geront. 25, 167--183.Google ScholarCross Ref
- Kulthau, G. 2003. Seeking Meaning: A Process Approach to Library and Information Services 2nd Ed. Libraries Unlimited, Westport, CT.Google Scholar
- Laberge, J. and Scialfa, C. T. 2005. Predictors of Web navigation performance in a life span sample of adults. Human Factors 47, 2, 289--302.Google ScholarCross Ref
- Liebscher, P. and Marchionini, G. 1988. Browse and analytical search strategies in a full-text CD-ROM encyclopedia. School Library Media Quart. Summer, 223--233.Google Scholar
- Marchionini, G. 1997. Information Seeking in Electronic Environments. Cambridge University Press, Cambridge, UK. Google ScholarDigital Library
- Marchionini, G. 2004. Human-computer information retrieval. http://www.ils.unc.edu/~march/ HCIR_MIT.pdf.Google Scholar
- Mayer, R. E. and Whittrock, M. 1996. Problem-solving transfer. In D.C. Berliner and R.C. Calfee (EDS.), Handbook of Educational Psychology, Simon & Schuster, New York, NY.Google Scholar
- Maldonado, C. A. and Resnick, M. L. 2002. Do common user interface design patters improve navigation? In Proceedings of the Human Factors and Ergonomics Society 46th Annual Meeting. 1315--1319.Google Scholar
- Nahl, D. 1997. The user-centered revolution: 1970-1995. In Kent, A. and Williams, J. (EDS.) Encycolpedia of Microcomputers, Vol. 19, Marcel Dekker, New York, NY.Google Scholar
- Nahl, D. 2003. The user-centered revolution. In Drake, M. (ED.). Encyclopedia of Library and Information Science 2nd Ed. Marcel Dekker Inc., New York, NY.Google Scholar
- Nyberg, L. 2005. Cognitive training in healthy aging: A cognitive neuroscience perspective. In R. Cabeza, L. Nyberg and D. Park (EDS.) Cognitive Neuroscience of Aging: Linking Cognitive and Cerebral Aging, Oxford University Press, Oxford, UK.Google Scholar
- Palmquist, R. A. and Kim, K.-S. 2000. Cognitive style and online database earch experience as predictors of Web search performance. J. Amer. Soc. Inform. Sci. 51, 6, 558--566. Google ScholarDigital Library
- Pew Internet and American Life Project 2004. Older Americans and the Internet. Washington, D.C. http://www.pewinternet.org.Google Scholar
- Powell, J. A., Darvell, M., and Gray, J. A. M. 2003. The doctor, the patient and the World-Wide Web: How the Internet is changing healthcare. J. Royal Soc. Medicine 96, 74--76.Google ScholarCross Ref
- Reeder, R., Pirolli, P., and Card, S. K. 2000. Weblogger: A data collection tool for Web-use studies. UIR Tech. Rep. UIR-R-2000-06, Xeorx PARC.Google Scholar
- Salthouse, T. A. and Babcock, R. L. 1991. Decomposing adult age differences in working memory. Develop. Psych. 47, 433--440.Google Scholar
- Sharit, J., Czaja, S. J., Hernández, M. A., Yang, Y., Perdomo, D., Lewis, J. E., Lee, C. C., and Nair, S. 2004. An evaluation of performance by older persons on a simulated telecommuting task. J. Geront.: Psycho. Sci. 59B, 6, 305--316.Google ScholarCross Ref
- Slone, D. J. 2002. The influence of mental models and goals on search patterns during Web interaction. J. Amer. Soc. Inform. Sci. Tech. 53, 13, 1152--1169. Google ScholarDigital Library
- Sternberg, R. J. and Grigorenko, E. L. 1997. Are cognitive styles still in style? Amer. Psych. 52, 7, 700--712.Google ScholarCross Ref
- Sutcliffe, A. and Ennis, M. 1998. Towards a cognitive theory of IR. Interact. Comput. 10, 321--351.Google ScholarCross Ref
- U.S. Department of Health and Human Services 2001. A Profile of Older Americans: 2001. Administration on Aging, Washington, D.C.Google Scholar
- Wang, P., Hawk, W. B., and Tenopir, C. 2000. Users' interaction with World Wide Web Resources: An exploratory study using a holistic approach. Inform. Process. Manag. 36, 229--251. Google ScholarDigital Library
- Wechsler, D. 1981. Manual for Wechsler Memory Scaled Revised. The Psychological Corp., New York, NY.Google Scholar
- Weller, H. G., Repman, J., and Rooze, G. E. 1994. The relationship of learning, behavior, and cognitive styles in hypermedia-based instruction: Implications for design of HBI. Comput. Schools 10, 401--420. Google ScholarDigital Library
- Wilkie, F. K., Eisdorfer, C., Morgan, R., Lowenstein, D. A., and Szapocznik, J. 1990. Cognition in early HIV infection. Archives Neurol. 47, 433--440.Google ScholarCross Ref
- Wyman, B. G. and Randel, J. M. 1998. The relation of knowledge organization to performance of a complex cognitive task. J. Appl. Cognit. Psych. 12, 251--264.Google ScholarCross Ref
- Zhang, X. and Chignell, M. 2001. Assessment of the effects of user characteristics on mental models of information retrieval systems. J. Amer. Soc. Inform. Sci. Tech. 52, 6, 445--459. Google ScholarDigital Library
Index Terms
- Investigating the Roles of Knowledge and Cognitive Abilities in Older Adult Information Seeking on the Web
Recommendations
An Empirical Study of Older Adult’s Voice Assistant Use for Health Information Seeking
Although voice assistants are increasingly being adopted by older adults, we lack empirical research on how they interact with these devices for health information seeking. Also, prior work shows how voice assistant responses can provide misleading or ...
Older adults' online health information seeking behavior
iConference '12: Proceedings of the 2012 iConferenceOver half of older adult Internet users search for health information online, a number likely to continue to climb. To design a better online environment for older adults, we need to understand how they search for health information online. In an ...
“It’s Kind of Like Code-Switching”: Black Older Adults’ Experiences with a Voice Assistant for Health Information Seeking
CHI '22: Proceedings of the 2022 CHI Conference on Human Factors in Computing SystemsBlack older adults from lower socioeconomic environments are often neglected in health technology interventions. Voice assistants have a potential to make healthcare more accessible to older adults, yet, little is known about their experiences with this ...
Comments