The Sisyphus syndrome in health revisited Zweifel, P; Steinmann, L; Eugster, P Zweifel, P; Steinmann, L; Eugster, P. The Sisyphus syndrome in health revisited. The Sisyphus syndrome in health revisited Abstract Health care may be similar to Sisyphus work: When the task is about to be completed, work has to start all over again. To see the analogy, consider an initial decision to allocate more resources to health. The likely consequence is an increased number of survivors, who will exert additional demand for health care. With more resources allocated to health, the cycle starts over again. The objective of this paper is to improve on earlier research that failed to find evidence of a Sisyphus syndrome in industrialized countries. This time, there are signs of such a cycle, which however seems to have faded away recently. The Sisyphus Syndrome in Health Revisited AbstractHealth care may be similar to Sisyphus work: When the task is about to be completed, work has to start all over again. To see the analogy, consider an initial decision to allocate more resources to health. The likely consequence is an increased number of survivors, who will exert additional demand for health care. With more resources allocated to health, the cycle starts over again. The objective of this paper is to improve on earlier research that failed to find evidence of a Sisyphus syndrome in industrialized countries. This time, there are signs of such a cycle, which however seems to have faded away recently.
When premiums are community-rated, risk adjustment (RA) serves to mitigate competitive insurers' incentive to select favorable risks. However, unless fully prospective, it also undermines their incentives for efficiency. By capping its volume, one may try to counteract this tendency, exposing insurers to some financial risk. This in term runs counter the quest to refine the RA formula, which would increase RA volume. Specifically, the adjuster, "Hospitalization or living in a nursing home during the previous year" will be added in Switzerland starting 2012. This paper investigates how to minimize the opportunity cost of capping RA in terms of increased incentives for risk selection.
Conventional wisdom views demographic change as a set of exogenous shocks impinging on social security, with the economy treated as a closed system. This contribution argues that demographics is nothing but the aggregate of individual decisions, which are influenced by social security. This claim is supported by both theoretical argument and empirical evidence with regard to decisions over the life cycle, ranging from educational effort, marriage, number of children, divorce, retirement, and effort to extend one's life.Distinguishing the effects of contributions and benefits of social security, these feedback relationships are shown to in the main hamper employment and growth, thus undermining the financial viability of today's social security schemes, with increasing openness of the economy ('globalization') exacerbating problems. KURZDARSTELLUNG
We analyze the predictive power of technical analysis with a novel data set based on news sentiment that allows to systematically examine a set of technical analysis indicators over an extensive time period. We do not find much statistically significant relationships with the examined indicators and future asset returns, and we almost do not find any alphas in trading strategies based on technical analysis sentiment. We find evidence for a contrarian‐based hypothesis: past market returns and technical analysis sentiment are able to predict future technical analysis sentiment with a negative relationship.
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