RT Journal Article SR Electronic T1 Algorithmic Decision-Making Framework JF The Journal of Trading FD Institutional Investor Journals SP 12 OP 21 DO 10.3905/jot.2006.609171 VO 1 IS 1 A1 Robert Kissell A1 Roberto Malamut YR 2005 UL https://pm-research.com/content/1/1/12.abstract AB The emergence of algorithmic trading as a viable and often preferred execution mechanism has created a need for new suites of trading analytics to assist investors compare, evaluate, and select appropriate algorithms. Unfortunately, many of the existing algorithms do not provide necessary transparency to make informed trading decisions. In this paper we provide a dynamic algorithmic decision making framework to assist investors determine the most appropriate algorithm given overall trading goals and investment objectives. The approach is based on a three step process where investors choose their price benchmark, select trading style (risk aversion), and specify adaptation tactic. The framework makes extensive use of the Almgren & Chriss (1999, 2000) efficient trading frontier.TOPICS: Statistical methods, risk management, portfolio construction