Info-Metrics Bibliography

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[8] N. Agmon, Y. Alhassid, and R. D. Levine. An algorithm for finding the distribution of maximal entropy. Journal of Computational Physics, 30(250-259), 1979. [ bib | http ]
[9] Y. Agnon, A. Golan, and M. Shearer. Nonparametric, nonlinear, short-term forecasting: Theory and evidence for nonlinearities in the commodity markets. Econ. Letters, 65:293-299, 1999. [ bib | http ]
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[11] Y Alhassid, N Agmon, and RD Levine. An upper bound for the entropy and its applications to the maximal entropy problem. Chemical Physics Letters, 53(1):22-26, 1978. [ bib | http ]
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[13] Y. Alhassid and R.D. Levine. Collision experiments with partial resolution of final states: Maximum entropy procedure and surprisal analysis. Physical Review C, 20(5), 1979. [ bib ]
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