session2ref

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Page 3.
(Arntzenius, 1993)
(Arntzenius, 1997)
(Spirtes, Glymour, & Scheines, 2000)
(Zhang & Spirtes, 2011)
Page 5.
(Lauritzen, Dawid, Larsen, & Leimer, 1990)
(Pearl, 1988)
Page 6.
(Spirtes et al., 2000)
(Zhang & Spirtes, 2003)
(Zhang & Spirtes, 2007)
(Zhang & Spirtes, 2008)
Page 7.
(Verma & Pearl, 1990)
(Spirtes et al., 2000)
(Andersson, Madigan, & Perlman, 1997)
(Chickering, 2002)
(Spirtes, Meek, & Richardson, 1995)
(Silva, Scheines, Glymour, & Spirtes, 2006)
Page 9.
(Pearl, 1988)
(Lauritzen et al., 1990)
Page 14.
(Verma & Pearl, 1990)
(Spirtes et al., 1995)
Page 19.
(Spirtes et al., 2000)
Page 20.
(Chickering, 2002)
Page 21.
(Chickering, 2002)
(Harwood & Scheines, 2002)
(Ye, Cai, & Sun, 2008)
Page 24.
(Spirtes et al., 1995)
(Spirtes et al., 2001)
Page 37.
(Ramsey, Spirtes, & Zhang, 2006)
(Shimizu, Hoyer, Hyvärinen, & Kerminen, 2006)
(Hoyer, Janzing, Mooij, Peters, & Scholkopf, 2009)
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(Hyvärinen, Karhunen, & Oja, 2001)
Page 41.
(Shimizu et al., 2006)
Page 45.
(Ramsey et al., 2006)
Page 47.
(Tillman & Spirtes, 2009)
(Hoyer et al., 2008)
(Lacerda, Spirtes, Ramsey, & Hoyer, 2008)
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