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This paper concerns the assessment of the effects of actions or policies from a combination of: (i) nonexperimental data, and (ii) causal assumptions. The assumptions are encoded in the form of aâ€¦ (More)

- Jin Tian, Judea Pearl
- AAAI/IAAI
- 2002

This paper concerns the assessment of the effects of actions or policy interventions from a combination of: (i) nonexperimental data, and (ii) substantive assumptions. The assumptions are encoded inâ€¦ (More)

- Jin Tian, Judea Pearl
- UAI
- 2002

The validity of a causal model can be tested only if the model imposes constraints on the probability distribution that governs the genÂ erated data. In the presence of unmeasured variables, causalâ€¦ (More)

- Rajiv L Agarwal, Muralidhar Acharya, +5 authors Daniel C Batlle
- Kidney international
- 2005

BACKGROUND
Proteinuria is a marker of cardiovascular and renal disease in patients with chronic kidney disease (CKD), and reduction in proteinuria has been associated with improved cardiovascular andâ€¦ (More)

- Jin Tian, Ru He, Lavanya Ram
- UAI
- 2010

We study the problem of learning Bayesian network structures from data. We develop an algorithm for finding the k-best Bayesian network structures. We propose to compute the posterior probabilitiesâ€¦ (More)

- Jin Tian
- UAI
- 2000

This paper extends the work in [Suzuki, 1996] and presents an efficient depth-first branchÂ and-bound algorithm for learning Bayesian network structures, based on the minimum description length (MDL)â€¦ (More)

We study the problem of learning Bayesian network structures from data. Koivisto and Sood (2004) and Koivisto (2006) presented algorithms that can compute the exact marginal posterior probability ofâ€¦ (More)

- Changsung Kang, Jin Tian
- FLAIRS Conference
- 2006

In this paper, we introduce a new restricted Bayesian network classifier that extends naive Bayes by relaxing the conditional independence assumptions, and show that it is partly generative andâ€¦ (More)

- Edward Allen Ross, Jin Tian, +6 authors Stuart M. Sprague
- American journal of nephrology
- 2008

BACKGROUND/AIMS
Secondary hyperparathyroidism is a common complication of chronic kidney disease, resulting from inactivation of vitamin D receptor signaling and phosphate retention. Selectiveâ€¦ (More)

- Elias Bareinboim, Jin Tian, Judea Pearl
- AAAI
- 2014

Selection bias is caused by preferential exclusion of units from the samples and represents a major obstacle to valid causal and statistical inferences; it cannot be removed by randomized experimentsâ€¦ (More)