Survey Panel Data of 6000 households, with 400 Primary Sample Units(PSU) wave 1, wave 2 and wave 3. Some PSU receive seasonal labor while other does not. Receiving seasonal labour is not systematic in the sense that
Some PSU receives seasonal labor only in wave 1, around 21 PSU, some receive only in wave 2, around 16 PSU, and 88 PSU receive seasonal labor only in wave 3. Rest of the receiving PSU receive in mix of the waves .i.e 16 PSU receive in wave 1 and 3, 10 PSU receive in wave 1 and 2, 56 PSU receive in wave 2 and 3 while 27 PSU receive in all waves. My outcome variable is at the household level say expenditure on hired labour, and the interest variable is receiving seasonal labour which is at PSU level. Unbalanced Panel. Can I establish a causal relationship between the two? What would be the best strategy if it is possible? The data comes from Survey Data not RCT, meaning seasonal labor receiving is characteristic of the community we observed not a policy intervention.
Some PSU receives seasonal labor only in wave 1, around 21 PSU, some receive only in wave 2, around 16 PSU, and 88 PSU receive seasonal labor only in wave 3. Rest of the receiving PSU receive in mix of the waves .i.e 16 PSU receive in wave 1 and 3, 10 PSU receive in wave 1 and 2, 56 PSU receive in wave 2 and 3 while 27 PSU receive in all waves. My outcome variable is at the household level say expenditure on hired labour, and the interest variable is receiving seasonal labour which is at PSU level. Unbalanced Panel. Can I establish a causal relationship between the two? What would be the best strategy if it is possible? The data comes from Survey Data not RCT, meaning seasonal labor receiving is characteristic of the community we observed not a policy intervention.

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