You have provided little information about what data you are indexing, how uniform the data is, or how you are querying it.
A likely problem is that the terms
mate are not very common in your dataset, and are unevenly distributed across your shards.
By default, the term frequencies are considered separately by each shard, so if on one shard you have
mate 3 times, and on another shard you have
c once, then the second shard might consider
mate to be more relevant than the first shard.
Typically, with large amounts of data, term frequencies even themselves out, so this ceases to be a problem. However, with small amounts of data, you can see issues like this.
- Use a single shard instead of the default 5 (if you are always going to have a small amount of data, then this is the better option)
- Index more data
search_type=dfs_query_then_fetch to your search parameters, which will check the term frequencies across all shards before running the query
search_type defaults to
query_then_fetch rather than to
dfs_query_then_fetch because normally, you would have enough data to ensure even term frequencies, and it performs better.
You can add
explain=1 to your search parameters to see how the score for each document has been calculated, which should shed more light on the problem.