“…In the body of work on private learning algorithms, a significant amount of effort has gone into developing algorithms for the private PAC model [KLN `08], namely the setting of differentially private binary classification (see Section 2.1 for a formal definition). Some papers on this fundamental topic include [KLN `08, BBKN14, BNSV15, FX14, BNS14, BDRS18, BNS19, ALMM19, KLM `20, BLM20b,NRW19,Bun20]. A remarkable recent development [ALMM19,BLM20b] in this area is the result that a hypothesis class F of binary classifiers is learnable with approximate differential privacy (Definition 2.2) if and only if it is online learnable, i.e., has finite Littlestone dimension (Definition 2.5).…”